A Comparative Study on Machine Learning Models to Classify Diseases Based on Patient Behaviour and Habits
Elham Musaaed, Nabil Hewahi, Abdulla Alasaadi

TL;DR
This paper compares six supervised machine learning models to classify various diseases based on patient behavior and habits, aiming to identify key risk factors and develop a web-based prediction tool.
Contribution
It provides a comprehensive evaluation of ML algorithms for disease classification using patient-related factors and introduces a web application for disease prediction.
Findings
Identifies the most accurate ML classifier for disease prediction
Analyzes correlations between patient factors and diseases
Develops a web-based disease prediction tool
Abstract
In recent years, ML algorithms have been shown to be useful for predicting diseases based on health data and posed a potential application area for these algorithms such as modeling of diseases. The majority of these applications employ supervised rather than unsupervised ML algorithms. In addition, each year, the amount of data in medical science grows rapidly. Moreover, these data include clinical and Patient-Related Factors (PRF), such as height, weight, age, other physical characteristics, blood sugar, lipids, insulin, etc., all of which will change continually over time. Analysis of historical data can help identify disease risk factors and their interactions, which is useful for disease diagnosis and prediction. This wealth of valuable information in these data will help doctors diagnose accurately and people can become more aware of the risk factors and key indicators to act…
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Taxonomy
TopicsArtificial Intelligence in Healthcare
MethodsAttentive Walk-Aggregating Graph Neural Network
