MedPredictor: Enhanced Multi-Disease Prediction System
DOI:
https://doi.org/10.48001/978-81-966500-7-0-10Keywords:
Multiple disease, Breast cancer, Kidney, Diabetes, Heart disease, Liver disease, Machine learningAbstract
MedPredictor is an advance multi- disease prediction system that leverages machine learning to analyze patient data for the early detection and prevention of breast cancer, kidney disease, diabetes, heart disease, and liver disease. By integrating diverse data sources, including patient history, clinical tests, and medical imaging, MedPredictor identifies intricate patterns and correlations that may not be evident through traditional diagnostic methods. This innovative approach facilitates timely interventions and personalized treatment plans, ultimately enhancing patient outcomes and reducing overall healthcare costs. MedPredictor represents a significant advancement in medical diagnostics, offering a comprehensive,efficient, and reliable tool for multi-disease prediction.
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