This document discusses considerations for integrating health management information systems (HMIS) and logistics management information systems (LMIS). It outlines benefits such as improving quantification, disease surveillance, planning, and service delivery. Integrating the systems can also help validate data, reduce duplicate data collection, and enhance monitoring and evaluation of health programs. However, there are also challenges including organizational barriers between the systems, differences in data sources and standards, and technical difficulties in linking the systems. The document provides recommendations for routinely linking HMIS and LMIS data such as encouraging communication, creating data sharing agreements, agreeing on standards, testing the linkage, and resolving data quality issues.
Digital health is about electronically connecting up the points of healthcare so that health information can be shared securely.
This is the first step to understanding how digital health can help deliver safer, better and quality healthcare.
“My Health Record” is the new name of the digital health record system.
Digital health is about electronically connecting up the points of healthcare so that health information can be shared securely.
This is the first step to understanding how digital health can help deliver safer, better and quality healthcare.
“My Health Record” is the new name of the digital health record system.
1. Outline three different applications and explain the utilizatio.docxpaynetawnya
1. Outline three different applications and explain the utilization of information systems in the healthcare supply chain.
2. Discuss and give three examples of the different uses of information systems and technology of those systems in the operation of the supply chain.
3. Relate, discuss and provide two examples where information systems in the healthcare supply chain provide the availability of performance metrics and statistics to inform decision making for improved efficiency, effectiveness and efficacy of the supply operation in the healthcare organization.
4. Distinguish the functional areas two different aspects of information systems, such as sourcing, EDI, vendor management, warehousing/storage and dispensing to points of care with regard to the healthcare supply chain.
5. Relate one business operation such as warehousing or storing or dispensing to points of care, how work is accomplished, to the information systems, how information and data from operations flow, within the healthcare supply chain.
6. Evaluate three different benefits of improved information systems and utilization of at least three metrics for healthcare supply chain operations and management in terms of performance, health outcomes and stakeholders’ perceptions.
Chapter 5 – Informing: Information Systems in the Healthcare Supply Chain
Learning Objectives
Outline and explain the utilization of information systems in the healthcare supply chain.
Discuss and give examples of the different uses of information systems and technology of those systems in the operation of the supply chain.
Relate, discuss and provide examples where information systems in the healthcare supply chain provide the availability of performance metrics and statistics to inform decision making for improved efficiency, effectiveness and efficacy of the supply operation in the healthcare organization.
Distinguish the functional areas of information systems, such as sourcing, EDI, vendor management, warehousing/storage and dispensing to points of care with regard to the healthcare supply chain.
Relate the business operation, how work is accomplished, to the information systems, how information and data from operations flow, within the healthcare supply chain.
Evaluate the benefits of improved information systems and utilization of metrics for healthcare supply chain operations and management in terms of performance, health outcomes and stakeholders’ perceptions.
Introduction
Information systems are valuable assets to healthcare organizations.
Data in context, such as a healthcare supply chain context, is information; information that is ‘actionable’ or useable is knowledge.
Information systems foster knowledge for operators, managers, leaders and strategists.
Efficient, effective and most importantly, efficacious business practices are reinforced and complemented by well developed, built and deployed information systems for a trained team of professionals a ...
Health Informatics - An International Journal (HIIJ) hiij
The Health Management Information System (HMIS) is an essential core component in framing the national health system. To operate six core components synchronically and to manage them successfully inside the health system, HMIS and communication are also placed centrally. However, the unworthy problems of HMIS data have been significantly affected by several characteristics. Among these characteristics, the organizational factors need to be considered as important issues. This systematic review aims to examine what organizational factors are determining the HMIS data quality in LMICs after 2005. Two independent reviewers selected 38 eligible primary published papers from 22 LMICs through three popular online sources: MEDLINE and PubMed, HINARI, and Google and Google Scholar. This finding mainly highlighted that weak organizational structuring and processing, less organizational learning development regarding HMIS, unavailability of HMIS resources, poor governance, and political issues impacted the HMIS data quality in LMICs.
BRIEF COMMUNICATIONS DATA HYGIENE: IMPORTANT STEP IN DECISIONMAKING WITH IMPL...hiij
Medical and health data that have been entered into an electronic data system in real-time cannot be
assumed to be accurate and of high quality without verification. The adoption of the electronic health
record (EHR) by many countries to the support care and treatment of patients illustrates the importance of
high quality data that can be shared for efficient patient care and the operation of healthcare systems.
This brief communication provides a high-level overview of an EHR system and practices related to high
data quality and data hygiene that could contribute to the analysis and interpretation of EHR data for use
in patient care and healthcare system administration.
BRIEF COMMUNICATIONS DATA HYGIENE: IMPORTANT STEP IN DECISIONMAKING WITH IMPL...hiij
Medical and health data that have been entered into an electronic data system in real-time cannot be
assumed to be accurate and of high quality without verification. The adoption of the electronic health
record (EHR) by many countries to the support care and treatment of patients illustrates the importance of
high quality data that can be shared for efficient patient care and the operation of healthcare systems.
This brief communication provides a high-level overview of an EHR system and practices related to high
data quality and data hygiene that could contribute to the analysis and interpretation of EHR data for use
in patient care and healthcare system administration.
1. Outline three different applications and explain the utilizatio.docxpaynetawnya
1. Outline three different applications and explain the utilization of information systems in the healthcare supply chain.
2. Discuss and give three examples of the different uses of information systems and technology of those systems in the operation of the supply chain.
3. Relate, discuss and provide two examples where information systems in the healthcare supply chain provide the availability of performance metrics and statistics to inform decision making for improved efficiency, effectiveness and efficacy of the supply operation in the healthcare organization.
4. Distinguish the functional areas two different aspects of information systems, such as sourcing, EDI, vendor management, warehousing/storage and dispensing to points of care with regard to the healthcare supply chain.
5. Relate one business operation such as warehousing or storing or dispensing to points of care, how work is accomplished, to the information systems, how information and data from operations flow, within the healthcare supply chain.
6. Evaluate three different benefits of improved information systems and utilization of at least three metrics for healthcare supply chain operations and management in terms of performance, health outcomes and stakeholders’ perceptions.
Chapter 5 – Informing: Information Systems in the Healthcare Supply Chain
Learning Objectives
Outline and explain the utilization of information systems in the healthcare supply chain.
Discuss and give examples of the different uses of information systems and technology of those systems in the operation of the supply chain.
Relate, discuss and provide examples where information systems in the healthcare supply chain provide the availability of performance metrics and statistics to inform decision making for improved efficiency, effectiveness and efficacy of the supply operation in the healthcare organization.
Distinguish the functional areas of information systems, such as sourcing, EDI, vendor management, warehousing/storage and dispensing to points of care with regard to the healthcare supply chain.
Relate the business operation, how work is accomplished, to the information systems, how information and data from operations flow, within the healthcare supply chain.
Evaluate the benefits of improved information systems and utilization of metrics for healthcare supply chain operations and management in terms of performance, health outcomes and stakeholders’ perceptions.
Introduction
Information systems are valuable assets to healthcare organizations.
Data in context, such as a healthcare supply chain context, is information; information that is ‘actionable’ or useable is knowledge.
Information systems foster knowledge for operators, managers, leaders and strategists.
Efficient, effective and most importantly, efficacious business practices are reinforced and complemented by well developed, built and deployed information systems for a trained team of professionals a ...
Health Informatics - An International Journal (HIIJ) hiij
The Health Management Information System (HMIS) is an essential core component in framing the national health system. To operate six core components synchronically and to manage them successfully inside the health system, HMIS and communication are also placed centrally. However, the unworthy problems of HMIS data have been significantly affected by several characteristics. Among these characteristics, the organizational factors need to be considered as important issues. This systematic review aims to examine what organizational factors are determining the HMIS data quality in LMICs after 2005. Two independent reviewers selected 38 eligible primary published papers from 22 LMICs through three popular online sources: MEDLINE and PubMed, HINARI, and Google and Google Scholar. This finding mainly highlighted that weak organizational structuring and processing, less organizational learning development regarding HMIS, unavailability of HMIS resources, poor governance, and political issues impacted the HMIS data quality in LMICs.
BRIEF COMMUNICATIONS DATA HYGIENE: IMPORTANT STEP IN DECISIONMAKING WITH IMPL...hiij
Medical and health data that have been entered into an electronic data system in real-time cannot be
assumed to be accurate and of high quality without verification. The adoption of the electronic health
record (EHR) by many countries to the support care and treatment of patients illustrates the importance of
high quality data that can be shared for efficient patient care and the operation of healthcare systems.
This brief communication provides a high-level overview of an EHR system and practices related to high
data quality and data hygiene that could contribute to the analysis and interpretation of EHR data for use
in patient care and healthcare system administration.
BRIEF COMMUNICATIONS DATA HYGIENE: IMPORTANT STEP IN DECISIONMAKING WITH IMPL...hiij
Medical and health data that have been entered into an electronic data system in real-time cannot be
assumed to be accurate and of high quality without verification. The adoption of the electronic health
record (EHR) by many countries to the support care and treatment of patients illustrates the importance of
high quality data that can be shared for efficient patient care and the operation of healthcare systems.
This brief communication provides a high-level overview of an EHR system and practices related to high
data quality and data hygiene that could contribute to the analysis and interpretation of EHR data for use
in patient care and healthcare system administration.
6/29/2016 library.ahima.org/PB/DataStandards#appxA
http://library.ahima.org/PB/DataStandards#appxA 1/20
Data Standards, Data Quality, and Interoperability (2013
update)
Remove from myBoK
Editor's note: This update replaces the 2007 practice brief "Data Standards, Data Quality, and Interoperability."
Data quality and consistency are critical to ensuring patient safety, communicating delivery of health services, coordinating
care, and healthcare reporting. Assessing the quality and consistency of data requires data standards. This practice brief
provides health information management (HIM) professionals with a clear understanding of data standards as a tool to
enable interoperability and promote data quality.
The online version of this practice brief [...] is accompanied by an appendix that provides HIM professionals with a list of
standards to reference in data dictionary development, electronic health records, the exchange of health information, and
general data management processes to ensure information integrity and reliability. Evaluation of data validity, reliability,
completeness, and timeliness are accomplished through a combination of human and machine processes in healthcare, and
the list of data standard sources is a helpful reference guide when more detailed information is required.
Data Standards and Regulatory Framework
Data standards are "documented agreements on representations, formats, and definitions of common data. Data standards
provide a method to codify invalid, meaningful, comprehensive, and actionable ways, information captured in the course of
doing business." Rules to describe how the data is recorded to ensure consistency across multiple sources is another way to
think of data standards. Without data standards and data quality, the future of interoperability is bleak. Data fields and the
content of those fields need to be standardized.
Standards development organizations (SDOs) address a variety of aspects of health information and informatics. For
example, the American Society for Testing and Materials (ASTM) and Health Level Seven (HL7) target clinical data
standards. Insurance and remittance standards are a focus of the Accredited Standards Committee (ASC) X12. Standards to
transmit diagnostic images are developed through Digital Imaging and Communications in Medicine (DICOM). The
National Council for Prescription Drug Programs (NCPDP) represents pharmacy messages.
The Institute of Electrical and Electronics Engineers (IEEE), HL7, ASTM, and others develop data models and
frameworks. See the table on page 65 for a breakdown of regulatory agencies responsible for working with the American
National Standards Institute (ANSI) to drive data standards to achieve interoperability.
The AHIMA Leadership Model states that HIM professionals should serve as the leaders in healthcare organizations and in
their professional community for ensuring that data content standards are identified, understood, implemented, a.
6/29/2016 library.ahima.org/PB/DataStandards#appxA
http://library.ahima.org/PB/DataStandards#appxA 1/20
Data Standards, Data Quality, and Interoperability (2013
update)
Remove from myBoK
Editor's note: This update replaces the 2007 practice brief "Data Standards, Data Quality, and Interoperability."
Data quality and consistency are critical to ensuring patient safety, communicating delivery of health services, coordinating
care, and healthcare reporting. Assessing the quality and consistency of data requires data standards. This practice brief
provides health information management (HIM) professionals with a clear understanding of data standards as a tool to
enable interoperability and promote data quality.
The online version of this practice brief [...] is accompanied by an appendix that provides HIM professionals with a list of
standards to reference in data dictionary development, electronic health records, the exchange of health information, and
general data management processes to ensure information integrity and reliability. Evaluation of data validity, reliability,
completeness, and timeliness are accomplished through a combination of human and machine processes in healthcare, and
the list of data standard sources is a helpful reference guide when more detailed information is required.
Data Standards and Regulatory Framework
Data standards are "documented agreements on representations, formats, and definitions of common data. Data standards
provide a method to codify invalid, meaningful, comprehensive, and actionable ways, information captured in the course of
doing business." Rules to describe how the data is recorded to ensure consistency across multiple sources is another way to
think of data standards. Without data standards and data quality, the future of interoperability is bleak. Data fields and the
content of those fields need to be standardized.
Standards development organizations (SDOs) address a variety of aspects of health information and informatics. For
example, the American Society for Testing and Materials (ASTM) and Health Level Seven (HL7) target clinical data
standards. Insurance and remittance standards are a focus of the Accredited Standards Committee (ASC) X12. Standards to
transmit diagnostic images are developed through Digital Imaging and Communications in Medicine (DICOM). The
National Council for Prescription Drug Programs (NCPDP) represents pharmacy messages.
The Institute of Electrical and Electronics Engineers (IEEE), HL7, ASTM, and others develop data models and
frameworks. See the table on page 65 for a breakdown of regulatory agencies responsible for working with the American
National Standards Institute (ANSI) to drive data standards to achieve interoperability.
The AHIMA Leadership Model states that HIM professionals should serve as the leaders in healthcare organizations and in
their professional community for ensuring that data content standards are identified, understood, implemented, a ...
Bangladesh Directorate General of Family Planning implements the DHIS2 in collaboration with USAID eMIS partners (MEASURE Evaluation, MNCSP, icddrb) and UNFPA.
This is the first Annual Progress Implementation Report (APIR) for the 4th Health Population Nutrition Sector Program (HPNSP) of Bangladesh, covering the implementation period FY 2017-18 (July 2017-June 2018).
Creating a culture for data use: It takes asystem strengthening approachGolam Kibria Madhurza
Ambition for the countries should be to move towards the “analysis” phase (predictive analytics/data modeling) from "reporting" phase to gain more insight from routine data and at the same time, create a learning environment to enhance epidemiology and statistical literacy, and to gear towards a more cultured and collaborative government approach to quality data production, analytics, visualization, use and communication. Integration of implementation research and evaluation on digital health solutions into country’s data roadmap to measure its’ usability, efficacy, effectiveness and return on investments will also remain critical to achieving the SDGs.
Objective: to assess existing health information systems (HIS) tools, their scope, and performance to explore opportunities to integrate/link the tools and improve efficiency and reduce wastage of resources.
R3 Stem Cells and Kidney Repair A New Horizon in Nephrology.pptxR3 Stem Cell
R3 Stem Cells and Kidney Repair: A New Horizon in Nephrology" explores groundbreaking advancements in the use of R3 stem cells for kidney disease treatment. This insightful piece delves into the potential of these cells to regenerate damaged kidney tissue, offering new hope for patients and reshaping the future of nephrology.
Global launch of the Healthy Ageing and Prevention Index 2nd wave – alongside...ILC- UK
The Healthy Ageing and Prevention Index is an online tool created by ILC that ranks countries on six metrics including, life span, health span, work span, income, environmental performance, and happiness. The Index helps us understand how well countries have adapted to longevity and inform decision makers on what must be done to maximise the economic benefits that comes with living well for longer.
Alongside the 77th World Health Assembly in Geneva on 28 May 2024, we launched the second version of our Index, allowing us to track progress and give new insights into what needs to be done to keep populations healthier for longer.
The speakers included:
Professor Orazio Schillaci, Minister of Health, Italy
Dr Hans Groth, Chairman of the Board, World Demographic & Ageing Forum
Professor Ilona Kickbusch, Founder and Chair, Global Health Centre, Geneva Graduate Institute and co-chair, World Health Summit Council
Dr Natasha Azzopardi Muscat, Director, Country Health Policies and Systems Division, World Health Organisation EURO
Dr Marta Lomazzi, Executive Manager, World Federation of Public Health Associations
Dr Shyam Bishen, Head, Centre for Health and Healthcare and Member of the Executive Committee, World Economic Forum
Dr Karin Tegmark Wisell, Director General, Public Health Agency of Sweden
Navigating Challenges: Mental Health, Legislation, and the Prison System in B...Guillermo Rivera
This conference will delve into the intricate intersections between mental health, legal frameworks, and the prison system in Bolivia. It aims to provide a comprehensive overview of the current challenges faced by mental health professionals working within the legislative and correctional landscapes. Topics of discussion will include the prevalence and impact of mental health issues among the incarcerated population, the effectiveness of existing mental health policies and legislation, and potential reforms to enhance the mental health support system within prisons.
Struggling with intense fears that disrupt your life? At Renew Life Hypnosis, we offer specialized hypnosis to overcome fear. Phobias are exaggerated fears, often stemming from past traumas or learned behaviors. Hypnotherapy addresses these deep-seated fears by accessing the subconscious mind, helping you change your reactions to phobic triggers. Our expert therapists guide you into a state of deep relaxation, allowing you to transform your responses and reduce anxiety. Experience increased confidence and freedom from phobias with our personalized approach. Ready to live a fear-free life? Visit us at Renew Life Hypnosis..
Leading the Way in Nephrology: Dr. David Greene's Work with Stem Cells for Ki...Dr. David Greene Arizona
As we watch Dr. Greene's continued efforts and research in Arizona, it's clear that stem cell therapy holds a promising key to unlocking new doors in the treatment of kidney disease. With each study and trial, we step closer to a world where kidney disease is no longer a life sentence but a treatable condition, thanks to pioneers like Dr. David Greene.
Telehealth Psychology Building Trust with Clients.pptxThe Harvest Clinic
Telehealth psychology is a digital approach that offers psychological services and mental health care to clients remotely, using technologies like video conferencing, phone calls, text messaging, and mobile apps for communication.
The dimensions of healthcare quality refer to various attributes or aspects that define the standard of healthcare services. These dimensions are used to evaluate, measure, and improve the quality of care provided to patients. A comprehensive understanding of these dimensions ensures that healthcare systems can address various aspects of patient care effectively and holistically. Dimensions of Healthcare Quality and Performance of care include the following; Appropriateness, Availability, Competence, Continuity, Effectiveness, Efficiency, Efficacy, Prevention, Respect and Care, Safety as well as Timeliness.
CHAPTER 1 SEMESTER V PREVENTIVE-PEDIATRICS.pdfSachin Sharma
This content provides an overview of preventive pediatrics. It defines preventive pediatrics as preventing disease and promoting children's physical, mental, and social well-being to achieve positive health. It discusses antenatal, postnatal, and social preventive pediatrics. It also covers various child health programs like immunization, breastfeeding, ICDS, and the roles of organizations like WHO, UNICEF, and nurses in preventive pediatrics.
CRISPR-Cas9, a revolutionary gene-editing tool, holds immense potential to reshape medicine, agriculture, and our understanding of life. But like any powerful tool, it comes with ethical considerations.
Unveiling CRISPR: This naturally occurring bacterial defense system (crRNA & Cas9 protein) fights viruses. Scientists repurposed it for precise gene editing (correction, deletion, insertion) by targeting specific DNA sequences.
The Promise: CRISPR offers exciting possibilities:
Gene Therapy: Correcting genetic diseases like cystic fibrosis.
Agriculture: Engineering crops resistant to pests and harsh environments.
Research: Studying gene function to unlock new knowledge.
The Peril: Ethical concerns demand attention:
Off-target Effects: Unintended DNA edits can have unforeseen consequences.
Eugenics: Misusing CRISPR for designer babies raises social and ethical questions.
Equity: High costs could limit access to this potentially life-saving technology.
The Path Forward: Responsible development is crucial:
International Collaboration: Clear guidelines are needed for research and human trials.
Public Education: Open discussions ensure informed decisions about CRISPR.
Prioritize Safety and Ethics: Safety and ethical principles must be paramount.
CRISPR offers a powerful tool for a better future, but responsible development and addressing ethical concerns are essential. By prioritizing safety, fostering open dialogue, and ensuring equitable access, we can harness CRISPR's power for the benefit of all. (2998 characters)
2. CONTENTS
Introduction..................................................................................................................................... 1
Benefits of Integrating HMIS and LMIS Data ............................................................................... 3
Improving the Logistics System.................................................................................................. 3
Quantification ......................................................................................................................... 3
Disease Surveillance ............................................................................................................... 3
Planning .................................................................................................................................. 4
Improving Service Delivery........................................................................................................ 4
Validating Data ........................................................................................................................... 5
Reducing Data Collection Burden and Duplicate Data Collection............................................. 5
Monitoring and Evaluation of Health Programs ......................................................................... 6
Enhancing Communication between Service Delivery Program Managers and Supply Chain
Managers ..................................................................................................................................... 6
Challenges of Linking HMIS and LMIS Data................................................................................ 7
Organizational Challenges .......................................................................................................... 7
Data Source Issues ...................................................................................................................... 7
Technical Challenges .................................................................................................................. 8
Recommendations for Routinely Linking HMIS and LMIS Data.................................................. 9
Encourage Communication across Organizational Boundaries .................................................. 9
Create Data-Sharing Agreements................................................................................................ 9
Agree upon Data Standards......................................................................................................... 9
Test Linkage of Data................................................................................................................. 10
Resolve Data Quality Issues...................................................................................................... 10
Evaluate Technology Options ................................................................................................... 10
3. ACKNOWLEDGMENTS
The development of this toolkit has been part of the efforts led by the UN Commission on Life-
Saving Commodities (“the Commission”) for Women and Children, which aims to increase
access to life-saving medicines and health supplies for the world’s most vulnerable people. As
part of the Every Woman, Every Child movement and efforts to meet the health-related
Millennium Development Goals and beyond, the Commission leads efforts to reduce barriers
that block access to essential health commodities. As part of the working group on Supply and
Awareness, the development of this paper was spearheaded by the subgroup working on the
documentation of promising practices in supply chain management.
The following individuals participated in the development of this paper:
Mohammed Abdullah, SIAPS
Emily Bancroft, VillageReach
Kyle Duarte, MSH
Michael Edwards, JSI
Mila Gorokhovich, CHAI
Andrew Inglis, JSI
Sarah Jackson, VillageReach
Mohammad Kibria, SIAPS
John Miller, PATH
Jason Pickering
Jonathan Payne, mHealth Alliance
Naomi Printz, JSI
Johan Sæbø, University of Oslo/DHIS 2
Aliya Walji
Randy Wilson, MSH
Beth Yeager, SIAPS
Recommended Citation
Systems for Improved Access to Pharmaceuticals and Services (SIAPS) Program.
2014. Considerations for the Integration of HMIS and LMIS. Arlington, VA: Management
Sciences for Health.
4. 1
INTRODUCTION
In many countries and contexts, health management information systems (HMISs) and logistics
management information systems (LMISs) and their data are managed separately. They are often
housed in separate organizations or management hierarchies. Even if data collection at the
community or facility level is compiled on one form and handled by one person for both logistics
and service delivery information, service delivery program managers often do not have access to
aggregate logistics data, reports, and
statistics. Likewise, logisticians do not
have access to aggregate service
delivery data, reports, and statistics.
As a result of these silos, decision
makers do not have all the data they
need to effectively understand
performance of their areas. Accurate
forecasts for commodities often cannot
be completed by logisticians and
forecasting teams without reliable
access to service delivery data from an
HMIS. Similarly, service delivery
managers struggle with understanding
the root causes for patterns seen in
service delivery. Overburdened health
workers are forced to collect duplicate
data to try to close the information gap
that decision makers face on both sides.
Integrating these systems or routinely
linking the data for analysis by decision
makers has been proposed as a solution
to many of these challenges. Therefore,
the objective of this subgroup working
on the documentation of best practices
in supply chain management was to review cases where HMIS and LMIS data have been
combined on an ad hoc basis or routinely linked and to determine the benefits that can come
from such linking or integration of data, as well as challenges to achieving such integration.
For the purpose of this paper, integration and linking of data denote being able to report on
HMIS and LMIS data side by side, over the same time horizon, to compare and use data from
both systems, giving LMIS and HMIS managers access to both data sets together for decision
making and analysis.
We have identified three primary ways that LMIS and HMIS data can be linked:
Definitions
A logistics management information system (LMIS)
is an information system that is used to collect,
organize, and present logistics data gathered from all
levels of the health system. An LMIS collects data about
health products, such as quantities dispensed, stock on
hand, losses, and adjustments. An LMIS enables
logisticians to collect the data needed to make informed
decisions that will ultimately improve product availability
and customer service. One immediate decision that is
made based on logistics data is the quantities of
products that should be resupplied to health facilities.1
A health management information system (HMIS)
collects and reports program information, such as
incidence of disease, client/patient information, and health
services rendered. HMIS data can be used to determine
disease patterns or to track health services use, as well as
to monitor and evaluate health service delivery.2
1
USAID | DELIVER PROJECT, Task Order 1. 2011. The Logistics
Handbook: A Practical Guide for the Supply Chain Management of
Health Commodities. 2nd ed. Arlington, VA: USAID | DELIVER
PROJECT, Task Order 1.
2
World Health Organization Regional Office for the Western Pacific.
2004. Developing Health Management Information Systems: A
Practical Guide for Developing Countries. World Health Organization
2004. Manila, Philippines: World Health Organization.
http://www.wpro.who.int/publications/docs/Health_manage.pdf.
5. 2
1. Ad hoc comparison of data: Gathering data from both the LMIS and HMIS
independently at a single point in time and manually comparing or linking the data for
comparison and analysis
2. Capturing LMIS and HMIS data in one system: Either creating a single system that
acts as both an HMIS and an LMIS or capturing a subset of data from one system in the
other
3. Electronic integration of separate HMIS and LMIS: Two separate, independent HMIS
and LMIS systems that are integrated externally so that relevant data from each system is
available to users of both systems
In conducting interviews to prepare this report, we determined that although substantial interest
exists in linking LMIS and HMIS data, very few examples are in place where countries are
successfully implementing links of the three types mentioned. Therefore, the considerations
outlined in this report are based on the expertise of the interviewees rather than specific country
examples.
6. 3
BENEFITS OF INTEGRATING HMIS AND LMIS DATA
Individuals working in both logistics and health service delivery have identified several benefits of
linking HMIS and LMIS data. Beyond improving logistics systems and service delivery, validating
data, reducing data collection burdens and data duplication, improving monitoring and evaluation,
and enhancing communication have also been cited as benefits of integrating the two systems.
Improving the Logistics System
Routinely linking LMIS and HMIS data and providing easy correlation and analysis of the
combined aggregated data can be useful in supporting functions of the logistics system in a
number of ways, including quantification, disease surveillance, and planning.
Quantification
“Quantification is a critical supply chain management activity that, once the outputs have been
produced as a result of the exercise, should drive an iterative process of reviewing and updating
quantification data and assumptions, and recalculating the total commodity requirements and costs
to reflect actual service delivery and consumption of commodities, as well as changes in program
policies and plans over time. The results of quantification should be reviewed and updated at least
every six months, and more frequently for rapidly growing or changing programs.”1
Linkages improve the quantification process by providing up-to-date, on-demand service delivery
and disease prevalence data alongside consumption data to support quantification exercises on a
regular basis throughout the year. Particularly for new programs, where not much historical
consumption data are available, service delivery and morbidity data are essential in combination
with consumption data to effectively forecast supply needs. The 13 commodities identified by the
Commission are a good example of a case in which service delivery data in combination with
consumption data are essential in the quantification process, because the commodities are currently
underused and consumption data alone are not sufficient for accurate quantification.
Overall, routine linking of HMIS and LMIS data enables quantification exercises to be
performed more frequently than the typical annual process.
Disease Surveillance
In cases in which timely disease surveillance data exist in the HMIS, linking this information
with the logistics system can improve responsiveness of the logistics system to disease
outbreaks. For example, disease surveillance data can help drive vaccine delivery to where the
need is highest in outbreak situations.
1
USAID | DELIVER PROJECT, Task Order 1. 2008. Quantification of Health Commodities: A Guide to
Forecasting and Supply Planning for Procurement. Arlington, VA: USAID | DELIVER PROJECT, Task Order 1, p.
3.
7. 4
Because timely disease surveillance data are not always readily available, historical morbidity data
in an HMIS can be used to plan for seasonal variability and disease trends in supply planning.
Linking such data to an LMIS can help ensure that the logistics system is responsive when
demands for medicines and commodities are higher. For instance, malaria outbreaks are often
seasonal. Historical malaria case data from the HMIS can be used to determine trends in seasonal
variability of malaria transmission and effectively plan for distribution of rapid diagnostic tests and
treatment. Taking seasonality into account on the larger, national scale can help ensure that
appropriate shipment quantities arrive at the right time, so that countries are not overstocked when
demand is low (e.g., dry season) and understocked when demand is high (e.g., rainy season).
Planning
Linking HMIS and LMIS data can also help logisticians effectively identify mismatches between
availability and distribution of commodities. In the case that facilities are experiencing regular
stock-outs, service delivery data can be used to more accurately plan for supply needs beyond the
typical consumption data that are available in an LMIS. For example, if HMIS data show low rates
of immunization in the community, linking this knowledge with stock information from the LMIS
can help identify whether such rates are caused by stock-outs and issues in the logistics system or by
an issue that is unrelated to the logistics system. Furthermore, when the LMIS includes days out of
stock, this information can be translated into cases not served by comparing it to HMIS case data.
HMIS data linked to the logistics system can also help identify cases where usage is falling much
lower than forecasted levels, resulting in oversupply. The logistics system can identify the
oversupply, but linking it to the HMIS can help identify whether the oversupply is caused by
lower-than-expected service delivery numbers or lack of adherence to treatment protocols.
Similarly, having service delivery data available alongside logistics data can help identify issues
of leakage (the loss, theft, or diversion of public health commodities from their established
distribution channels or beneficiaries). If consumption data are far exceeding service delivery
data, reports linking the two metrics could easily flag potential ratios indicating leakage so they
can be investigated more fully and any issues can be addressed.
Improving Service Delivery
Just as routinely making HMIS data available to logistics managers in a way that allows them to
easily correlate it with LMIS data can improve the logistics system, making LMIS data routinely
available with HMIS data to managers responsible for service delivery at all levels of the
hierarchy can help improve service delivery.
The most direct and obvious way that LMIS data can be used to improve service delivery is to help
measure adherence to treatment guidelines and standard operating procedures by service providers.
One reason that consumption data may not correlate as expected with service delivery data is
issues relating to adherence to treatment protocols. For example, as the USAID | DELIVER
PROJECT found when comparing malaria program HMIS and LMIS data in Zambia, one of the
reasons that consumption data did not match case data may have been a lack of adherence to the
8. 5
guideline that every suspected malaria case needed to be confirmed by a rapid diagnostic test or
microscopy before providing treatment with artemisinin-based combination therapy.2
Validating Data
The most immediate and obvious benefit of linking LMIS and HMIS data is for data validation
and quality checks. Because the two data sources are relatively independent but capture data that
should often correlate with each other, linking the two sources permits cross validation of the
quality of data in each system.
Though simply linking and comparing the data does not identify the reasons for any
discrepancies, it does bring to the surface potential data quality issues for further investigation.
Linking LMIS and HMIS data for data validation purposes does not necessarily require routine
linking of the data or integration of the two systems in an automated way; however, doing so
allows consistent validation of the two sources regularly to identify data quality issues as they
arise and address them immediately.
Reducing Data Collection Burden and Duplicate Data Collection
In many countries and programs, separate health management information and logistics
management information systems exist in parallel, each capturing a subset of duplicate data.
HMISs often capture logistics indicators (such as consumption and stock on hand) for some key
commodities, and similarly, LMISs sometimes capture select service delivery data.
This type of parallel and duplicate data capture of HMIS data in the LMIS and of LMIS data in the
HMIS exists in many countries and programs because of the lack of integration between systems
and organizational separation between logistics and service delivery organizations. The waste of
effort in capturing duplicate data can be eliminated if an external integration of the LMIS and
HMIS can be maintained or if data can routinely and easily be linked for reporting purposes.
In cases where HMIS data are collected in the LMIS and vice versa, the duplicate data collection
can be eliminated in favor of integrating the systems or linking the data at the national level,
allowing decision makers across the health system to analyze both LMIS and HMIS data as
needed, without requiring duplicate data collection in either system.
Certain practical realities that cannot be ignored have resulted in programs choosing to collect
duplicate data, such as issues of data ownership, reliability, trust, and managing risk of relying
on data from an external source of information. However, addressing these issues and working
toward routinely linking the systems and beginning to reduce duplicate data collection can
benefit the health system and the individuals responsible for data collection.
2
USAID | DELIVER PROJECT, Task Order 3. 2011. Digging into Malaria Data: Comparing HMIS and LMIS
Data to Improve Program Management in Zambia. Arlington, Va.: USAID | DELIVER PROJECT, Task Order 3.
9. 6
Monitoring and Evaluation of Health Programs
Indicators needed for monitoring and evaluation of health programs can require data elements
from both the HMIS and LMIS. In family planning, for instance, a needed indicator for program
monitoring and evaluation is couple years protection (CYP). This indicator, which estimates the
number of couples that are protected from pregnancy using any method of contraception, is
calculated using data from both the HMIS (number of tubal ligations, vasectomies, and IUD
insertions performed) and the LMIS (quantity of condoms, birth control pills,
and spermicides that are distributed to clients).
CYP can then be used to calculate an estimate of the Contraceptive Prevalence Rate (CPR), by
dividing the calculated CYP by the estimated number of women of reproductive age, which can
be obtained from population census data. Another source for the calculation of CPR is the
Demographic and Health Survey (DHS). Although the DHS is considered the “gold standard” for
the estimation of CPR, it is only calculated for the year of the survey (usually every five years)
and is only reliable for national and broad regional estimates (regional/provincial estimates, not
district or below). CPR can be estimated through the use of CYP and census information on an
annual basis and at more detailed levels in the health system (district level and below). Thus, for
monitoring and evaluation, data from these four sources (HMIS, LMIS, DHS, and census) should
be linked.3
Enhancing Communication between Service Delivery Program Managers and Supply
Chain Managers
As indicated earlier, in many countries, staff who manage service delivery data and logistics data
are separated from the facility level all the way up the supply chain to the central level. Routinely
linking HMIS and LMIS data and the analysis that comes from the linked data would not only
enable managers on both sides to understand and improve the functions they are responsible for,
it may also enhance the communication across organizational boundaries. To properly analyze
and interpret the linked data, service delivery and supply chain program managers would need to
work together regularly to fully understand the situation that the data represent.
3
Inglis, Andrew. 2013. Getting products to people: The impact of contraceptive supply on use. Presentation at the
International Family Planning Conference, Addis Ababa, Ethiopia, November.
10. 7
CHALLENGES OF LINKING HMIS AND LMIS DATA
Individuals working in logistics and health service delivery have also identified challenges
involved in linking HMIS and LMIS data. These challenges include adjusting organizational
structures to accommodate linkages, data quality issues, and technical challenges.
Organizational Challenges
The most consistently cited challenges from both HMIS and LMIS managers when discussing
the topic of integrating the two systems were related to organizational structure. The issue was
identified at the country-level health system and at the international level with donor
organizations and international nongovernmental organizations (NGOs).
In many countries, a distinct organizational separation exists between logistics and service
delivery groups. The two groups operate independently from the national level all the way down
to the service delivery level. As a result, very little data is shared and coordination across
organizational boundaries to begin planning an integration effort across systems is challenging.
Below the surface, deeper issues of data ownership and exposing data quality issues may also
exist, creating additional barriers to collaboration beyond the previously mentioned challenges.
The separation between logisticians and service delivery program managers in ministries of
health around the world is further reinforced by donors and global health NGOs. Donor funding
and technical assistance from international NGOs often follows a similar pattern of segregation,
with entirely separate funding streams going toward logistics and service delivery programs,
very little coordination and collaboration between programs, or minimal commitment to
integration of data and management information systems between the two groups.
Without reference implementations that demonstrate actual versus theoretical benefits,
convincing donors and senior government leadership to work across organizational boundaries
and prioritize an effort to routinely link HMIS and LMIS data is difficult.
Data Source Issues
Another key challenge to consider is related to the quality, timeliness, and reporting rates of each
system. If the data quality is suspect in either system and efforts have not been made to validate
and improve the quality of the data in each system separately, the value of linking the data
decreases substantially.
Similarly, if reporting rates for one or both systems are particularly inconsistent or low, this can
also reduce the value of linking the systems.
Finally, the largest barrier in data source issues is related to timeliness. Data quality issues are
often perceived to be a reason not to link data; however, the timeliness issue is often considered a
11. 8
stronger reason. If data from either system are not available in a timely fashion, then the value of
routine linking of the data can also be minimized, because it may not be usable for regular and
routine decision-making and analytics.
Technical Challenges
Though organizational and data quality and reliability issues can often be larger barriers to
successfully linking LMIS and HMIS data, several non-negligible technical issues may also need
to be addressed to successfully implement routine linkage of the two systems for reporting and
analysis. The primary technical challenges that exist, regardless of the actual systems used for
the HMIS and LMIS, involve ensuring that the data sets match up and can be reliably linked in a
manner that allows for comparison and correlation of the data.
Often, standards for describing the data may not be consistent between systems. For example,
domain data, such as the codes used to describe facilities or geographical regions, may not be
consistent across the two systems. To reliably link the data across systems, common standards
for domain data being used to link the system must be agreed upon and adhered to.
Aggregation of data in each system may also not be consistent. If data are aggregated using
different time frames or geographical groupings, then successfully linking and analyzing the data is
difficult. As an example, the Dedicated Logistics System for Vaccines in Mozambique has
excellent data for key logistics indicators, such as stock-outs. However, these data are collected
during site visits that do not always correlate with the monthly reporting periods for service
delivery. The snapshots for logistics indicators and aggregate service delivery data are taken at
different times, and correlating the two data sets for decision making could be problematic.
Therefore, consideration must be given to rethink and optimize reporting periods for system links.
Finally, once consistent standards for describing and aggregating the data have been agreed
upon, maintaining the external links and domain data used across systems can often pose a
challenge. Particularly in contexts where separate organizational hierarchies exist for logistics
and service delivery, determining exactly who is responsible for maintaining this link (such as
the facility list) and ensuring the ongoing reliability of the linked data can be challenging.
12. 9
RECOMMENDATIONS FOR ROUTINELY LINKING HMIS AND LMIS DATA
The benefits that can come from working through the identified challenges to successfully link
the two systems might make this a valuable undertaking in many countries and programs. In this
vein, several recommendations have been made to help guide the process.
Encourage Communication across Organizational Boundaries
To build a sustainable linkage or effectively compare the data manually, trust and good
communication are needed between the groups managing the HMIS and LMIS. Many of the
potential barriers to regularly comparing the data or maintaining a sustainable linkage involve
communication and coordination issues. Logistics and health program managers should convene
regularly to discuss the linked data, iron out issues, and discuss decision-making based on the
data. A joint working group comprising LMIS and HMIS stakeholders could be created,
including both technical and programmatic staff, so that the technical and organizational aspects
of the linkage can be addressed with equal priority. To help drive a systems integration effort,
this working group can develop shared use cases and goals focused on how the end product will
not just produce more data, but rather help improve decision making in the health system.
An non-traditional method for fostering communication is a human resources role swap program
between the respective boundaries handling the LMIS and HMIS components. To avoid falling
captive to superficially collaboration, it may be wise to have organizational staff members take
on an immersive deep dive experience through formalized role swaps. This approach is an
adaption of a practice used in some private sector companies of conducting regular role swaps
between departments that are inter-linked. In effect, by allowing staff members to role sway, it
allows the organization greater potential to become immune to silo-like activities and the natural
build-up of communication barriers over time. The segregated working environment is naturally
overcome by leveraging off the human relationship developed through the immersive deep dive
experience creating potential for a bridge of trust to be created.
Create Data-Sharing Agreements
Creating data-sharing agreements early on can provide a concrete place to start the collaboration
process when working across organizational boundaries. Not only will it help encourage
communication between the two groups, it can also help build trust and address concerns each
party might have about making their data available externally.
Agree upon Data Standards
Ensure stakeholders for both logistics management information and health management
information systems agree upon standards for key domain data that are required for comparing
and linking the two data sources, such as facility identifiers and organizational hierarchy. Data
13. 10
dictionaries describing the metrics that are being shared should also be discussed and mutually
understood.
Test Linkage of Data
Try manually comparing or linking the two data sources for a limited data set (time frame and set
of facilities). This “proof of concept” will help identify and uncover potential issues that may
arise when the linking of the data sets is automated. Conducting a proof of concept early on can
demonstrate the benefits of potential linkage to stakeholders quickly.
Resolve Data Quality Issues
Identify and focus on resolving issues with data quality, timeliness, and reporting rates for the
HMIS and LMIS. Such issues in either system reduce the value of the investment put into
linking/integrating the two systems. However, also recognize that improving data quality is a
continuous process and the absence of near-perfect data quality should not prevent moving
forward with regularly comparing the data or linking the systems in an automated way. Rather,
the linking/integration process should be used as an opportunity to continue improving data
quality and an additional means of identifying data quality issues.
Evaluate Technology Options
First, evaluate whether linking the data in an automated way is appropriate for the context.
Although there is undoubtedly value in regularly comparing the data from the two systems, cases
may exist where routinely linking the systems in an automated way (e.g., system integration) will
provide a high return on investment and cases where it will not. In cases where automated
comparison it is not appropriate or feasible, the preceding recommendations will still help with
regular communication and coordination to compare data from the two systems to yield some of
the benefits discussed in this paper.
For cases where an automated solution is appropriate, considerations should be made on how to
best link the two data sources based on the technology used for each system. The assessment
should examine the current operational context and the long-term strategic goals of each system.
Two methods for linking the systems include the (a) integration of the two systems and (b)
collecting all LMIS and HMIS data in one system. Depending on the context, one option may be
more appropriate than the other.