MediFit: An AI-Driven System for Continuous Physical Health Monitoring and Early Disease Risk Prediction
Dhairya Korgaonkar1, Maaz Khan2, Aryan Shedge3, Riya Ankush4, Samina Siddiquie5
1Dhairya Korgaonkar, Artificial Intelligence and Machine Learning, Fr. Agnel Polytechnic 2Maaz Khan, Artificial Intelligence and Machine Learning, Fr. Agnel Polytechnic 3Aryan Shedge, Artificial Intelligence and Machine Learning, Fr. Agnel Polytechnic 4Riya Ankush, Artificial Intelligence and Machine Learning, Fr. Agnel Polytechnic
5Samina Siddiquie, Artificial Intelligence and Machine Learning, Fr. Agnel Polytechnic
Abstract - Chronic illnesses such as diabetes, cardiovascular disease, obesity, hypertension, and cancer remain leading causes of global mortality. These conditions often develop gradually due to unhealthy lifestyles, genetic predisposition, and irregular health monitoring, resulting in delayed diagnosis and limited preventive intervention. This study presents MediFit, an AI-based physical health monitoring and disease prediction system designed to enable early risk detection through continuous, non-invasive tracking.
MediFit integrates real-time physiological parameters— including heart rate, sleep patterns, activity levels, and dietary habits—within a unified mobile platform. Using machine learning algorithms and predictive analytics, the system identifies subtle deviations from individual baseline patterns and correlates them with potential disease risks. By analyzing behavioral trends and historical health data, MediFit generates personalized alerts and preventive recommendations tailored to each user’s lifestyle.
Unlike conventional health applications that focus primarily on step counting or manual tracking, MediFit applies adaptive learning models to detect early warning signs before clinical symptoms become apparent. The framework emphasizes proactive healthcare by shifting from reactive treatment to preventive risk management. Through continuous pattern recognition and intelligent feedback, the proposed system enhances early detection, promotes healthier decision-making, and supports accessible, data-driven preventive healthcare solutions.
Key Words: Artificial Intelligence (AI), Physical Health Monitoring, Disease Prediction, Machine Learning, Predictive Analytics, Preventive Healthcare, Early Disease Detection, Chronic Disease Risk Assessment, Real-Time Health Tracking, Personalized Health Monitoring, Wearable Health Data, Digital Healthcare System, Lifestyle-Based Risk Analysis, Health Data Analytics, Smart Mobile Health Application.