This document presents a novel method for modeling and forecasting the temporal spread of COVID-19 in Greece based on complex network analysis. The method develops a spline regression model where the knot vector is determined by community detection in the network representing the time series. The model provides a reliable framework for forecasting that can help inform decision making and management of health resources for fighting COVID-19 in Greece. The analysis finds that Greece's infection curve experienced 5 stages of declining dynamics and showed signs of saturation after 33 days, suggesting Greece's response has been effective at keeping cases and deaths relatively low.
Assessment of the Spatial and Temporal Trend of the COVID-19 Pandemic in SenegalAI Publications
Following the declaration of COVID-19 as a global pandemic and the reporting of one case in Senegal, the number of regions with confirmed cases of infection increased considerably, with the disease now being reported throughout the country after 3 months of evolution. It is therefore necessary to assess the evolution of the disease in the country as the situation evolves in order to rapidly identify best practices for adoption. The objective of this paper is to make a preliminary spatial and temporal assessment and comparison of the results of the COVID-19 pandemic in the regions of Senegal. Data on the evolution of COVID-19 (confirmed cases of infection, deaths, recoveries), population, density and area of each region were analysed using a set of statistical tools. The results show that the COVID-19 pandemic has spread stubbornly in Senegal. In the space of 112 days (from March 2 to June 21), Senegal reached a number of 5888 infected cases for 3919 cured, 1885 active and 84 deaths for a total of 67855 tests performed. About 40 people out of 10,000 have been tested so far and 4 out of 10,000 have tested positive. The Mann-Kendall test indicates that the number of confirmed daily cases is slowly increasing, with the slope of Sen estimated at about 1.2 person/day across the country. In addition, the Pettitt test indicates a sharp change in the upward trend across the country on April 26, 2020. Among the main affected regions, Dakar, Thies and Touba are noted with an extremely high rate of increase. Principal component analysis and hierarchical ascending classification have made it possible to divide Senegal's 14 regions into 3 groups in terms of the number of confirmed cases, active cases, recovered cases and reported deaths, and the population, area and density of the region. The 1st group concerns the Dakar region, the 2nd Diourbel and Thies and the 3rd the other regions. Furthermore, statistics related to COVID-19 in the regions of Senegal are highly correlated with population size and density. This study revealed convincing spatial differences in the evolution of the pandemic between the regions of Senegal. The study recommends that the approaches adopted by regions that have achieved very low levels of COVID-19 be incorporated into health care management plans for the pandemic throughout the country, even as the situation evolves.
The epidemiology of tuberculosis in Kenya, a high TB/HIV burden country (2000...Premier Publishers
Interest in the epidemiology of TB was triggered by the re-emergence of tuberculosis in the early 1990’s with the advent of HIV and falling economic status of many people which subjected them to poverty. The dual lethal combination of HIV and poverty triggered an unprecedented TB epidemic. In this study, we focused on the period 2000-2013 and all the notified data in Kenya was included. Data on estimates of TB incidence, prevalence and mortality was extracted from the WHO global Tuberculosis database. Data was analysed to produce trends for each of the years and descriptive statistics were calculated. The results showed that there was an average decline of 5% over the last 8 years with the highest decline being reported in the year 2012/13. TB continues to disproportionately affect the male gender with 58% being male and 42% being female. Kenya has made significant efforts to address the burden of HIV among TB patients with cotrimoxazole preventive therapy (CPT) uptake reaching 98% AND ART at 74% by the end of 2013. Kenya’s TB epidemic has evolved over time and it has been characterised by a period where there was increase in the TB cases reaching a peak in the year 2007 after which there was a decline which began to accelerate in the year 2011. The gains in the decline of TB could be attributed in part to the outcomes of integrating TB and HIV services and these gains should be sustained. What is equally notable is the clear epidemiologic shift in age indicating reduced transmission in the younger age groups.
Assessment of the Spatial and Temporal Trend of the COVID-19 Pandemic in SenegalAI Publications
Following the declaration of COVID-19 as a global pandemic and the reporting of one case in Senegal, the number of regions with confirmed cases of infection increased considerably, with the disease now being reported throughout the country after 3 months of evolution. It is therefore necessary to assess the evolution of the disease in the country as the situation evolves in order to rapidly identify best practices for adoption. The objective of this paper is to make a preliminary spatial and temporal assessment and comparison of the results of the COVID-19 pandemic in the regions of Senegal. Data on the evolution of COVID-19 (confirmed cases of infection, deaths, recoveries), population, density and area of each region were analysed using a set of statistical tools. The results show that the COVID-19 pandemic has spread stubbornly in Senegal. In the space of 112 days (from March 2 to June 21), Senegal reached a number of 5888 infected cases for 3919 cured, 1885 active and 84 deaths for a total of 67855 tests performed. About 40 people out of 10,000 have been tested so far and 4 out of 10,000 have tested positive. The Mann-Kendall test indicates that the number of confirmed daily cases is slowly increasing, with the slope of Sen estimated at about 1.2 person/day across the country. In addition, the Pettitt test indicates a sharp change in the upward trend across the country on April 26, 2020. Among the main affected regions, Dakar, Thies and Touba are noted with an extremely high rate of increase. Principal component analysis and hierarchical ascending classification have made it possible to divide Senegal's 14 regions into 3 groups in terms of the number of confirmed cases, active cases, recovered cases and reported deaths, and the population, area and density of the region. The 1st group concerns the Dakar region, the 2nd Diourbel and Thies and the 3rd the other regions. Furthermore, statistics related to COVID-19 in the regions of Senegal are highly correlated with population size and density. This study revealed convincing spatial differences in the evolution of the pandemic between the regions of Senegal. The study recommends that the approaches adopted by regions that have achieved very low levels of COVID-19 be incorporated into health care management plans for the pandemic throughout the country, even as the situation evolves.
The epidemiology of tuberculosis in Kenya, a high TB/HIV burden country (2000...Premier Publishers
Interest in the epidemiology of TB was triggered by the re-emergence of tuberculosis in the early 1990’s with the advent of HIV and falling economic status of many people which subjected them to poverty. The dual lethal combination of HIV and poverty triggered an unprecedented TB epidemic. In this study, we focused on the period 2000-2013 and all the notified data in Kenya was included. Data on estimates of TB incidence, prevalence and mortality was extracted from the WHO global Tuberculosis database. Data was analysed to produce trends for each of the years and descriptive statistics were calculated. The results showed that there was an average decline of 5% over the last 8 years with the highest decline being reported in the year 2012/13. TB continues to disproportionately affect the male gender with 58% being male and 42% being female. Kenya has made significant efforts to address the burden of HIV among TB patients with cotrimoxazole preventive therapy (CPT) uptake reaching 98% AND ART at 74% by the end of 2013. Kenya’s TB epidemic has evolved over time and it has been characterised by a period where there was increase in the TB cases reaching a peak in the year 2007 after which there was a decline which began to accelerate in the year 2011. The gains in the decline of TB could be attributed in part to the outcomes of integrating TB and HIV services and these gains should be sustained. What is equally notable is the clear epidemiologic shift in age indicating reduced transmission in the younger age groups.
Artificial Intelligence Based Study on Analyzing of Habits and with History o...Dr. Amarjeet Singh
A patient will visit physicians when he/she feels ill. This illness is not for COVID-19 but it is a general tendency of human being to visit doctor probably it cannot be controlled by general drug. When a patient comes to a doctor, the doctor examines him/her after knowing his/her problem. The physician always asks him/her about some questions related to him/her daily life. For example, if a young male patient comes to a doctor with a symptom of fever and cough, the first question doctor asked him that he has a habit of smoking. Then doctor asks him whether this type of symptom appeared often to him previously or not. If the answers of both questions are yes, then the first one is habit and the second one is that he may suffering from some serious disease or a disease due to the weather. The aim of this paper is to consider habit of the patient as well as he/she has been affected by a critical disease. This information is used to build a model that will predict whether there is any possibility of his/her being affected by COVID-19.
This research work contributes to tackle the pandemic situation occurred due to Corona Virus Infectious Disease, 2019 (Covid-19). Outbreak of this disease happens based on numerous factors such as past health records and habits of patients. Health records include diabetes tendency, cardiovascular disease existence, pregnancy, asthma, hypertension, pneumonia; chronic renal disease may contribute to this disease occurrence. Past lifestyles such as tobacco, alcohol consumption may be analyzed.
A deep learning based framework is investigated to verify the relationship between past health records, habits of patients and covid-19 occurrence. A stacked Gated Recurrent Unit (GRU) based model is proposed in this paper that identifies whether a patient can be infected by this disease or not. The proposed predictive system is compared against existing benchmark Machine Learning classifiers such as Support Vector Machine (SVM) and Decision Tree (DT).
Comorbidity burden of Tuberculosis: Implications for Sri LankaMahendraArnold
Rising trends of comorbidity associated with tuberculosis (TB) have been observed in recent literature. This review explores these global trends and the implications of these for Sri Lanka
The outbreak of COVID-19 coronavirus and its impact on global mental health
Julio Torales, Marcelo O’Higgins, João Mauricio Castaldelli-Maia, Antonio Ventriglio
International Journal of Social Psychiatry, 0020764020915212, 2020
Dengue Fever, a major global Vector-Borne public health concern, is considered a major threat for mortality and morbidity of human-population. As no public-health vaccine is not still available, for prevention of the disease different Vector Control methods are still the prime means. The key to success lies on analysis of geo-climatic, socio-cultural, politico-legal and economic condition of the area, seasonal variation, as well as the spatial spread of the disease. Among different cities of India, Kolkata, an important Metropolis, has been subjected to this study, where the spatial spread of dengue has been found to have some important characteristics. The authors of the present work, who have been working on Vector Borne Diseases and have effectively forecasted models of Urban Malaria for Kolkata, have attempted a baseline study on Spatial Clustering of Dengue Fever in the same City, based on a large survey data, conducted by the Kolkata Municipal Corporation. In this pursuit, Moran scatter-plot, Hot-Spot Map and Heat Map using LISA Tools were derived for consecutive two years, so that the possible spatial effects on Dengue incidences can be derived after Spatial Analytic techniques. Disease Control methods can only be derived following the detailed Statistical Analysis of the Spatial Clustering data.
Dermatological health in the COVID-19 erakomalicarol
COVID-19 and its impact on dermatological health was reviewed
from theoretical and statistical frameworks in the present study. A
cross-sectional and retrospective work was documented with a selection of sources indexed to Scopus, considering the period from
2019 to 2022, as well as the search by keywords. Approaches were
discussed in order to outline a comprehensive model that considered the differences between the parties involved, as well as their
relationships in a risk context. The proposal contributes to the state
of the question in terms of the prediction of contingencies derived
from the probability and affectation of dermatological health
Artificial Intelligence Based Study on Analyzing of Habits and with History o...Dr. Amarjeet Singh
A patient will visit physicians when he/she feels ill. This illness is not for COVID-19 but it is a general tendency of human being to visit doctor probably it cannot be controlled by general drug. When a patient comes to a doctor, the doctor examines him/her after knowing his/her problem. The physician always asks him/her about some questions related to him/her daily life. For example, if a young male patient comes to a doctor with a symptom of fever and cough, the first question doctor asked him that he has a habit of smoking. Then doctor asks him whether this type of symptom appeared often to him previously or not. If the answers of both questions are yes, then the first one is habit and the second one is that he may suffering from some serious disease or a disease due to the weather. The aim of this paper is to consider habit of the patient as well as he/she has been affected by a critical disease. This information is used to build a model that will predict whether there is any possibility of his/her being affected by COVID-19.
This research work contributes to tackle the pandemic situation occurred due to Corona Virus Infectious Disease, 2019 (Covid-19). Outbreak of this disease happens based on numerous factors such as past health records and habits of patients. Health records include diabetes tendency, cardiovascular disease existence, pregnancy, asthma, hypertension, pneumonia; chronic renal disease may contribute to this disease occurrence. Past lifestyles such as tobacco, alcohol consumption may be analyzed.
A deep learning based framework is investigated to verify the relationship between past health records, habits of patients and covid-19 occurrence. A stacked Gated Recurrent Unit (GRU) based model is proposed in this paper that identifies whether a patient can be infected by this disease or not. The proposed predictive system is compared against existing benchmark Machine Learning classifiers such as Support Vector Machine (SVM) and Decision Tree (DT).
Comorbidity burden of Tuberculosis: Implications for Sri LankaMahendraArnold
Rising trends of comorbidity associated with tuberculosis (TB) have been observed in recent literature. This review explores these global trends and the implications of these for Sri Lanka
The outbreak of COVID-19 coronavirus and its impact on global mental health
Julio Torales, Marcelo O’Higgins, João Mauricio Castaldelli-Maia, Antonio Ventriglio
International Journal of Social Psychiatry, 0020764020915212, 2020
Dengue Fever, a major global Vector-Borne public health concern, is considered a major threat for mortality and morbidity of human-population. As no public-health vaccine is not still available, for prevention of the disease different Vector Control methods are still the prime means. The key to success lies on analysis of geo-climatic, socio-cultural, politico-legal and economic condition of the area, seasonal variation, as well as the spatial spread of the disease. Among different cities of India, Kolkata, an important Metropolis, has been subjected to this study, where the spatial spread of dengue has been found to have some important characteristics. The authors of the present work, who have been working on Vector Borne Diseases and have effectively forecasted models of Urban Malaria for Kolkata, have attempted a baseline study on Spatial Clustering of Dengue Fever in the same City, based on a large survey data, conducted by the Kolkata Municipal Corporation. In this pursuit, Moran scatter-plot, Hot-Spot Map and Heat Map using LISA Tools were derived for consecutive two years, so that the possible spatial effects on Dengue incidences can be derived after Spatial Analytic techniques. Disease Control methods can only be derived following the detailed Statistical Analysis of the Spatial Clustering data.
Dermatological health in the COVID-19 erakomalicarol
COVID-19 and its impact on dermatological health was reviewed
from theoretical and statistical frameworks in the present study. A
cross-sectional and retrospective work was documented with a selection of sources indexed to Scopus, considering the period from
2019 to 2022, as well as the search by keywords. Approaches were
discussed in order to outline a comprehensive model that considered the differences between the parties involved, as well as their
relationships in a risk context. The proposal contributes to the state
of the question in terms of the prediction of contingencies derived
from the probability and affectation of dermatological health
The study aimed to investigate into the impact of a National COVID-19 Health contact tracing and monitoring system for Namibia. The study used qualitative methods as a research strategy. Qualitative data was collected
through zoom meeting and a Google form link was distributed to the participants. The findings of the study revealed
that a total of 18 participants responded to the semi-structured questions of which 38.9% represents male while
female 61.1%. The age group between 18–25 response rate were 22.2%, age group between 26–35 response rate were
55.6%, age group between 36–45 response rate were 16.7% and the age group between 46 and above response rate
was 10% represented in green colour to represent participants who fall in the age group between 46 and above
Modified SEIR and machine learning prediction of the trend of the epidemic o...IJECEIAES
Susceptible exposed infectious recovered (SEIR) is a fitting model for coronavirus disease (COVID-19) spread prediction. Hence, to examine the effect of different levels of social distancing on the spreading of the disease, a variable was introduced in the SEIR equations system used in this work. We also used an artificial intelligence approach using a machine learning (ML) method known as deep neural network. This modified SEIR model was applied on the available initial spread data until June 25th, 2021 for the Hashemite Kingdom of Jordan. Without lockdown in Jordan, the analysis demonstrates potential infection to roughly 3.1 million people during the peak of spread approximately 3 months, starting from the date of lockdown (March 21st). Conversely, the present partial lockdowns strategy by the Kingdom was expected to reduce the predicted number of infections to 0.5 million in 9 months period. The analysis also demonstrates the ability of stricter lockdowns to effectively flatten the graph curve of COVID-19 in Jordan. Our modified SEIR and deep neural network (DNN) model were efficient in the prediction of COVID-19 epidemic sizes and peaks. The measures taken to control the epidemic by the government decreased the size of the COVID-19 epidemic.
The susceptible-infected-recovered-dead model for long-term identification o...IJECEIAES
The coronavirus (COVID-19) epidemic has spread massively to almost all countries including Indonesia, in just a few months. An important step to overcoming the spread of the COVID-19 is understanding its epidemiology through mathematical modeling intervention. Knowledge of epidemic dynamics patterns is an important part of making timely decisions and preparing hospitals for the outbreak peak. In this study, we developed the susceptible-infected-recovered-dead (SIRD) model, which incorporates the key epidemiological parameters to model and estimate the long-term spread of the COVID-19. The proposed model formulation is data-based analysis using public COVID-19 data from March 2, 2020 to May 15, 2021. Based on numerical analysis, the spread of the pandemic will begin to fade out after November 5, 2021. As a consequence of this virus attack, the cumulative number of infected, recovered, and dead people were estimated at ≈ 3,200,000, ≈ 3,437,000 and ≈ 63,000 people, respectively. Besides, the key epidemiological parameter indicates that the average reproduction number value of COVID-19 in Indonesia is 7.32. The long-term prediction of COVID-19 in Indonesia and its epidemiology can be well described using the SIRD model. The model can be applied in specific regions or cities in understanding the epidemic pattern of COVID-19.
Managment Of Long Term Care In Era Covid-19komalicarol
COVID-19 gives the chance to address long-term care categories
that are sometimes disregarded and undervalued, such as nursing
and residential homes, as well as homecare. Each method of delivering long-term care must meet the highest possible standards
of ongoing care and quality of life. More study and evaluation are
needed to aid decision-making and policy-making, particularly on
the cost-effectiveness and cost-quality elements for each country,
region, or system.
Using Geographic Information Systems (GIS) to Model the Clustering Effect of ...IJEACS
The purpose of the study was to model the clustering of COVID-19 in Bulawayo, Zimbabwe. A cross-sectional study design was used to provide a snapshot of the occurrence of COVID-19 in Bulawayo at a particular time. About 246 COVID-19 cases were randomly selected from the list of cases that occurred in Bulawayo as of 1 August 2020. The data was analyzed in ArcGIS using spatial autocorrelation and hotspot analysis. From the observed pattern, the results demonstrated a significant overall spatial autocorrelation and clustering of COVID-19 cases in Bulawayo. The hotspot analysis showed hotspot localities around the Western Suburbs such as Nkulumane, Cowdry Park, and Luveve. These are high-density suburbs, endorsing that pattern of COVID-19 infections is related to the population density pattern in Bulawayo. In conclusion, hotspot areas detected in this study can help identify future infectious disease surveillance.
This paper presents a time series analysis of a novel coronavirus, COVID-19, discovered in China in December 2019 using intuitionistic fuzzy logic system with neural network learning capability. Fuzzy logic systems are known to be universal approximation tools that can estimate a nonlinear function as closely as possible to the actual values. The main idea in this study is to use intuitionistic fuzzy logic system that enables hesitation and has membership and non-membership functions that are optimized to predict COVID-19 outbreak cases. Intuitionistic fuzzy logic systems are known to provide good results with improved prediction accuracy and are excellent tools for uncertainty modelling. The hesitation-enabled fuzzy logic system is evaluated using COVID-19 pandemic cases for Nigeria, being part of the COVID-19 data for African countries obtained from Kaggle data repository. The hesitation-enabled fuzzy logic model is compared with the classical fuzzy logic system and artificial neural network and shown to offer improved performance in terms of root mean squared error, mean absolute error and mean absolute percentage error. Intuitionistic fuzzy logic system however incurs a setback in terms of the high computing time compared to the classical fuzzy logic system.
Predicting the status of COVID-19 active cases using a neural network time s...IJECEIAES
The design of intelligent systems for analyzing information and predicting the epidemiological trends of the disease is rapidly expanding because of the coronavirus disease (COVID-19) pandemic. The COVID-19 datasets provided by Johns Hopkins University were included in the analysis. This dataset contains some missing data that is imputed using the multi-objective particle swarm optimization method. A time series model based on nonlinear autoregressive exogenou (NARX) neural network is proposed to predict the recovered and death COVID-19 cases. This model is trained and evaluated for two modes: predicting the situation of the affected areas for the next day and the next month. After training the model based on the data from January 22 to February 27, 2020, the performance of the proposed model was evaluated in predicting the situation of the areas in the coming two weeks. The error rate was less than 5%. The prediction of the proposed model for April 9, 2020, was compared with the actual data for that day. The absolute percentage error (AE) worldwide was 12%. The lowest mean absolute error (MAE) of the model was for South America and Australia with 3 and 3.3, respectively. In this paper, we have shown that geographical areas with mortality and recovery of COVID-19 cases can be predicted using a neural network-based model.
Similar to Modeling and Forecasting the COVID-19 Temporal Spread in Greece: An Exploratory Approach Based on Complex Network Defined Splines (20)
Commentary: Aedes albopictus and Aedes japonicus—two invasive mosquito specie...Konstantinos Demertzis
In this interesting and original study, the authors present an ensemble Machine Learning (ML) model for the prediction of the habitats’ suitability, which is affected by the complex interactions between living conditions and survival-spreading climate factors. The research focuses in two of the most dangerous invasive mosquito species in Europe with the requirements’ identification in temperature and rainfall conditions. Though it is an interesting approach, the ensemble ML model is not presented and discussed in sufficient detail and thus its performance and value as a tool for modeling the distribution of invasive species cannot be adequately evaluated.
A Dynamic Intelligent Policies Analysis Mechanism for Personal Data Processin...Konstantinos Demertzis
The evolution of the Internet of Things is significantly a
ected by legal restrictions imposed for personal data handling, such as the European General Data Protection Regulation (GDPR).
The main purpose of this regulation is to provide people in the digital age greater control over their personal data, with their freely given, specific, informed and unambiguous consent to collect and process the data concerning them. ADVOCATE is an advanced framework that fully complies with the requirements of GDPR, which, with the extensive use of blockchain and artificial intelligence technologies, aims to provide an environment that will support users in maintaining control of their personal data in the IoT ecosystem. This paper proposes and presents the Intelligent Policies Analysis Mechanism (IPAM) of the ADVOCATE framework, which, in an intelligent and fully automated manner, can identify conflicting rules or consents of the user, which may lead to the collection of personal data that can be used for profiling. In order to clearly identify and implement IPAM, the problem of recording user data from smart entertainment devices using Fuzzy Cognitive Maps (FCMs) was simulated. FCMs are an intelligent decision-making system that simulates the processes of a complex system, modeling the correlation base, knowing the behavioral and balance specialists of the system. Respectively, identifying conflicting rules that can lead to a profile, training is done using Extreme Learning Machines (ELMs), which are highly ecient neural systems of small and flexible architecture that can work optimally in complex environments.
The Next Generation Cognitive Security Operations Center: Adaptive Analytic L...Konstantinos Demertzis
A Security Operations Center (SOC) is a central technical level unit responsible for monitoring, analyzing, assessing, and defending an organization’s security posture on an ongoing basis. The SOC staff works closely with incident response teams, security analysts, network engineers and organization managers using sophisticated data processing technologies such as security analytics, threat intelligence, and asset criticality to ensure security issues are detected, analyzed and finally addressed quickly. Those techniques are part of a reactive security strategy because they rely on the human factor, experience and the judgment of security experts, using supplementary technology to evaluate the risk impact and minimize the attack surface. This study suggests an active security strategy that adopts a vigorous method including ingenuity, data analysis, processing and decision-making support to face various cyber hazards. Specifically, the paper introduces a novel intelligence driven cognitive computing SOC that is based exclusively on progressive fully automatic procedures. The proposed -Architecture Network Flow Forensics Framework (-NF3) is an efficient cybersecurity defense framework against adversarial attacks. It implements the Lambda machine learning architecture that can analyze a mixture of batch and streaming data, using two accurate novel computational intelligence algorithms. Specifically, it uses an Extreme Learning Machine neural network with Gaussian Radial Basis Function kernel (ELM/GRBFk) for the batch data analysis and a Self-Adjusting Memory k-Nearest Neighbors classifier (SAM/k-NN) to examine patterns from real-time streams. It is a forensics tool for big data that can enhance the automate defense strategies of SOCs to effectively respond to the threats their environments face.
The Next Generation Cognitive Security Operations Center: Network Flow Forens...Konstantinos Demertzis
A Security Operations Center (SOC) can be defined as an organized and highly skilled team that uses advanced computer forensics tools to prevent, detect and respond to cybersecurity incidents of an organization. The fundamental aspects of an effective SOC is related to the ability to examine and analyze the vast number of data flows and to correlate several other types of events from a cybersecurity perception. The supervision and categorization of network flow is an essential process not only for the scheduling, management, and regulation of the network’s services, but also for attacks identification and for the consequent forensics’ investigations. A serious potential disadvantage of the traditional software solutions used today for computer network monitoring, and specifically for the instances of effective categorization of the encrypted or obfuscated network flow, which enforces the rebuilding of messages packets in sophisticated underlying protocols, is the requirements of computational resources. In addition, an additional significant inability of these software packages is they create high false positive rates because they are deprived of accurate predicting mechanisms.
For all the reasons above, in most cases, the traditional software fails completely to recognize unidentified vulnerabilities and zero-day exploitations. This paper proposes a novel intelligence driven Network Flow Forensics Framework (NF3) which uses low utilization of computing power and resources, for the Next Generation Cognitive Computing SOC (NGC2SOC) that rely solely on advanced fully automated intelligence methods. It is an effective and accurate Ensemble Machine Learning forensics tool to Network Traffic Analysis, Demystification of Malware Traffic and Encrypted Traffic Identification.
GeoAI: A Model-Agnostic Meta-Ensemble Zero-Shot Learning Method for Hyperspec...Konstantinos Demertzis
Deep learning architectures are the most e
ective methods for analyzing and classifying Ultra-Spectral Images (USI). However, e ective training of a Deep Learning (DL) gradient classifier aiming to achieve high classification accuracy, is extremely costly and time-consuming. It requires huge datasets with hundreds or thousands of labeled specimens from expert scientists. This research exploits the MAML++ algorithm in order to introduce the Model-Agnostic Meta-Ensemble Zero-shot Learning (MAME-ZsL) approach. The MAME-ZsL overcomes the above diculties, and it can be used as a powerful model to perform Hyperspectral Image Analysis (HIA). It is a novel optimization-based Meta-Ensemble Learning architecture, following a Zero-shot Learning (ZsL) prototype. To the best of our knowledge it is introduced to the literature for the first time. It facilitates learning of specialized techniques for the extraction of user-mediated representations, in complex Deep Learning architectures. Moreover, it leverages the use of first and second-order derivatives as pre-training methods. It enhances learning of features which do not cause issues of exploding or diminishing gradients; thus, it avoids potential overfitting. Moreover, it significantly reduces computational cost and training time, and it oers an improved training stability, high generalization performance and remarkable classification accuracy.
Extreme deep learning in biosecurity the case of machine hearing for marine s...Konstantinos Demertzis
Biosafety is defined as a set of preventive measures aimed at
reducing the risk of infectious diseases’ spread to crops and
animals, by providing quarantine pesticides. Prolonged and
sustained overheating of the sea, creates significant habitat losses,
resulting in the proliferation and spread of invasive species, which invade foreign areas typically seeking colder climate. This is one of the most important modern threats to marine biosafety. The research effort presented herein, proposes an innovative approach
for Marine Species Identification, by employing an advanced
intelligent Machine Hearing Framework (MHF). The final target is the identification of invasive alien species (IAS) based on the
sounds they produce. This classification attempt, can provide
significant aid towards the protection of biodiversity, and can
achieve overall regional biosecurity. Hearing recognition is
performed by using the Online Sequential Multilayer Graph
Regularized Extreme Learning Machine Autoencoder
(MIGRATE_ELM). The MIGRATE_ELM uses an innovative Deep Learning algorithm (DELE) that is applied for the first time for the above purpose. The assignment of the corresponding class ‘native’ or ‘invasive’ in its locality, is carried out by an equally innovative approach entitled ‘Geo Location Country Based Service’ that has been proposed by our research team.
The internet has revolutionized the way we live our lives – enabling us to read the news, enjoy entertainment, carry out research, book our holidays, buy and sell, shop, network, learn, bank and carry out many other everyday tasks. However, there are a number of risks associated with going online. Hackers are still on the lookout for personal information they can use to access your credit card and bank information.
Η χαλαζόπτωση αποτελεί έναν από τους σοβαρότερους κινδύνους της γεωργικής παραγωγής. Οι άμεσες συνέπειες της παρατηρούνται στη διάλυση της επιδερμίδας και τον τραυματισμό ή και την πτώση των ανθέων, καρπών, φύλλων και βλαστών, ενώ επιπρόσθετα τα πληγέντα φυτά παρουσιάζουν μεγαλύτερη ευαισθησία σε μυκητολογικές ασθένειες και σε εντομολογικές προσβολές. Σκοπός Η έγκαιρη αξιολόγηση σε ημερήσια βάση, όσον αφορά στο αν θα προκύψει φυσική καταστροφή λόγω χαλαζόπτωσης, μπορεί συμβάλλει καθοριστικά στην προστασία του γεωργικού κεφαλαίου της χώρας, αφού θα ενδυναμώσει σημαντικά τους μηχανισμούς πολιτικής προστασίας και θα δημιουργήσει τις κατάλληλες συνθήκες για βιώσιμη ανάπτυξη και οικονομική ευημερία. Υλικό Για τον έγκαιρο και έγκυρο χαρακτηρισμό (πρόβλεψη) μιας ημέρας ως ημέρα χαλαζόπτωσης, δημιουργήθηκε ένα νευρωνικό δίκτυο εμπρόσθιας τροφοδοσίας, το οποίο είναι ικανό να προβλέψει την χαλαζόπτωση. Για την εκπαίδευση και αξιολόγηση του συστήματος, χρησιμοποιήθηκαν τα ιστορικά δεδομένα χαλαζόπτωσης καθώς και τα μετεωρολογικά δεδομένα των τελευταίων 18 ετών της Κεντρικής Μακεδονίας. Μέθοδος Η σχεδίαση και ανάπτυξη του προτεινόμενου συστήματος πραγματοποιήθηκε με τη χρήση τεχνητών νευρωνικών δικτύων τα οποία έχουν την δυνατότητα να μοντελοποιήσουν πολύπλοκα μη γραμμικά προβλήματα ταξινόμησης (classification) εκμεταλλευόμενα την εγγενή ικανότητα μάθησης των τεχνητών νευρώνων. Η προσέγγιση επιλέχθηκε μετά από εξαντλητικές δοκιμές και συγκρίσεις διαφορετικών αλγοριθμικών μεθόδων μηχανικής μάθησης. Αποτελέσματα Τα αποτελέσματα της έρευνας είναι ιδιαίτερα ενθαρρυντικά καθώς η πρόβλεψη της χαλαζόπτωσης επιτυγχάνεται με ποσοστό ακρίβειας (Accuracy) 91,5%. Το γεγονός της ύπαρξης πολλών δεδομένων που αφορούν σε μεγάλο πλήθος εμπλεκομένων παραμέτρων, συνέβαλε σημαντικά στην επιτυχία της συγκεκριμένης μεθόδου. Συμπεράσματα Η εργασία προτείνει ένα σύστημα Μηχανικής Μάθησης με δυνατότητα ταξινόμησης των περιπτώσεων ως ημέρες χαλαζόπτωσης ή όχι. Το κυριότερο είναι ότι αυτό γίνεται εύκολα, γρήγορα και με μεγάλη ακρίβεια. Η αξιοπιστία και η βέλτιστη απόδοση του προτεινόμενου συστήματος με νέα δεδομένα που δεν είχαν καμία σχέση με τα δεδομένα εκπαίδευσης, προέκυψε μετά από την πραγματοποίηση εκτεταμένων συγκρίσεων μεταξύ διαφορετικών αλγοριθμικών προσεγγίσεων και αρχιτεκτονικών.
ARTIFICIAL INTELLIGENCE IN HEALTHCARE.pdfAnujkumaranit
Artificial intelligence (AI) refers to the simulation of human intelligence processes by machines, especially computer systems. It encompasses tasks such as learning, reasoning, problem-solving, perception, and language understanding. AI technologies are revolutionizing various fields, from healthcare to finance, by enabling machines to perform tasks that typically require human intelligence.
Knee anatomy and clinical tests 2024.pdfvimalpl1234
This includes all relevant anatomy and clinical tests compiled from standard textbooks, Campbell,netter etc..It is comprehensive and best suited for orthopaedicians and orthopaedic residents.
TEST BANK for Operations Management, 14th Edition by William J. Stevenson, Ve...kevinkariuki227
TEST BANK for Operations Management, 14th Edition by William J. Stevenson, Verified Chapters 1 - 19, Complete Newest Version.pdf
TEST BANK for Operations Management, 14th Edition by William J. Stevenson, Verified Chapters 1 - 19, Complete Newest Version.pdf
The prostate is an exocrine gland of the male mammalian reproductive system
It is a walnut-sized gland that forms part of the male reproductive system and is located in front of the rectum and just below the urinary bladder
Function is to store and secrete a clear, slightly alkaline fluid that constitutes 10-30% of the volume of the seminal fluid that along with the spermatozoa, constitutes semen
A healthy human prostate measures (4cm-vertical, by 3cm-horizontal, 2cm ant-post ).
It surrounds the urethra just below the urinary bladder. It has anterior, median, posterior and two lateral lobes
It’s work is regulated by androgens which are responsible for male sex characteristics
Generalised disease of the prostate due to hormonal derangement which leads to non malignant enlargement of the gland (increase in the number of epithelial cells and stromal tissue)to cause compression of the urethra leading to symptoms (LUTS
Recomendações da OMS sobre cuidados maternos e neonatais para uma experiência pós-natal positiva.
Em consonância com os ODS – Objetivos do Desenvolvimento Sustentável e a Estratégia Global para a Saúde das Mulheres, Crianças e Adolescentes, e aplicando uma abordagem baseada nos direitos humanos, os esforços de cuidados pós-natais devem expandir-se para além da cobertura e da simples sobrevivência, de modo a incluir cuidados de qualidade.
Estas diretrizes visam melhorar a qualidade dos cuidados pós-natais essenciais e de rotina prestados às mulheres e aos recém-nascidos, com o objetivo final de melhorar a saúde e o bem-estar materno e neonatal.
Uma “experiência pós-natal positiva” é um resultado importante para todas as mulheres que dão à luz e para os seus recém-nascidos, estabelecendo as bases para a melhoria da saúde e do bem-estar a curto e longo prazo. Uma experiência pós-natal positiva é definida como aquela em que as mulheres, pessoas que gestam, os recém-nascidos, os casais, os pais, os cuidadores e as famílias recebem informação consistente, garantia e apoio de profissionais de saúde motivados; e onde um sistema de saúde flexível e com recursos reconheça as necessidades das mulheres e dos bebês e respeite o seu contexto cultural.
Estas diretrizes consolidadas apresentam algumas recomendações novas e já bem fundamentadas sobre cuidados pós-natais de rotina para mulheres e neonatos que recebem cuidados no pós-parto em unidades de saúde ou na comunidade, independentemente dos recursos disponíveis.
É fornecido um conjunto abrangente de recomendações para cuidados durante o período puerperal, com ênfase nos cuidados essenciais que todas as mulheres e recém-nascidos devem receber, e com a devida atenção à qualidade dos cuidados; isto é, a entrega e a experiência do cuidado recebido. Estas diretrizes atualizam e ampliam as recomendações da OMS de 2014 sobre cuidados pós-natais da mãe e do recém-nascido e complementam as atuais diretrizes da OMS sobre a gestão de complicações pós-natais.
O estabelecimento da amamentação e o manejo das principais intercorrências é contemplada.
Recomendamos muito.
Vamos discutir essas recomendações no nosso curso de pós-graduação em Aleitamento no Instituto Ciclos.
Esta publicação só está disponível em inglês até o momento.
Prof. Marcus Renato de Carvalho
www.agostodourado.com
These lecture slides, by Dr Sidra Arshad, offer a quick overview of physiological basis of a normal electrocardiogram.
Learning objectives:
1. Define an electrocardiogram (ECG) and electrocardiography
2. Describe how dipoles generated by the heart produce the waveforms of the ECG
3. Describe the components of a normal electrocardiogram of a typical bipolar leads (limb II)
4. Differentiate between intervals and segments
5. Enlist some common indications for obtaining an ECG
Study Resources:
1. Chapter 11, Guyton and Hall Textbook of Medical Physiology, 14th edition
2. Chapter 9, Human Physiology - From Cells to Systems, Lauralee Sherwood, 9th edition
3. Chapter 29, Ganong’s Review of Medical Physiology, 26th edition
4. Electrocardiogram, StatPearls - https://www.ncbi.nlm.nih.gov/books/NBK549803/
5. ECG in Medical Practice by ABM Abdullah, 4th edition
6. ECG Basics, http://www.nataliescasebook.com/tag/e-c-g-basics
NVBDCP.pptx Nation vector borne disease control programSapna Thakur
NVBDCP was launched in 2003-2004 . Vector-Borne Disease: Disease that results from an infection transmitted to humans and other animals by blood-feeding arthropods, such as mosquitoes, ticks, and fleas. Examples of vector-borne diseases include Dengue fever, West Nile Virus, Lyme disease, and malaria.
Couples presenting to the infertility clinic- Do they really have infertility...Sujoy Dasgupta
Dr Sujoy Dasgupta presented the study on "Couples presenting to the infertility clinic- Do they really have infertility? – The unexplored stories of non-consummation" in the 13th Congress of the Asia Pacific Initiative on Reproduction (ASPIRE 2024) at Manila on 24 May, 2024.
Tom Selleck Health: A Comprehensive Look at the Iconic Actor’s Wellness Journeygreendigital
Tom Selleck, an enduring figure in Hollywood. has captivated audiences for decades with his rugged charm, iconic moustache. and memorable roles in television and film. From his breakout role as Thomas Magnum in Magnum P.I. to his current portrayal of Frank Reagan in Blue Bloods. Selleck's career has spanned over 50 years. But beyond his professional achievements. fans have often been curious about Tom Selleck Health. especially as he has aged in the public eye.
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Introduction
Many have been interested in Tom Selleck health. not only because of his enduring presence on screen but also because of the challenges. and lifestyle choices he has faced and made over the years. This article delves into the various aspects of Tom Selleck health. exploring his fitness regimen, diet, mental health. and the challenges he has encountered as he ages. We'll look at how he maintains his well-being. the health issues he has faced, and his approach to ageing .
Early Life and Career
Childhood and Athletic Beginnings
Tom Selleck was born on January 29, 1945, in Detroit, Michigan, and grew up in Sherman Oaks, California. From an early age, he was involved in sports, particularly basketball. which played a significant role in his physical development. His athletic pursuits continued into college. where he attended the University of Southern California (USC) on a basketball scholarship. This early involvement in sports laid a strong foundation for his physical health and disciplined lifestyle.
Transition to Acting
Selleck's transition from an athlete to an actor came with its physical demands. His first significant role in "Magnum P.I." required him to perform various stunts and maintain a fit appearance. This role, which he played from 1980 to 1988. necessitated a rigorous fitness routine to meet the show's demands. setting the stage for his long-term commitment to health and wellness.
Fitness Regimen
Workout Routine
Tom Selleck health and fitness regimen has evolved. adapting to his changing roles and age. During his "Magnum, P.I." days. Selleck's workouts were intense and focused on building and maintaining muscle mass. His routine included weightlifting, cardiovascular exercises. and specific training for the stunts he performed on the show.
Selleck adjusted his fitness routine as he aged to suit his body's needs. Today, his workouts focus on maintaining flexibility, strength, and cardiovascular health. He incorporates low-impact exercises such as swimming, walking, and light weightlifting. This balanced approach helps him stay fit without putting undue strain on his joints and muscles.
Importance of Flexibility and Mobility
In recent years, Selleck has emphasized the importance of flexibility and mobility in his fitness regimen. Understanding the natural decline in muscle mass and joint flexibility with age. he includes stretching and yoga in his routine. These practices help prevent injuries, improve posture, and maintain mobilit
Acute scrotum is a general term referring to an emergency condition affecting the contents or the wall of the scrotum.
There are a number of conditions that present acutely, predominantly with pain and/or swelling
A careful and detailed history and examination, and in some cases, investigations allow differentiation between these diagnoses. A prompt diagnosis is essential as the patient may require urgent surgical intervention
Testicular torsion refers to twisting of the spermatic cord, causing ischaemia of the testicle.
Testicular torsion results from inadequate fixation of the testis to the tunica vaginalis producing ischemia from reduced arterial inflow and venous outflow obstruction.
The prevalence of testicular torsion in adult patients hospitalized with acute scrotal pain is approximately 25 to 50 percent
New Directions in Targeted Therapeutic Approaches for Older Adults With Mantl...i3 Health
i3 Health is pleased to make the speaker slides from this activity available for use as a non-accredited self-study or teaching resource.
This slide deck presented by Dr. Kami Maddocks, Professor-Clinical in the Division of Hematology and
Associate Division Director for Ambulatory Operations
The Ohio State University Comprehensive Cancer Center, will provide insight into new directions in targeted therapeutic approaches for older adults with mantle cell lymphoma.
STATEMENT OF NEED
Mantle cell lymphoma (MCL) is a rare, aggressive B-cell non-Hodgkin lymphoma (NHL) accounting for 5% to 7% of all lymphomas. Its prognosis ranges from indolent disease that does not require treatment for years to very aggressive disease, which is associated with poor survival (Silkenstedt et al, 2021). Typically, MCL is diagnosed at advanced stage and in older patients who cannot tolerate intensive therapy (NCCN, 2022). Although recent advances have slightly increased remission rates, recurrence and relapse remain very common, leading to a median overall survival between 3 and 6 years (LLS, 2021). Though there are several effective options, progress is still needed towards establishing an accepted frontline approach for MCL (Castellino et al, 2022). Treatment selection and management of MCL are complicated by the heterogeneity of prognosis, advanced age and comorbidities of patients, and lack of an established standard approach for treatment, making it vital that clinicians be familiar with the latest research and advances in this area. In this activity chaired by Michael Wang, MD, Professor in the Department of Lymphoma & Myeloma at MD Anderson Cancer Center, expert faculty will discuss prognostic factors informing treatment, the promising results of recent trials in new therapeutic approaches, and the implications of treatment resistance in therapeutic selection for MCL.
Target Audience
Hematology/oncology fellows, attending faculty, and other health care professionals involved in the treatment of patients with mantle cell lymphoma (MCL).
Learning Objectives
1.) Identify clinical and biological prognostic factors that can guide treatment decision making for older adults with MCL
2.) Evaluate emerging data on targeted therapeutic approaches for treatment-naive and relapsed/refractory MCL and their applicability to older adults
3.) Assess mechanisms of resistance to targeted therapies for MCL and their implications for treatment selection
- Video recording of this lecture in English language: https://youtu.be/lK81BzxMqdo
- Video recording of this lecture in Arabic language: https://youtu.be/Ve4P0COk9OI
- Link to download the book free: https://nephrotube.blogspot.com/p/nephrotube-nephrology-books.html
- Link to NephroTube website: www.NephroTube.com
- Link to NephroTube social media accounts: https://nephrotube.blogspot.com/p/join-nephrotube-on-social-media.html
These simplified slides by Dr. Sidra Arshad present an overview of the non-respiratory functions of the respiratory tract.
Learning objectives:
1. Enlist the non-respiratory functions of the respiratory tract
2. Briefly explain how these functions are carried out
3. Discuss the significance of dead space
4. Differentiate between minute ventilation and alveolar ventilation
5. Describe the cough and sneeze reflexes
Study Resources:
1. Chapter 39, Guyton and Hall Textbook of Medical Physiology, 14th edition
2. Chapter 34, Ganong’s Review of Medical Physiology, 26th edition
3. Chapter 17, Human Physiology by Lauralee Sherwood, 9th edition
4. Non-respiratory functions of the lungs https://academic.oup.com/bjaed/article/13/3/98/278874
Explore natural remedies for syphilis treatment in Singapore. Discover alternative therapies, herbal remedies, and lifestyle changes that may complement conventional treatments. Learn about holistic approaches to managing syphilis symptoms and supporting overall health.
Ethanol (CH3CH2OH), or beverage alcohol, is a two-carbon alcohol
that is rapidly distributed in the body and brain. Ethanol alters many
neurochemical systems and has rewarding and addictive properties. It
is the oldest recreational drug and likely contributes to more morbidity,
mortality, and public health costs than all illicit drugs combined. The
5th edition of the Diagnostic and Statistical Manual of Mental Disorders
(DSM-5) integrates alcohol abuse and alcohol dependence into a single
disorder called alcohol use disorder (AUD), with mild, moderate,
and severe subclassifications (American Psychiatric Association, 2013).
In the DSM-5, all types of substance abuse and dependence have been
combined into a single substance use disorder (SUD) on a continuum
from mild to severe. A diagnosis of AUD requires that at least two of
the 11 DSM-5 behaviors be present within a 12-month period (mild
AUD: 2–3 criteria; moderate AUD: 4–5 criteria; severe AUD: 6–11 criteria).
The four main behavioral effects of AUD are impaired control over
drinking, negative social consequences, risky use, and altered physiological
effects (tolerance, withdrawal). This chapter presents an overview
of the prevalence and harmful consequences of AUD in the U.S.,
the systemic nature of the disease, neurocircuitry and stages of AUD,
comorbidities, fetal alcohol spectrum disorders, genetic risk factors, and
pharmacotherapies for AUD.
Modeling and Forecasting the COVID-19 Temporal Spread in Greece: An Exploratory Approach Based on Complex Network Defined Splines
1. International Journal of
Environmental Research
and Public Health
Article
Modeling and Forecasting the COVID-19 Temporal
Spread in Greece: An Exploratory Approach
Based on Complex Network Defined Splines
Konstantinos Demertzis 1,*, Dimitrios Tsiotas 1,2,3 and Lykourgos Magafas 1
1 Laboratory of Complex Systems, Department of Physics, Faculty of Sciences, International Hellenic
University, Kavala Campus, 65404 St. Loukas, Greece; tsiotas@aua.gr (D.T.); magafas@teikav.edu.gr (L.M.)
2 Department of Regional and Economic Development, Agricultural University of Athens, Greece, Nea Poli,
33100 Amfissa, Greece
3 Department of Planning and Regional Development, University of Thessaly, Pedion Areos,
38334 Volos, Greece
* Correspondence: kdemertzis@teiemt.gr
Received: 3 May 2020; Accepted: 29 June 2020; Published: 30 June 2020
Abstract: Within the complex framework of anti-COVID-19 health management, where the criteria
of diagnostic testing, the availability of public-health resources and services, and the applied
anti-COVID-19 policies vary between countries, the reliability and accuracy in the modeling of
temporal spread can prove to be effective in the worldwide fight against the disease. This paper
applies an exploratory time-series analysis to the evolution of the disease in Greece, which currently
suggests a success story of COVID-19 management. The proposed method builds on a recent
conceptualization of detecting connective communities in a time-series and develops a novel spline
regression model where the knot vector is determined by the community detection in the complex
network. Overall, the study contributes to the COVID-19 research by proposing a free of disconnected
past-data and reliable framework of forecasting, which can facilitate decision-making and management
of the available health resources.
Keywords: COVID-19 coronavirus pandemic; outbreak; modeling; prediction; regression splines;
modularity optimization algorithm
1. Introduction
The coronavirus disease 2019, abbreviated as COVID-19, is a contagious disease caused by the
severe acute respiratory syndrome coronavirus 2 (SARS-CoV-2), which frequently causes fever, cough,
and dyspnea, and, less frequently, muscle pains and neck-related problems [1–3]. The virus is mainly
transmitted to humans through respiratory channels, and the majority of patients are asymptomatic
or have soft symptoms to the disease, but in certain cases develop either pneumonia (the worst
aspect of which is the fatal acute respiratory distress syndrome (ARDS)) or multi-organ deficiency [3].
The time from exposure to the appearance of symptoms ranges from 2 to 14 days, with a 5-day
average, the long-range of which is affected by the relevance of the disease, in its asymptomatic or soft
symptomatology aspect, with the common cold [4,5]. Around 25–30% of patients worsen after the 14th
day of exposure, showing respiratory infection, whereas 83% of patients develop lymphopenia [6].
The disease is also observed in children, usually with soft symptoms [7,8].
The COVID-19 is detected either by laboratory methods, usually by the method of polymerase
chain reaction (PCR) [9], where the sample is received from the rhino-laryngology region, or just by
the clinical methods of evaluating the combinations of symptoms (at least of two major symptoms),
danger-factors, and indications of the chest radiogram, in conjunction with the history of the patients’
Int. J. Environ. Res. Public Health 2020, 17, 4693; doi:10.3390/ijerph17134693 www.mdpi.com/journal/ijerph
2. Int. J. Environ. Res. Public Health 2020, 17, 4693 2 of 18
contacts and movements [9,10]. Currently, since no vaccine or cure for the disease is available [11], the
major efforts of the medical community are focused on the management of symptoms, while the efforts
of the government are focused on the management of public health resources and the prevention
management of the disease. Within the context that COVID-19 is a particularly airborne contagious
disease, medical directives to the public highlight the need for careful personal body hygiene,
while government policies [12] impose severe restrictions of mobility, gathering, transportation, and
trade activities.
In particular, starting from mid-December 2019, when COVID-19 emerged in the city of Wuhan,
China, up to 19 April 2020, the disease was spread to 210 countries, causing 2,408,123 infections and
165,105 deaths [13]. Despite that its spatiotemporal pattern differs amongst countries worldwide, it is a
common feature that the pandemic shows scaling trends worldwide (with a couple of exemptions
in the cases of South Korea and China) without showing a tendency of stabilization. For instance,
up to 19 April 2020, North America recorded 43,369 deaths and 820,749 infections, South America
3850 deaths and 82,310 infections, Asia 14,801 deaths and 383,542 infections, Africa 1128 deaths and
22,992 infections, and Oceania 83 deaths and 8150 infections [14,15]. On the other hand, Europe was
more badly affected by the pandemic. Although it accounted for half of the global infections (1,089,659),
it recorded over 60% of worldwide deaths (101,859), from which 78.4% (72,196 deaths) were in Italy
(23,660), Spain (20,453), France (19,718), and the United Kingdom (16,060) [14,15].
In contrast to the worldwide and European status of COVID-19, Greece has a proportion of
240 confirmed infections per million of population, which is almost 35% lower than the global average,
which is about 370 infections per million, and 85% lower than the European average, which is about
1330 infections per million [14,15]. Within the context of promising a success story in the fight against
the disease, this paper develops a novel nonparametric method for the modeling of the evolution of the
Greek COVID-19 infection-curve, which can facilitate more accurate forecasting. The proposed method
builds on a recent conceptualization of detecting communities of connectivity in a time-series [12] and
develops a novel model based on the regression splines algorithm that is more accurate and reliable in
forecasting. The overall approach provides insights into good policy and decision-making practices
and management that can facilitate the decision-making and management of the available health
resources in the fight against COVID-19.
The remainder of the paper is organized as follows: Section 2 reviews the literature in the current
analysis of COVID-19 temporal spread, Section 3 applies a descriptive analysis of COVID-19 in Greece,
Section 4 describes the methodological framework of the proposed method, Section 5 shows the results
of the analysis and discusses them within the context of public-health management and practice, and,
finally, in Section 6, conclusions are given.
2. Literature Review
The work of [16] is a detailed presentation of COVID-19 records that were extracted from national,
regional, and municipal health-reports, and web information, aiming to contribute to decision-making
for public health with insightful primary information. This work focuses more on the recording than
on the analysis of cases, and, therefore, it exclusively contributes to COVID-19 research as an archive
of statistical data. The work of [17] is an insightful time-series analysis examining the interconnection
between deaths and infected cases, based on four health indicators of COVID-19, in China. The analysis
uses cross-sectional dependence, endogeneity, and unobserved heterogeneity estimation methods, and
detects a linear relationship between COVID-19 attributable deaths and confirmed cases, whereas a
nonlinear relationship rules the nexus between recovery and confirmed cases. This work contributes
to the literature with an interesting case-study that is, by default, restricted to the case of China, to the
limited number of indicators used in the analysis, and to the limited time-series dataset that does
not facilitate reliable forecasting. Next, the work of [18] proposed a heuristic method for estimating
basic epidemiologic parameters for modeling and forecasting the COVID-19 spread based on available
epidemiologic data. Their approach suggests a reverse forecasting process that builds on spreading
3. Int. J. Environ. Res. Public Health 2020, 17, 4693 3 of 18
scenarios, which reproduce the confirmed cases, and it develops a directed tendency which cannot
promise a reliable basis for forecasting. In addition, [19] studied the temporal-spread of the disease
based on exponential smoothing modeling. Although interesting, this approach is restricted to the
insufficient amount of past data on which their exponential model was based, and it promises to
forecast the tendency of the COVID-19 future-spread model according to illnesses of the past, while the
fitted curve is calibrated and smoothened in accordance with the foregoing available cases of other
countries. Moreover, [20] presented an interesting forecasting model based on a polynomial neural
network with corrective feedback, which is capable of forecasting with satisfactorily accuracy, even in
cases of insufficient data availability. Although interesting, this approach should be further tested and
compared with alternative established algorithms of similar good accuracy by taking into consideration
more than the accuracy criterion for the comparison.
On the other hand, due to the diversity that the phenomenon has in different countries,
many researchers were focused on national case-studies of COVID-19 instead of the global case.
For instance, [21] demonstrated the changes in statistical data of the United Kingdom after the
application of the anti-COVID-19 social distance policies. In Italy, many studies were conducted for the
modeling of the pandemic [22–24] due to the fatal outbreak that the disease had in the country, which
attracted global attention. The work of [22] is a characteristic early study of modeling the spatiotemporal
spread of COVID-19 in Italy, where the analysis builds on statistical modeling but without testing the
statistical significance of the research hypothesis. Within the context of epidemiologic research, this
incompleteness restricts the contribution of this interesting approach, provided that in epidemiologic
studies the goal is to develop an occurrence function (as a measure of association), quantifying a
cause–effect relation between a determinant (cause) and its result (effect), and therefore the major
concern is to test whether this cause–effect relation is statistically significant.
Greece is an example of a timely response in the application of anti-COVID-19 policies that
are currently have been proven effective in keeping the infected cases and deaths at relatively low
levels [12,13,16]. In particular, the first infection emerged in the country on 26 February 2020, and just
three days later, the state began applying several policies for the control of the disease [12]. This timely
response has led Greece to be currently considered as a successful case in anti-COVID-19 management
compared to both the European and global cases [13,16]. At the time that Greece started to attract
global attention, the authors of [12] proposed a novel complex network analysis of time-series, based
on the visibility algorithm [25,26], for the study of the Greek COVID-19 infection curve. The authors
showed that the evolution of the disease in Greece went through five stages of declining dynamics,
where saturation trends (represented by a logarithmic pattern) emerged after the 33rd day (29 April
2020). Within the context that Greece promises a success story and an insightful case study, both in
epidemiologic and in anti-COVID-19 policy terms, this paper builds on the very recent work of [12]
and advances the time-series modeling and forecasting by developing a model based on the regression
splines algorithm that is more capable of providing accurate predictions of future trends.
3. Descriptive Analysis of COVID-19 in Greece
The disease of COVID-19 emerged in Greece on 26 February 2020, almost two months after its
global emergence [12]. As it can be observed in Figure 1, within the 54 first days of the pandemic
(until 19 April), Greece recorded 2235 confirmed infected cases [15], from which 56% were men, 25.5%
(570 cases) were related with traveling abroad, and 42.2% (943 cases) were linked with other confirmed
cases, whereas the others were untracked and were still undergoing investigation [27]. The average
age of cases was 49 years (ranging from 1 day until 102 years old), whereas the median death age was
74 years (ranging from 39 to 95 years) [27].
In numeric terms, Greece is at the 58th place in the number of infected cases worldwide, and at
the 46th place in the number of deaths [15], while, in Europe, Greece is at the 25th place in the number
of cases and at the 22nd place in terms of deaths. In per capita terms, Greece currently has 13 deaths
per million of population [15], while the global average is above 16 deaths per million of residents [14].
4. Int. J. Environ. Res. Public Health 2020, 17, 4693 4 of 18
Additionally, with 67 patients being under a serious-critical situation, Greece is at the 37th place
worldwide, and at the 20th place in Europe [14,15,27]. In terms of testing, Greece has conducted
50,771 tests and takes the 56th place worldwide and the 23rd place in Europe [14,15,27].
The geographic distribution of the confirmed infected cases in Greece are shown in the map
of Figure 2 [27], where it can be observed that the majority of infections are concentrated in the
metropolitan prefectures of Attiki (6) and Thessaloniki (47), along a vertical axis configured by the
prefectures of Kastorias (24), Kozanis (30), and Larissas (33) in central Greece, in the prefecture of
Euvoias (12), in the prefectures of Xanthis (50) and Evrou (13) at the north-east of the country, and at
the prefectures of Achaias (1), Heleias (19), and Zakenthou (51) in south-west Greece, the majority of
which are transportation (road, maritime, and air transport) centers.Int. J. Environ. Res. Public Health 2020, 17, x 4 of 17
Figure 1. The time‐series of the COVID‐19 infection curve in Greece for the period 15 February 2020
to 18 April 2020. The first infection emerged on 26 February 2020 (and was recorded on 27 February
2020; data source [15]).
In numeric terms, Greece is at the 58th place in the number of infected cases worldwide, and at
the 46th place in the number of deaths [15], while, in Europe, Greece is at the 25th place in the number
of cases and at the 22nd place in terms of deaths. In per capita terms, Greece currently has 13 deaths
per million of population [15], while the global average is above 16 deaths per million of residents
[14]. Additionally, with 67 patients being under a serious‐critical situation, Greece is at the 37th place
worldwide, and at the 20th place in Europe [14,15,27]. In terms of testing, Greece has conducted
50,771 tests and takes the 56th place worldwide and the 23rd place in Europe [14,15,27].
The geographic distribution of the confirmed infected cases in Greece are shown in the map of
Figure 2 [27], where it can be observed that the majority of infections are concentrated in the
metropolitan prefectures of Attiki (6) and Thessaloniki (47), along a vertical axis configured by the
prefectures of Kastorias (24), Kozanis (30), and Larissas (33) in central Greece, in the prefecture of
Euvoias (12), in the prefectures of Xanthis (50) and Evrou (13) at the north‐east of the country, and at
the prefectures of Achaias (1), Heleias (19), and Zakenthou (51) in south‐west Greece, the majority of
which are transportation (road, maritime, and air transport) centers.
Figure 1. The time-series of the COVID-19 infection curve in Greece for the period 15 February 2020 to
18 April 2020. The first infection emerged on 26 February 2020 (and was recorded on 27 February 2020;
data source [15]). (a) Total Coronavirus Cases; (b) Novel Coronavirus Dairy Cases.
Int. J. Environ. Res. Public Health 2020, 17, x 4 of 17
Figure 1. The time‐series of the COVID‐19 infection curve in Greece for the period 15 February 2020
to 18 April 2020. The first infection emerged on 26 February 2020 (and was recorded on 27 February
2020; data source [15]).
In numeric terms, Greece is at the 58th place in the number of infected cases worldwide, and at
the 46th place in the number of deaths [15], while, in Europe, Greece is at the 25th place in the number
of cases and at the 22nd place in terms of deaths. In per capita terms, Greece currently has 13 deaths
per million of population [15], while the global average is above 16 deaths per million of residents
[14]. Additionally, with 67 patients being under a serious‐critical situation, Greece is at the 37th place
worldwide, and at the 20th place in Europe [14,15,27]. In terms of testing, Greece has conducted
50,771 tests and takes the 56th place worldwide and the 23rd place in Europe [14,15,27].
The geographic distribution of the confirmed infected cases in Greece are shown in the map of
Figure 2 [27], where it can be observed that the majority of infections are concentrated in the
metropolitan prefectures of Attiki (6) and Thessaloniki (47), along a vertical axis configured by the
prefectures of Kastorias (24), Kozanis (30), and Larissas (33) in central Greece, in the prefecture of
Euvoias (12), in the prefectures of Xanthis (50) and Evrou (13) at the north‐east of the country, and at
the prefectures of Achaias (1), Heleias (19), and Zakenthou (51) in south‐west Greece, the majority of
which are transportation (road, maritime, and air transport) centers.
Figure 2. Infected cases per million in Greece (source: [27]). Figure 2. Infected cases per million in Greece (source: [27]).
5. Int. J. Environ. Res. Public Health 2020, 17, 4693 5 of 18
Additionally, Greece is in the 68th place worldwide and in the 26th place in Europe regarding
the number of patients that have recovered from COVID-19 [14,15,27]. The daily and cumulative
infections of COVID-19 in Greece are shown in Figure 3.
Int. J. Environ. Res. Public Health 2020, 17, x 5 of 17
Additionally, Greece is in the 68th place worldwide and in the 26th place in Europe regarding
the number of patients that have recovered from COVID‐19 [14,15,27]. The daily and cumulative
infections of COVID‐19 in Greece are shown in Figure 3.
Figure 3. The time‐series of the COVID‐19 death curve in Greece for the period 15 February 2020–18
April 2020. The first death was recorded on 12 March 2020 (data source: [15]).
Next, Figure 4 shows the evolution of the confirmed infected cases in Greece compared to the
respective recorded deaths. The vertical axis of the diagram is graded at the logarithmic scale, where
linear segments illustrate the exponential growth of the disease (the slope of the linear growth is
proportional to the size of the exponent). As it can be observed, the almost constant offset between
the two curves implies that the number of infections and the number of deaths of COVID‐19 in Greece
are correlated. This interprets that these two indicators follow a similar growth pattern, which is in
line with the shape of the curves shown in Figures 1 and 3. In addition, a particularly promising
observation is the declining growth rates shown in Figure 4 for both the infection and death curves.
However, these observations will be statistically tested in the following part of the analysis.
.
Figure 4. Comparative diagram with the time‐series of the COVID‐19 infection cases versus the
recorded deaths in Greece (data source: [27]).
Figure 3. The time-series of the COVID-19 death curve in Greece for the period 15 February 2020–18
April 2020. The first death was recorded on 12 March 2020 (data source: [15]). (a) Total Coronavirus
Deaths; (b) Novel Coronavirus Dairy Deaths.
Next, Figure 4 shows the evolution of the confirmed infected cases in Greece compared to the
respective recorded deaths. The vertical axis of the diagram is graded at the logarithmic scale, where
linear segments illustrate the exponential growth of the disease (the slope of the linear growth is
proportional to the size of the exponent). As it can be observed, the almost constant offset between the
two curves implies that the number of infections and the number of deaths of COVID-19 in Greece
are correlated. This interprets that these two indicators follow a similar growth pattern, which is in
line with the shape of the curves shown in Figures 1 and 3. In addition, a particularly promising
observation is the declining growth rates shown in Figure 4 for both the infection and death curves.
However, these observations will be statistically tested in the following part of the analysis.
Int. J. Environ. Res. Public Health 2020, 17, x 5 of 17
Additionally, Greece is in the 68th place worldwide and in the 26th place in Europe regarding
the number of patients that have recovered from COVID‐19 [14,15,27]. The daily and cumulative
infections of COVID‐19 in Greece are shown in Figure 3.
Figure 3. The time‐series of the COVID‐19 death curve in Greece for the period 15 February 2020–18
April 2020. The first death was recorded on 12 March 2020 (data source: [15]).
Next, Figure 4 shows the evolution of the confirmed infected cases in Greece compared to the
respective recorded deaths. The vertical axis of the diagram is graded at the logarithmic scale, where
linear segments illustrate the exponential growth of the disease (the slope of the linear growth is
proportional to the size of the exponent). As it can be observed, the almost constant offset between
the two curves implies that the number of infections and the number of deaths of COVID‐19 in Greece
are correlated. This interprets that these two indicators follow a similar growth pattern, which is in
line with the shape of the curves shown in Figures 1 and 3. In addition, a particularly promising
observation is the declining growth rates shown in Figure 4 for both the infection and death curves.
However, these observations will be statistically tested in the following part of the analysis.
Figure 4. Comparative diagram with the time‐series of the COVID‐19 infection cases versus the
recorded deaths in Greece (data source: [27]).
Figure 4. Comparative diagram with the time-series of the COVID-19 infection cases versus the
recorded deaths in Greece (data source: [27]).
6. Int. J. Environ. Res. Public Health 2020, 17, 4693 6 of 18
Next, Figure 5 is an aggregate diagram showing the evolution of COVID-19 confirmed (total)
cases, new infections, deaths, and recovered on official data extracted from the Greek Ministry of
Health [27].
Int. J. Environ. Res. Public Health 2020, 17, x 6 of 17
Next, Figure 5 is an aggregate diagram showing the evolution of COVID‐19 confirmed (total)
cases, new infections, deaths, and recovered on official data extracted from the Greek Ministry of
Health [27].
Figure 5. The aggregate time‐series of the COVID‐19 in Greece, showing the number of confirmed
(total) cases, new infections, deaths, and recoveries, for the period 15 February 2020–18 April 2020
(data source: [15]).
Within the context of the global outbreak of the disease, the previous descriptive analysis
illustrates that Greece suggests a good example for its COVID‐19‐related sizes, which keep the
country at the last places both in the European and the global ranking. However, this good
performance has been the result of the timely response and application of anti‐COVID‐19 policies in
Greece [12], including social distancing to prevent the spreading of the disease, In particular, the first
anti‐COVID‐19 policies in Greece were applied after the confirmation of the first three infected cases,
which were dated 27 February 2020. On that day, all carnival events were canceled to prevent an
outbreak of the disease. On 10 March, the number of total cases reached 89 [28], the tracking of which
revealed that they were mainly related to travelers originating from Italy or with pilgrims returned
from a religious excursion to Israel with travelers from Egypt, along with their contacts [28]. On that
day, the government announced the directives related to personal hygiene, social distancing, and
prevention; the anti‐COVID‐19 measures up to then were optional and applicable at the local level
(and, particularly, at the regions with infected cases such as Heleias‐19, Achaias‐1, and Zakynthou‐
51) and mainly concerned the local suspension of schools, school excursions abroad, and cultural
events [12]. However, on 10 March, due to the spreading of the disease to multiple regions and due
to the disobedience of the citizens to conform with the measures, the government applied more active
measures and proceeded to the national suspension of all educational structures (at all ranks), and a
couple of days later, on 12 and 13 March, it proceeded to suspend cafeterias, bars, museums, malls
and trade centers, sports activities, and restaurants [28]. On 16 March, all commercial shops were
suspended at the national level, two villages in the regions of Kozani (30) were put into quarantine,
and all doctrine and religious activities were suspended [28]. The only active businesses and firms
exempted from these measures were primary need suppliers, such as bakeries, supermarkets,
pharmacies, and private health services [28]. Aiming to support the anti‐COVID‐19 policy of social
distancing, the government announced, on 18 and 19 March, a 10‐billion Euros (€) budget for taxation
benefits, regulations, or subsidies for the support of the economy, companies, and workers affected
by the suspensions and social distancing [28]. On 23 March 2020, the government announced national
restrictions in transportation, with exemptions for commuting to work, movements for supplies of
food, medicines, medical services, and health (gyms). However, these exemptions had to be
documented by identification papers, such as ID‐cards or passports, with an affirmation paper stating
the purpose of movement [28]. Provided that the citizens are within the accepted exceptions, the
citizens must carry both police identity or passports, as well as some type of certification as to the
Figure 5. The aggregate time-series of the COVID-19 in Greece, showing the number of confirmed
(total) cases, new infections, deaths, and recoveries, for the period 15 February 2020–18 April 2020 (data
source: [15]).
Within the context of the global outbreak of the disease, the previous descriptive analysis illustrates
that Greece suggests a good example for its COVID-19-related sizes, which keep the country at the
last places both in the European and the global ranking. However, this good performance has been
the result of the timely response and application of anti-COVID-19 policies in Greece [12], including
social distancing to prevent the spreading of the disease, In particular, the first anti-COVID-19 policies
in Greece were applied after the confirmation of the first three infected cases, which were dated
27 February 2020. On that day, all carnival events were canceled to prevent an outbreak of the disease.
On 10 March, the number of total cases reached 89 [28], the tracking of which revealed that they were
mainly related to travelers originating from Italy or with pilgrims returned from a religious excursion to
Israel with travelers from Egypt, along with their contacts [28]. On that day, the government announced
the directives related to personal hygiene, social distancing, and prevention; the anti-COVID-19
measures up to then were optional and applicable at the local level (and, particularly, at the regions
with infected cases such as Heleias-19, Achaias-1, and Zakynthou-51) and mainly concerned the local
suspension of schools, school excursions abroad, and cultural events [12]. However, on 10 March,
due to the spreading of the disease to multiple regions and due to the disobedience of the citizens
to conform with the measures, the government applied more active measures and proceeded to the
national suspension of all educational structures (at all ranks), and a couple of days later, on 12 and
13 March, it proceeded to suspend cafeterias, bars, museums, malls and trade centers, sports activities,
and restaurants [28]. On 16 March, all commercial shops were suspended at the national level, two
villages in the regions of Kozani (30) were put into quarantine, and all doctrine and religious activities
were suspended [28]. The only active businesses and firms exempted from these measures were
primary need suppliers, such as bakeries, supermarkets, pharmacies, and private health services [28].
Aiming to support the anti-COVID-19 policy of social distancing, the government announced, on 18
and 19 March, a 10-billion Euros ( ) budget for taxation benefits, regulations, or subsidies for the
support of the economy, companies, and workers affected by the suspensions and social distancing [28].
On 23 March 2020, the government announced national restrictions in transportation, with exemptions
for commuting to work, movements for supplies of food, medicines, medical services, and health
(gyms). However, these exemptions had to be documented by identification papers, such as ID-cards or
passports, with an affirmation paper stating the purpose of movement [28]. Provided that the citizens
are within the accepted exceptions, the citizens must carry both police identity or passports, as well as
7. Int. J. Environ. Res. Public Health 2020, 17, 4693 7 of 18
some type of certification as to the purpose of travel. This measure was applicable until 27 April 2020,
and it was extended until 4 May 2020 [28].
In the fight against the disease, the development of more accurate and reliable models in terms of
description and prediction can help policymakers better conceptualize the pandemic and apply proper
and more effective policies. Towards this direction, this paper proposes a novel complex-network-based
approach of the splines algorithm, which facilitates better epidemiologic modeling and forecasting.
4. Methodology and Data
The available data were extracted from the National Public Health Organization of Greece [27]
and the Ministry of Health of Greece [28]. The variables participating in the analysis include daily cases
of the period 26 February 2020 until 16 April 2020 and are the day since the first infection in Greece
(variable X1: Day), the COVID-19 cumulative infected cases (variable X2: Infections) and cumulative
deaths (var. X3: Deaths), the daily infections (var. X4: Daily Infections), the daily deaths (var. X5: Daily
Deaths), daily recoveries (var. X6: Daily Recovered), the daily new patients in intensive care units (var.
X7: ICU), and the daily number of tests (var. X8: Tests). All available variables are shown in Table A1
(Appendix A). Each variable is a time-series x(n) = {x(i)|i = 1, 2, . . . , n } = {x(1), x(2), . . . , x(i)}, where
each node i = 1, 2, . . . , n refers to a day since the first infection.
Overall, the analysis examines the dynamics of the Greek COVID-19 infection curve as it is
expressed by the available time-series variable X2:X8. The study is implemented through a double
perspective; the first examines the structural dynamics of one variable (Xi, i = 1, . . . , n) in comparison
with the other available variables Xj (analysis between variables, i j = 1, . . . , n), whereas the second
examines the time-series pattern configured for a variable Xi (analysis within variable Xi, i = 1, . . . , n).
Towards the first direction, Pearson’s bivariate correlation analysis is applied to the set of the available
variables (X2:X8), and the results are shown in Table 1. In terms of time-series analysis [29], computing
Pearson’s bivariate correlation coefficients for variables x, y is equivalent to a cross-correlation analysis
with a zero lag (h = 0) applied between variables xt and yt+h. Therefore, the first structural perspective
does not build on a lagged consideration of the available data since there is neither theoretical evidence
in epidemiologic studies [30,31] nor any indication based on data observation that the available
time-series have periodical structure. As it can be observed in Table 1, the number of infections (X2) is
significantly correlated with all variables except X6 (daily recovered) and the daily number of infections
(X4) is significantly correlated with the daily number of deaths (X5) and the patients in ICU (X7).
These significant results imply, on the one hand, that the coevolution of the COVID-19 infection curve
with variables X3:X5, X7, X8 is less than 5% likely to be a matter of chance, and, on the other hand,
that the coevolution of the daily COVID-19 infections with the daily number of deaths and the patients
in ICU is less than 1% likely to be a matter of chance. In general, the correlation analysis indicates that
the evolution of the COVID-19 infections in Greece is very likely to submit to causality and less likely
to be a matter of chance.
As far as correlations of other variables are concerned, Table 1 shows that the number of recoveries
(X6) is significantly (but not highly) and positively correlated with the number of daily deaths (X5),
expressing a tendency of the Greek health system to get more recoveries when the number of deaths
increases. This correlation illustrates the analogy between deaths and recoveries, suggesting a variable
for further research. In addition, the number of patients in ICU (X7) appears significantly and negatively
correlated with the number of infections (X2) and deaths (X3), implying that the number of patients
in ICU tends to decrease when the number of infections and deaths increases. This observation is
rationale since cases of death are removed from the ICU. On the other hand, the number of patients in
ICU (X7) is significantly and positively correlated with the number of daily infections (X4), implying
that the number of patients entering in ICU tends to increase when the number of daily infections gets
bigger. Next, an interesting observation regards the correlations between the number of tests (X4) and
variables X2 and X3. Although these correlations r(X4,X2) and r(X4,X3) are significant and positive,
as expected (implying that the number of tests appears proportional to the number of infections and
8. Int. J. Environ. Res. Public Health 2020, 17, 4693 8 of 18
deaths), the numerical values of these coefficients do not appear considerably high (since r(X4,X2),
r(X4,X2) < 0.6). Provided that perfect positive linearity between the number of tests and infections (or
deaths) implies increasing awareness of the health system proportionally to the spread of the disease,
the considerable high distance (>40%) of the correlation coefficients r(X4,X2) and r(X4,X2) from perfect
(positive) linearity can be seen as an aspect of testing ineffectiveness of the health system in Greece.
Overall, the correlation analysis shows that different aspects of the disease in Greece are ruled by
nonrandomness, and, therefore, it provides indications that the evolution of the Greek COVID-19
system is driven by short-term linear trends. Therefore, a stochastic analysis is further applied for
improvement of the overall system’s determination and, thus, for the better conceptualization of the
dynamics ruling the evolution of COVID-19 in Greece.
Table 1. Results of Pearson’s bivariate correlation analysis (r) a.
X3 X4 X5 X6 X7 X8
Infections (X2)
r(x,y) 0.979 ** 0.317 * 0.612 ** 0.138 −0.316 * 0.585 **
Sig. (2-tailed) 0.000 0.020 0.000 0.321 0.020 0.000
Deaths (X3)
r(x,y) 1 0.153 0.496 ** 0.123 −0.421 ** 0.552 **
Sig. (2-tailed) 0.268 0.000 0.376 0.002 0.000
Daily Infections (X4)
r(x,y) 1 0.487 ** −0.038 0.358 ** 0.232
Sig. (2-tailed) 0.000 0.785 0.008 0.091
Daily Deaths (X5)
r(x,y) 1 0.277 * 0.010 0.339 *
Sig. (2-tailed) 0.042 0.941 0.012
Recovered (X6)
r(x,y) 1 −0.133 0.003
Sig. (2-tailed) 0.339 0.982
ICU (X7)
r(x,y) 1 −0.077
Sig. (2-tailed) 0.582
a This analysis equivalents to a cross-correlation analysis with a zero lag (h = 0) applied between variables xt and
yt+h. * Coefficient is significant at the 0.05 level. ** Coefficient is significant at the 0.01 level.
4.1. Regression Analysis
The first approach for modeling the evolution of the GOVID-19 infection curve builds on regression
analysis and generally on the curve fitting approach [32], according to which a parametric curve is
fitted to the data of variable X2 = f(t) that best describes its variability through time. The available
types of fitting curves examined in the regression analysis are linear, quadratic (2nd order polynomial),
cubic (3rd order polynomial), power, and logarithmic. All the available types of fitting curves can be
generally described by the general multivariate linear regression model expressed by the formula [32]
ˆy = b1x1 + b2x2 + . . . + bnxn + c = bixi + c (1)
by considering that each independent variable xi can represent a function of x, namely, xi = f(x), as it is
shown in relation (2).
ˆy = bi f(xi) + c (2)
The function f(x) can be either logarithmic f(x) = (log(x))m, or polynomial f(x) = xm, or exponential
f(x) = (exp{x})m, or any other. Within this context, the purpose of the regression analysis is to estimate
the parameters bi of Model (2) that best fits the observed data y, so that to minimize the square
differences of yi − ˆyi [32], namely:
min
e =
n
i=1
[yi − ˆyi]2
=
n
i=1
yi − bi f(xi) + c
2
(3)
The algorithm estimates the beta coefficients (bi) by using the least-squares linear regression
(LSLR) method [32] based on the assumption that the differences e in Relation (3) follow the normal
9. Int. J. Environ. Res. Public Health 2020, 17, 4693 9 of 18
distribution N(0,σ2
e ). In this paper, the time (days since the first infection, variable X1) is set as an
independent variable, and each other available variable is set as a response variable to the models.
In all cases, the simplest form of regression model that best fits the data is chosen. The simplicity
criterion regards both the number of the used terms bi f(xi) and the polynomial degree m. That is, the
model with the least possible terms and the lowest possible degree m < n−2 (where n is the number of
observations in the dataset) is chosen if it best fits the data. The determination ability of each model is
expressed by the coefficient of determination R2, which is given by the formula [32,33]:
R2
= 1 −
n
i=1 (Yi − ˆYi)
2
n
i=1 (Yi − Yi)
2
(4)
where Yi are the observed values of the response (dependent) variable, ˆYi are the estimated values of
the response variable, Y is the average of the observed values of the response variable, and n is the
number of observations (the length of the variables). The coefficient of determination expresses the
variability of the response variable, as expressed by the model ˆY, and ranges within the interval [0, 1],
showing perfect determination when it equals to one [32,33].
Another measure of fitting ability is the root mean square deviation or error (RMSD or RMSE),
which calculates the square root of the expected differences between the predicted ( ˆy) and the observed
(y) values of the model, according to the formula [32,33]:
RMSE = MSE( ˆy) = E(( ˆy − y)2
) (5)
where E(·) is the function of the expected value. The RMSE represents the square root of the second
sample moment of the regression residuals [32,33].
A final measure of fitting ability used in the analysis is the relative absolute error (RAE), which
calculates the relative value of the RMSE in accordance with the expected observed values, as is shown
by the formula [32,33]:
RMSE = E(( ˆy − y)2
)/ E((y)2
) (6)
where E(·) is the function of the expected value. The RAE is often used in machine learning, data mining,
and operations management applications, and it represents the analogy of the RMSE relative to the
expected value of the observed values.
Within this context, Figure 6 shows the results of the regression analysis applied to the (cumulative)
number of infections (dependent variable: X2). As it can be observed, the 3rd order polynomial (cubic)
fitting curve best describes the data of the Greek COVID-19 cumulative infections. The last (very
recent) part of the cubic curve appears convex, implying that the number of cumulative infections
tends to saturate.
Next, Figure 7 shows the results of the regression analysis applied to the (cumulative) number of
deaths (dependent variable: X4). As can be observed, similar to variable X2, the 3rd order polynomial
(cubic) fitting curve best describes the data of the Greek COVID-19 cumulative deaths. The shape of
this curve also implies that the number of cumulative infections tends to saturate.
Finally, Figure 8 shows the results of the regression analysis applied to the cumulative number of
patients in ICU (dependent variable: cumulative X7). Similar to variables X2 and X4, the 3rd order
polynomial (cubic) fitting curve best describes the data of (cumulative) variable X7, and the shape of
the curve implies that the number of cumulative ICU patients also tends to saturate.
10. Int. J. Environ. Res. Public Health 2020, 17, 4693 10 of 18
to the expected value of the observed values.
Within this context, Figure 6 shows the results of the regression analysis applied to the
(cumulative) number of infections (dependent variable: X2). As it can be observed, the 3rd order
polynomial (cubic) fitting curve best describes the data of the Greek COVID‐19 cumulative infections.
The last (very recent) part of the cubic curve appears convex, implying that the number of cumulative
infections tends to saturate.
Figure 6. Available types of fitting curves applied to the cumulative COVID‐19 infection curve
(variable X2) of Greece. Time‐series data of the variable are shown in dots.
Figure 6. Available types of fitting curves applied to the cumulative COVID-19 infection curve (variable
X2) of Greece. Time-series data of the variable are shown in dots.
Int. J. Environ. Res. Public Health 2020, 17, x 10 of 17
Next, Figure 7 shows the results of the regression analysis applied to the (cumulative) number
of deaths (dependent variable: X4). As can be observed, similar to variable X2, the 3rd order
polynomial (cubic) fitting curve best describes the data of the Greek COVID‐19 cumulative deaths.
The shape of this curve also implies that the number of cumulative infections tends to saturate.
Figure 7. The available types of fitting curves applied to the cumulative COVID‐19 death curve
(variable X4) of Greece. Time‐series data of the variable are shown in dots.
Finally, Figure 8 shows the results of the regression analysis applied to the cumulative number
of patients in ICU (dependent variable: cumulative X7). Similar to variables X2 and X4, the 3rd order
polynomial (cubic) fitting curve best describes the data of (cumulative) variable X7, and the shape of
the curve implies that the number of cumulative ICU patients also tends to saturate.
Figure 7. The available types of fitting curves applied to the cumulative COVID-19 death curve
(variable X4) of Greece. Time-series data of the variable are shown in dots.
The regression analysis has shown that the best fit for the cumulative expressions of the COVID-19
infection (X2), death (X4), and ICU patients (X7) curves in Greece is to the 3rd order polynomial (cubic)
pattern than to linear, power, logarithmic, or 2nd order polynomial patterns. As was previously
observed, the cubic-shape of the fitting curves (which ends up as a convex area representing the recent
past of the time-series) illustrates saturation trends of the COVID-19 evolution in Greece. To improve
the accuracy and determination ability of the fittings, we apply next a regression analysis based on the
regression splines algorithm.
11. Int. J. Environ. Res. Public Health 2020, 17, 4693 11 of 18
(variable X4) of Greece. Time‐series data of the variable are shown in dots.
Finally, Figure 8 shows the results of the regression analysis applied to the cumulative number
of patients in ICU (dependent variable: cumulative X7). Similar to variables X2 and X4, the 3rd order
polynomial (cubic) fitting curve best describes the data of (cumulative) variable X7, and the shape of
the curve implies that the number of cumulative ICU patients also tends to saturate.
Figure 8. The available types of fitting curves applied to the cumulative COVID‐19 ICU patients
(variable: cumulative X7) of Greece. Time‐series data of the variable are shown in dots.
The regression analysis has shown that the best fit for the cumulative expressions of the COVID‐
19 infection (X2), death (X4), and ICU patients (X7) curves in Greece is to the 3rd order polynomial
(cubic) pattern than to linear, power, logarithmic, or 2nd order polynomial patterns. As was
Figure 8. The available types of fitting curves applied to the cumulative COVID-19 ICU patients
(variable: cumulative X7) of Greece. Time-series data of the variable are shown in dots.
4.2. Regression Splines
A regression spline is a special piecewise polynomial function defined in parts, which is widely
used in interpolation problems requiring smoothing. In particular, for a given partition a = to < t1 < t2
< . . . < tk−1 < tn = b of the interval [a,b], a spline is a multi-polynomial function S(t) defined by the
union of functions [34]:
S(t) = S1([a, t1]) ∪ S2([t1,t2]) ∪ . . . ∪ Sk−1 tk−2,tk−1 ∪ Sk tk−1,b = ∪k
i=1Si([ti−1, ti]), (7)
where k is the number of knots t = (to, t1, t2, . . . , tn) dividing the interval [a,b] into k−1 convex
subintervals. Each function Si(t), i = 1, . . . , n, is a polynomial of low (usually square) degree (sometimes
can also be linear) that fits to the corresponding interval [ti−1, ti], i = 1, . . . , n, so that the aggregate spline
function is continuous and smooth. The spline algorithm is preferable than that of simple regression
in cases when the simple regression generates models of high degree [34]. This piecewise approach
yields models of high determination by using low degree polynomial piece-functions. In terms of the
bias-variance trade-off dilemma [35], stating that simple (i.e., of low degree) models have small variance
and high bias whereas complex models have small bias and high variance, the spline algorithm can
generate fittings of both low variance and low bias, and thus it minimizes the expected loss expressed
by the sum of square bias, variance, and noise.
For global high degree polynomials, in order to avoid that the tail wags a lot, two extra constraints
have been added at the boundaries (on each end). The constraints make the function extrapolate
linearly beyond the boundary knots. With these constraints, the function goes off linearly beyond
the range of the data. They then free up a few parameters, so the degrees of freedom are always
the number of terms that go into the formula minus one (the intercept). The degrees of freedom are,
therefore, the number of predictors that have non-zero coefficients in the model. The spline with K
knots has K degrees of freedom because we get back two degrees of freedom for the two constraints on
each of the boundaries [34].
The major modeling choices for applying splines are, first, the determination of the knot vector
t = (to, t1, t2, . . . , tn) so as to obtain the smoothest and best determination spline model, and, secondly,
the selection of the polynomial degree, so that the model is smooth and continuous at the borders of
the subintervals. Therefore, this highly effective (in terms of model determination) fitting method is
very sensitive to the selection of the knot vector, which is usually being determined either uniformly,
12. Int. J. Environ. Res. Public Health 2020, 17, 4693 12 of 18
or arbitrarily, or intuitively, or based on the researchers’ experience [34,35]. The more sophisticated
knot-selection techniques in the literature [36,37] build on heuristics to determine the knot vector,
generating the best fitting and smoothening of the spline model. Within this open debate of knot
determination, this paper builds on the recent work of [12] and introduces a novel approach for
the determination of the spline knot vector, based on complex network analysis. More specifically,
the proposed model introduces a novel approach for the determination of the spline knot vector based
on complex network analysis based on the COVID-19 infection curve of Greece. According to this
approach, the spline is divided into five knots that represent the evolution of the disease in Greece,
which went through five stages of declining dynamics [12].
4.3. Complex Network Analysis of Time-Series
Transforming a time-series to a complex network is a modern approach that recently became
popular with the emergence of network science in various fields of research [26,38,39]. The most
popular method to transform a complex network to a time-series is the visibility graph algorithm that
was proposed by [25], which became dominant due to its intuitive conceptualization. In particular,
the rationale of creating a time-series to a complex network (visibility graph) builds on considering
the time-series as a path of successive mountains of different height (each representing the value of
the time-series at the certain time). In this time-series-based landscape, an observer standing on a
mountain can see (either forward or backwards) as far as no other mountain obstructs its visibility.
In geometric terms, a visibility line can be drawn between two points (nodes) of the time-series if
no other intermediating node is higher than this pair of points and obstructs their visibility [12,25].
Therefore, two time-series nodes can enjoy a connection in the associated visibility graph if they
are visible through a visibility line [25]. The visibility algorithm conceptualizes the time-series as a
landscape and produces a visibility graph associated with this landscape [26]. The associated (to the
time-series) visibility graph is a complex network where complex network analysis can be further
applied [12,26].
Within this context, by transforming the time-series of the COVID-19 infection curve to a visibility
graph, we can study the time-series as a complex network. This allows the division of the visibility graph
of the COVID-19 infection into connective communities based on the modularity optimization algorithm
of [40]. This algorithm is heuristic and separates a complex network into communities, which are dense
within (i.e., links inside the communities are the highest possible) and sparse between (i.e., links inside
the communities are the highest possible) [12,26,40–42]. Therefore, the most distant nodes within
each community can define the knots for applying the spline algorithm. This complex-network-based
definition (i.e., community detection based on modularity optimization) of the knot vector offers the
missing conceptualization to the splines knots, defining them as borderline points of connectivity of
the modularity-based communities. According to this approach, the visibility graph of the COVID-19
infection curve is divided into five modularity-based communities, which correspond to the periods
Q1 = [1, 4] ∪ [9, 19], Q2 = [5, 8], Q3 = [20, 26], Q4 = [27, 32], and Q5 = [33, 43], as it is shown in
Figure 9, where positive integers in these intervals are elements of variable X1.
Consequently, the spline knot vector can be defined by the knots t = (1, 4, 8, 19, 26, 32, 43) in the
body of the time-series COVID-19 infection curve. This partition facilitates the application of the spline
regression algorithm and comparison of the determination ability of the spline model with the cubic
regression models previously shown.
13. Int. J. Environ. Res. Public Health 2020, 17, 4693 13 of 18
optimization) of the knot vector offers the missing conceptualization to the splines knots, defining
them as borderline points of connectivity of the modularity‐based communities. According to this
approach, the visibility graph of the COVID‐19 infection curve is divided into five modularity‐based
communities, which correspond to the periods Q1 = 1,4 ⋃ 9,19 , Q2 = [5,8], Q3 = [20,26], Q4 = [27,32],
and Q5 = [33,43], as it is shown in Figure 9, where positive integers in these intervals are elements of
variable X1.
Figure 9. Community detection of the Greek COVID‐19 infection visibility graph based on the
modularity optimization algorithm of [40]. Node size in the network is proportional to node degree.
Consequently, the spline knot vector can be defined by the knots t = (1,4,8,19,26,32,43) in the
body of the time‐series COVID‐19 infection curve. This partition facilitates the application of the
spline regression algorithm and comparison of the determination ability of the spline model with the
cubic regression models previously shown.
5. Results and Discussion
After the complex‐network‐based determination of the spline knot vector, the spline regression
algorithm is applied to the COVID‐19 infection curve. The results are shown in Table 2, in comparison
with the cubic fittings and with regression splines of randomly selected (3, 4, and 5) knots. As can be
Figure 9. Community detection of the Greek COVID-19 infection visibility graph based on the
modularity optimization algorithm of [40]. Node size in the network is proportional to node degree.
5. Results and Discussion
After the complex-network-based determination of the spline knot vector, the spline regression
algorithm is applied to the COVID-19 infection curve. The results are shown in Table 2, in comparison
with the cubic fittings and with regression splines of randomly selected (3, 4, and 5) knots. As can be
observed, in all cases (i.e., for the dependent variables X2, X4, and X7), the proposed complex-network
spline models have better determination ability and lower error terms than both the cubic models
resulted by the regression analysis and the randomly calibrated splines. In particular, improvements
caused by the proposed method range between 0.00–0.20% for the multiple correlation coefficients
(R), between 0.10–0.51% for the model determination (R2), between 0.37–41.32% for the root mean
square error (RMSE), and 0.25–34.19% for the relative absolute error (RAE). These improvements are
considerable even in the cases of R and R2, given the already good fitting performance of the cubic and
randomly calibrated spline models. Additionally, it provides the area under the ROC curve metric
(AUC) in order to assess the model performance [43]. A ROC curve (receiver operating characteristic
curve) is a graph showing the performance of a model at all thresholds. AUC measures the entire
two-dimensional area underneath the entire ROC curve from (0,0) to (1,1).
According to these results, the proposed complex-network-based splines regression method
outperforms the fitting determination of both the cubic regression and the randomly calibrated splines
regression models, which are also models of high accuracy. In conceptual terms, this outperformance
may be related to the immanent property of complex network analysis to model and manage problems
of complexity and thus to provide better insights in the study complex systems, as in the case of the
COVID-19 temporal spread. Despite the restriction in data availability, improvements (mainly in error
terms) achieved by the proposed model are not negligible and highlight the direction of using hybrid
or combined methodologies for dealing with cases of insufficient information. Moreover, the overall
approach highlights the utility of multidisciplinary and synthetic modeling for dealing with complexity
in epidemiology, which, by default, deals with complex socio-economic systems of humanity.
Given the small data availability, this improvement in the modeling determination is a promising
advantage of the proposed method, which allows us to build on a quantitative consideration of the
spline knot vector instead of an intuitive one. Moreover, the utility and effectiveness of the proposed
methodology should be evaluated in conjunction with the good performance of the spline results
against multicollinearity [32,33], which emerges in simple regression modeling due to the consideration
of additional parameters.
14. Int. J. Environ. Res. Public Health 2020, 17, 4693 14 of 18
Overall, the two major advantages of the proposed method concern the better stability and
capability of forecasting, since the total behavior of the proposed model appears less noisy, while it
reduces the errors of determination due to the modelers’ choices. This conclusion can also be supported
by the variance minimization of the expected error terms, which provides strong indications of the
system’s reliability.
Table 2. Comparison between the polynomial cubic and regression splines fitting curves.
Model R R2 RMSE * RAE ** AUC
Dependent Variable: Infections (X2)
Cubic 0.998 0.996 2.229 4.182% 0.9962
Regression Splines with 3 random knots 0.999 0.998 1.805 3.798% 0.9979
Regression Splines with 4 random knots 0.999 0.998 1.621 3.277% 0.9984
Regression Splines with 5 random knots 0.999 0.998 1.420 2.986% 0.9985
Complex-Network Regression Splines 1.000 1.000 1.308 2.752% 0.9998
Dependent Variable: Deaths (X4)
Cubic 0.995 0.990 2.423 4.981% 0.9903
Regression Splines with 3 random knots 0.995 0.990 2.584 5.013% 0.9904
Regression Splines with 4 random knots 0.995 0.990 2.423 4.798% 0.9903
Regression Splines with 5 random knots 0.995 0.990 2.410 4.732% 0.9905
Complex-Network Regression Splines 0.995 0.991 2.401 4.720% 0.9912
Dependent Variable: ICU Patients (X7)
Cubic 0.987 0.974 6.300 12.659% 0.9743
Regression Splines with 3 random knots 0.987 0.974 6.287 12.648% 0.9744
Regression Splines with 4 random knots 0.988 0.976 6.186 12.114% 0.9762
Regression Splines with 5 random knots 0.989 0.979 6.204 12.007% 0.9793
Complex-Network Regression Splines 0.989 0.979 6.119 11.731% 0.9795
* Relative mean square error. ** Relative absolute error. Cases shown in bold font indicate best determination models.
6. Limitations and Further Research
This study is based solely on the COVID-19 data from Greece, which has been relatively effective
in containing the spread of the virus and where ICU admissions and deaths have been restricted to
relatively low proportions of the infected population. The application of the model proposed has not
yet been tested in other countries and may, therefore, need further examination or fine-tuning to adapt
to the new data. Suggestions for the evolution and future improvements of this method should focus
on tests on data from other countries that have been more badly affected by the pandemic, such as
Italy and Spain. Additionally, it is quite interesting to see the spread of the virus between countries
in terms of efficiency of the enforcement of the rules of social distancing, quarantine, and isolation.
On the other hand, future research could focus on further optimization of the hyper-parameters of the
algorithms used in the proposed architecture. This may lead to an even more efficient, more accurate,
and faster process. Finally, an additional element that could be considered in the direction of future
expansion concerns the operation of the network by means of self-improvement and redefinition of
its parameters automatically. It will thus be able to fully automate the process of extracting useful
intermediate representations from new time-series datasets.
7. Conclusions
Accurate forecasting is a major task in epidemiology that becomes very important today in the
global emergence of the COVID-19 pandemic. Due to the low availability of data, the worldwide
conceptualization of the new pandemic is currently constrained and still emerging. Within the
context of information-lack, methods contributing to more accurate forecasting on early datasets are
welcomed and pertinent for the ongoing fight against the disease. This paper proposes a novel method
for modeling and forecasting in epidemiology based on complex network analysis and the spline
15. Int. J. Environ. Res. Public Health 2020, 17, 4693 15 of 18
regression algorithm. Based on data of the COVID-19 temporal spread in Greece, the proposed method
converted a time-series to an associated visibility graph, and then it divided the graph into connected
communities that defined the spline knot vector. This approach provided a complex-network definition
of the spline knots, the definition of which is currently either intuitive or heuristic, and it assigned a
conceptualization to the knots based on network connectivity.
Within this context, the proposed method was applied to different aspects of the COVID-19
temporal spread in Greece (the cumulative number of infections, deaths, and ICU patients) and was
found to outperform the regression cubic models, which had the highest determination amongst
the available simple regression models. In methodological terms, the overall approach advances
the spline regression algorithm, which is currently restricted to the not-well-defined determination
of knots, whereas, in practical implementation, the proposed methodology offers an active method
for modeling and forecasting the pandemic, capable of removing disconnected past data from the
time-series structure. On the effectiveness of imposing restrictive measures in a graded self-organized
criticality epidemic spread model [44], and more specifically in terms of management of health
policy [12], this paper provides a modeling and forecasting tool that facilitates decision making and
resource management in epidemiology, which can contribute to the ongoing fight against the pandemic
of COVID-19.
Author Contributions: Conceptualization, K.D. and L.M.; methodology, K.D. and L.M.; software, K.D.; validation,
K.D., L.M. and D.T.; formal analysis, L.M. and D.T.; investigation, K.D. and L.M.; resources, K.D., L.M. and D.T.;
data curation, L.M. and D.T.; writing—original draft preparation K.D., L.M. and D.T.; writing—review and editing,
K.D., L.M. and D.T.; visualization, K.D., L.M. and D.T.; supervision, L.M.; project administration, L.M.; funding
acquisition, K.D., L.M. and D.T. All authors have read and agreed to the published version of the manuscript.
Funding: This research received no external funding.
Conflicts of Interest: The authors declare no conflict of interest.
Appendix A
Table A1. The COVID-19 variables participating in the analysis *.
Date Day (X1)
Infections
(X2)
Daily
Infections (X3)
Deaths
(X4)
Daily Deaths
(X5)
Daily
Recovered (X6)
ICU (X7)
Tests
(X8)
26-Feb-20 1 1 1 0 0 0 0 0
27-Feb-20 2 3 2 0 0 0 0 0
28-Feb-20 3 4 1 0 0 0 0 0
29-Feb-20 4 7 3 0 0 0 0 0
1-Mar-20 5 9 0 0 0 0 0 0
2-Mar-20 6 9 0 0 0 0 0 0
3-Mar-20 7 9 0 0 0 0 0 270
4-Mar-20 8 11 2 0 0 0 1 0
5-Mar-20 9 31 22 0 0 0 0 0
6-Mar-20 10 46 14 0 0 0 1 0
7-Mar-20 11 66 21 0 0 0 0 0
8-Mar-20 12 73 7 0 0 0 0 0
9-Mar-20 13 84 11 0 0 0 1 0
10-Mar-20 14 89 5 0 0 0 1 0
11-Mar-20 15 99 10 0 0 0 2 0
12-Mar-20 16 117 18 0 1 2 0 1910
13-Mar-20 17 190 73 1 0 0 3 520
14-Mar-20 18 228 38 1 2 6 0 700
15-Mar-20 19 331 103 3 1 2 2 0
16-Mar-20 20 352 21 4 0 0 5 920
17-Mar-20 21 387 35 4 1 4 2 580
18-Mar-20 22 418 31 5 0 0 6 1100
19-Mar-20 23 464 46 5 1 5 5 300
20-Mar-20 24 495 31 6 3 0 4 872
21-Mar-20 25 530 35 9 4 0 3 658
22-Mar-20 26 624 94 13 2 0 9 176
16. Int. J. Environ. Res. Public Health 2020, 17, 4693 16 of 18
Table A1. Cont.
Date Day (X1)
Infections
(X2)
Daily
Infections (X3)
Deaths
(X4)
Daily Deaths
(X5)
Daily
Recovered (X6)
ICU (X7)
Tests
(X8)
23-Mar-20 27 695 71 15 2 10 4 638
24-Mar-20 28 743 48 17 3 3 5 427
25-Mar-20 29 821 78 20 2 4 5 1424
26-Mar-20 30 892 71 22 4 6 2 0
27-Mar-20 31 966 74 26 2 10 9 2982
28-Mar-20 32 1061 95 28 4 0 1 886
29-Mar-20 33 1156 95 32 6 0 −2 788
30-Mar-20 34 1212 56 38 5 0 3 810
31-Mar-20 35 1314 102 43 6 0 13 771
1-Apr-20 36 1415 101 49 1 0 5 618
2-Apr-20 37 1544 129 50 3 9 1 1494
3-Apr-20 38 1613 69 53 6 17 1 3593
4-Apr-20 39 1673 60 59 9 0 0 896
5-Apr-20 40 1735 62 68 5 0 1 2120
6-Apr-20 41 1755 20 73 6 191 −3 740
7-Apr-20 42 1832 77 79 2 0 0 2391
8-Apr-20 43 1884 52 81 2 0 −6 3944
9-Apr-20 44 1955 71 83 3 0 −5 1106
10-Apr-20 45 2009 56 86 4 0 −2 1798
11-Apr-20 46 2081 70 90 3 0 −2 1912
12-Apr-20 47 2114 33 93 5 0 1 4917
13-Apr-20 48 2145 31 98 1 0 −3 1156
14-Apr-20 49 2170 25 99 2 0 3 5381
15-Apr-20 50 2192 22 101 1 0 −4 1973
16-Apr-20 51 2207 15 102 3 0 −3 0
17-Apr-20 52 2224 17 105 3 0 2 0
18-Apr-20 53 2235 11 108 2 0 −4 2519
19-Apr-20 54 2235 0 110 3 0 −4 0
Sum 2235 2235 113 113 269 69 53,290
* All data were daily extracted from National Public Health Organization of Greece (2020).
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