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CIRC: A protocol layer for coordinating clinical agents across systems, specialties, and institutions. A protocol layer for deploying, coordinating, and governing autonomous AI agents in healthcare. CIRC enables clinical agents to route tasks, interoperate across systems (EHRs, claims, labs), and coordinate across specialties.
This project predicts lung cancer risks using machine learning models like Random Forest, Logistic Regression, and SVM. It analyzes patient data with features such as age, smoking habits, and symptoms. Data preprocessing, visualization, and performance evaluation ensure accurate predictions for early diagnosis.
Week 1 of my AI/ML Internship at DevelopersHub 🚀 — built a disease prediction model using patient data. Explored the UCI Cleveland dataset, handled missing values, ran EDA, and compared Logistic Regression vs Random Forest. Random Forest achieved 90.16% accuracy ✅
An AI-powered clinical assistant using Retrieval-Augmented Generation (RAG) on the MIMIC-IV DiReCT dataset. It retrieves relevant patient cases and generates diagnostic reasoning using LLMs. Built with Streamlit, Transformers, FAISS, and SentenceTransformers.
🩺 Complete Health Diagnostic Hub – A 🌐 web-based platform using 🤖 machine learning to predict potential health risks for ❤️ heart, 🩸 kidney, 🏥 liver, and 🩹 diabetes conditions.
A Python-based system to predict diabetes using Machine Learning with Support Vector Machine (SVM). Includes data preprocessing, model training, and evaluation to achieve high prediction accuracy.
This project is a healthcare AI model built using Python and scikit-learn to predict patient health risk levels (Low, Moderate, High) based on demographic, socioeconomic, and medical history data.
🩺 Complete Health Diagnostic Hub – A 🌐 web-based platform using 🤖 machine learning to predict potential health risks for ❤️ heart, 🩸 kidney, 🏥 liver, and 🩹 diabetes conditions.