IntelliDoctor - AI based Medical Assistant

IntelliDoctor is an Artificial Intelligence (AI) based personal medical assistant. In an attempt to provide smart healthcare and making it more accessible, this interactive application analyzes symptoms to diagnose, predict medical conditions, generates treatments and suggestions based on the inputs provided by the user. In addition to that, the app tracks user's health activities like their step counts, sleep tracking, heart rate sensing and other parameters and displays users their periodic health reports. It incorporates various fitness activities tracked and other factors like their age, gender, location, past medical records, and calories intake to perform a more accurate analysis. It performs accurate comprehensive diagnosis, which also serves as a pre-screening device for Doctors.

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