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Predictive Analysis for Early Detection of Heart Disease

Overview

This project aims to leverage machine learning techniques for the early detection of heart disease, potentially saving lives through timely medical intervention. By analyzing a comprehensive dataset of heart disease risk factors, we aim to identify individuals at high risk, contributing to the broader goal of personalized medicine.

Features

  • Data Collection: Utilizing two datasets for comprehensive analysis.
  • Data Preprocessing: Ensuring data quality and suitability for machine learning models.
  • Model Training: Employing advanced machine learning models for accurate predictions.
  • User Interface: A web-based interface for data input and prediction results.
  • Database Integration: Storing user inputs and predictions for analysis and improvement.

Getting Started

To get started with this project, follow these steps:

  1. Clone the repository:
    git clone https://github.com/Sachin_Mhetre/Heart_Disease_Prediction.git
    
  2. Navigate to the project directory:
    cd Heart_Disease_Prediction
    
  3. Install dependencies (if any):
    pip install -r requirements.txt
    
  4. Run the application:
    python app.py
    

Project Structure

📦Heart
 ┣ 📂instance
 ┃ ┗ 📜database.db
 ┣ 📂static
 ┃ ┣ 📂css
 ┃ ┃ ┣ 📜login.css
 ┃ ┃ ┣ 📜start.css
 ┃ ┃ ┗ 📜style.css
 ┃ ┣ 📂script
 ┃ ┃ ┗ 📜main.js
 ┃ ┣ 📜image1.png
 ┃ ┣ 📜image2.png
 ┃ ┣ 📜image3.png
 ┃ ┣ 📜logo.png
 ┃ ┣ 📜startpageheart.png
 ┃ ┣ 📜symbiosis.png
 ┃ ┗ 📜hearts-unscreen.gif
 ┣ 📂templates
 ┃ ┣ 📜dashboard.html
 ┃ ┣ 📜home.html
 ┃ ┣ 📜login.html
 ┃ ┣ 📜register.html
 ┃ ┣ 📜start.html
 ┃ ┗ 📜user_input_data.html
 ┣ 📜app.py
 ┣ 📜trained_model.pkl
 ┗ 📜requirements.txt

Screenshots

Login Pageimage

Home PageWhatsApp Image 2024-05-04 at 10 03 45 PM

Dashboard Pageimageimage

User Input Data Pageimage

Acknowledgments

Project Walkthrough

To get a better understanding of how the project works, please watch the following video:

Project Walkthrough Video

This video provides a comprehensive walkthrough of the project, demonstrating the user interface, data input process, and the prediction results. It's designed to give you a clear understanding of how the system works and how users can interact with it.