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Personalized Allergy care.pptx
1. Personalized Allergy care
-ab tata bye to allergy
Kya aap bhi hai allergy sai pareshan, kya aap bhi
nahi kar pate concentrate ,focus, manchaha kam ,
bar- bar sneezing sai ho chuke hai pareshan,nahi
lgta kisi doctor ki dawa,lgegi bhi kese kyuki dawa jo
kare permanent secure nahi hui abhi discover..
2. Lets know the problem
"Millionsof people worldwide suffer from
allergiesthat disrupttheir daily lives.
Existingsolutions often lackpersonalized
insightsand real-timeinformation, leaving
individualsstrugglingto manage
symptoms and make informed decisions
If it continues like this really cause a
lot problem and cause various
disease related to lungs like asthma
etc
There are various type of allergies
but in most cases and the danger
allergy is allergicrhinitis…
3. Main reasons of allergies..
Allergies occur when the immune system
reacts excessively to substances that are
usually harmless. These substances, called
allergens, trigger an immune response that
leads to symptoms such as sneezing, itching,
watery eyes, or more severe reactions.
Common allergens include pollen, dust
mites, pet dander, certain foods, insect
stings, and certain medications.
The immune response involves the release of
histamines and other chemicals, causing the
familiar allergic symptoms. Allergies can be
genetic, meaning they can run in families,
and environmental factors like pollution,
lifestyle changes, and exposure to allergens
can contribute.
4. Solution
I will create a system that takes into account
of each individual’s specific allergies,profile,
medical history, location,diets and lifestyle
preferences..
Real time personalized alerts when allergen
levels are high..
It will tell you upcoming weather change and
allergy causes substances and saves your
whole day and energy..
It will also tell you or predict about your
immunity condition based on sleep pattern,
activity-levels, stress levels ..
And it will get more accurate with time and
can be your personal doctor too if simulate
with chatbot which knows your personalized
insights..
5. Let’s know the allergy care more deeper.
Data Collection:
Pollen Count Data: Pollen count data is collectedfrom monitoring stations placed
in various locations. Thesestations use specialized instruments to capture pollen
particles in the air.
WeatherData: Weather conditions such as temperature, humidity, wind speed, and
precipitation can influence pollen dispersal. Weatherdata is often integratedinto
the app to provide accurate forecasts.
DatabaseManagement:
Pollen Database:A databasestores historical
pollen count data for differentpollen types and
locations. This data is used to provide users with
trends and forecasts.
Geolocation Services:
GPS Integration: The app uses GPS technology to
determinetheuser's current location. This information
is used to provide personalized andlocalizedpollen
count information.
App Development:
Mobile App Frameworks: The app is developedusing
mobile app frameworks such as React Native,
Flutter.These frameworks enablecross-platform
compatibility.
UserInterface (UI) Design: Design elementsanduser
interface are created to ensurethe app is user-
friendlyandvisually appealing.
6. Execution:
APIIntegration:
Data Sources: Theapp integrates withexternal APIs that provide
real-time pollen count and weather data. TheseAPIs allow the
app to fetchand displaythe most up-to-date information.
Algorithm and Forecasting:
Pollen Forecasting: Algorithms areused to predictpollen levels
based on historical data,weather conditions, and pollen
dispersalpatterns. Machinelearning techniques might also be
employed for more accurateforecasts.
Notifications and Alerts:
PushNotifications: Theapp usespushnotification servicesto
send alerts to userswhen pollen levels arehighor when
personalized thresholds aremet.
Analytics and Usage Tracking:
Analytics Tools: These tools help app developers gather information about how
users interact with the app, which features are popular, and areas for
improvement.
7. Data Collection: The Main Challenge
Mobile Crowdsourcing for Allergy Tracking:
Mobile crowdsourcing involves using the collective efforts of a large number of individuals (the
crowd) to contribute data, information, or content through their mobile devices. In the context of an
allergy tracking app, mobile crowdsourcing can be used to collect real-time data about pollen
levels and allergen presence in different locations. Here's how it could work:
User Participation: Users of the allergy tracking app become active participants in the data
collection process. They use the app to contribute data based on their observations of pollen
levels and allergen presence in their surroundings.
Image Submission: Users can take pictures of pollen samples using their smartphone cameras.
These pictures could capture pollen-laden surfaces, such as outdoor tables, cars, or other
surfaces where pollen has settled.
Data Annotation: Users annotate the images with relevant information, such as the date, time,
location, and a brief description of the environment (e.g., park, garden, urban area).
8. MachineLearning Analysis:The app could use machine learningalgorithms to analyze the submitted
images. These algorithms could be trained to recognize pollen particlesin various settingsand conditions.
Data Verification:The app could implementa verificationmechanism, where images and data are reviewed
by multipleusers or experts to ensure accuracy and reliability.
Pollen Concentration Estimation: By aggregatingand analyzingthe contributed data, the app can estimate
pollen concentrations in differentareas over time.
IN causerelated to food allergy , the main this device track the items used and also
identifythe quantityof allergenitem and aware the user..
9. Let’s time more deeper how image will give datapoints and
classify for different allergen..
The raw image captured by the user might have variations in lighting, contrast, and noise. Preprocessing aims to
improve the quality of the image for further analysis. Steps might include:
1.Noise Reduction: Applying filters to reduce unwanted noise and artifacts.
Contrast Enhancement: Adjusting the image's contrast to make pollen particles more distinguishable.
Normalization: Ensuring consistent lighting conditions across different images.
2. Segmentation:
Segmentation involves separating the pollen particles from the background and other elements in the image. Various
techniques can be used, such as:
Thresholding: Identifying a threshold value to separate pollen pixels from non-pollen pixels based on intensity.
Edge Detection: Detecting edges to outline the pollen particles.
3. Feature Extraction:
Feature extraction involves quantifying specific characteristics of the segmented pollen particles. These features help
differentiate between different pollen types. Features might include:
Shape: Analyzing the shape of the pollen particles, such as circularity, elongation, or symmetry.
Texture: Extracting textural information, such as graininess or roughness.
Color: Analyzing color information to differentiate pollen types with distinct colors.
adapts and improves its accuracy.
10. . Machine Learning Classification:
The extracted features are then used as input for a machine learning classifier. This classifier has been trained on a
dataset of labeled pollen images to recognize patterns and make predictions. Common classifiers include:
Support Vector Machines (SVM): SVM separates data into different categories using hyperplanes.
Convolutional Neural Networks (CNN): CNNs are deep learning models well-suited for image classification tasks.
5. Verification and Refinement:
After the classifier makes predictions, the identified pollen types are cross-referenced with a database of known
pollen types. This step helps verify the accuracy of the identification. If necessary, the system might involve user
feedback to improve accuracy over time.
6. Continuous Learning:
The machine learning model can be designed for continuous learning. This means that as more images are
processed and new pollen types are identified, the model adapts and improves its accuracy.
journey. Depending on the available resources and project goals, you might consider focusing on other essential
app features in the initial phase and gradually incorporating pollen identification capabilities as the project
progresses.
11. Conclusion
Various allergies, including
pollen allergies, can significantly
impact individuals'quality of life.
By leveragingtechnology as
users can gain real-time insights
into allergen exposure, pollen
levels, and forecasts. Coupled
with personalized
recommendations,these apps
empower users to make
informed decisionsand manage
their allergy symptoms
proactively.