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A personalized treatment optimization platform leveraging AI to recommend tailored patient treatment options. It analyzes medical history, genetics, and lifestyle data to reduce adverse effects, while extracting insights from PDFs to create a unified Patient Repository with confidence-rated analyses.

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Health Weave

Health Weave is an AI-powered treatment optimization platform that delivers personalized healthcare recommendations. Built for the Synthack Hackathon using Next.js, JavaScript, MongoDB, and Gemini AI, it intelligently predicts individual responses to treatments by analyzing patient medical history, genetics, and lifestyle data.

🧬 Personalized Treatment Optimization

👤 Patient Profiling

  • Aggregates medical history, genetic markers, and lifestyle factors.
  • Builds dynamic profiles in a centralized Patient Repository.

🧠 AI Treatment Prediction

  • Uses LLM-backed analysis to assess real-time data.
  • Predicts treatment efficacy and side effect likelihood per patient.
  • Parses data from medical PDFs to reduce manual entry.

📈 Outcome Optimization

  • Continuously updates recommendations based on patient progress.
  • Delivers confidence-rated predictions for better decision-making.
  • Live treatment dashboard to explore, adjust, and track changes.

🛠️ Tech Stack

Next.js JavaScript MongoDB Gemini API Hackathon


💻 Explore the Platform

  • 🔍 Explore Treatment Dashboard
  • 🔐 Sign In / Create Account
  • 👨‍⚕️ AI-Driven Recommendations

📸 Screenshots

Dashboard 1 Dashboard 2 Dashboard 3 Dashboard 4

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A personalized treatment optimization platform leveraging AI to recommend tailored patient treatment options. It analyzes medical history, genetics, and lifestyle data to reduce adverse effects, while extracting insights from PDFs to create a unified Patient Repository with confidence-rated analyses.

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