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AI Health Symptom Checker

Selvarani V, M. Perachiselvi

Abstract


The AI Health Symptom Checker is an intelligent system designed to help users identify possible diseases based on their symptoms. It uses Artificial Intelligence (AI) and Machine Learning (ML) techniques to analyze user input and match it with known medical conditions. Users can enter their symptoms in text form or upload related images for better diagnosis support. The system processes the data using trained models and predicts the most probable illness. It aims to provide quick, reliable, and accessible health guidance for early detection. This project reduces the need for initial doctor visits for minor issues. It acts as a virtual health assistant, available anytime and anywhere. The system also suggests possible treatments or next medical steps. Overall, this project promotes AI-driven healthcare awareness and self-diagnosis assistance. It contributes to the development of smarter, more responsive digital health solutions.


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References


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