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NeuroCure is a cutting-edge project focused on the detection and classification of brain tumors, leveraging the power of deep learning for advanced medical image analysis. Developed using TensorFlow and a variety of custom models, this initiative aims to deliver accurate and efficient identification of brain tumors from MRI scans.

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NeuroCure

NeuroCure Logo

Overview

NeuroCure1 is an innovative brain tumor detection and classification project that utilizes advanced deep learning techniques for medical image analysis. By leveraging TensorFlow and custom models, NeuroCure aims to provide accurate and efficient identification of brain tumors from MRI scans, assisting healthcare professionals in diagnosis and treatment.

Key Features

  • Multi-Model Ensemble: Combines multiple models for improved accuracy in detection and classification.
  • Segmentation: Efficiently segments tumors from MRI images for better analysis and visualization.
  • User-Friendly Interface: Built with Next.js and Tailwind CSS for a seamless user experience in uploading images and receiving predictions.
  • Deployment Ready: Easily deployable on Google Cloud, ensuring scalability and accessibility.

Project Structure

This project is organized into the following structure:


├── data/
| │── README.md
│ ├── sample/
│    ├── sample1.jpg 
|    ├── sample2.jpg  
|    ├── sample3.jpg   
|    └── sample4.jpg 
| 
├── models/
| ├── Readme.md   
│ └── load_and_save_models.py #Loads models from google cloud and saves them to models/models dir
├── src/
│ ├── config.py
│ ├── preprocess.py
│ ├── inference.py
│ └── utils.py
├── notebooks/
│ ├── classification_resnet50.ipynb      # ResNet50 classification model training
│ ├── classification_custom_model.ipynb  # Custom classification model training
│ ├── meta_model_training.ipynb          # Meta-model (ensemble) training
│ ├── segmentation_model.ipynb           # Segmentation model training
│ ├── model_architecture/                # Folder to store model architecture notebook
│    └── model_architecture_overview.ipynb  # Model architecture overview
| 
├── frontend/
| ├── app/
| │   ├── (site)/
| │   │   ├── page.jsx                 # Home page of the app
| │   │   ├── about/page.jsx           # About page
| │   │   ├── contact/page.jsx         # Contact page
| |   |   ├── layout.js                #layout 
| │   |   └── globals.css                  # Global CSS file
| │   └── api/
| │       └── send_email/route.ts       # API route for handling email requests
| │
| ├── components/
| │   ├── Navbar.jsx                   # Navigation bar component
| │   ├── Footer.jsx                   # Footer component
| │   ├── ui/                          # UI components
| │   ├── APIRequest.jsx               # UI components
| │   ├── ImageUploader.jsx            # UI components
| │   ├── Loader.jsx                   # UI components
| │   ├── Email_template.jsx           # UI components
| │   └── InferenceForm.jsx            # Form to upload images for inference
| │
| │
| ├── public/
| │   └── logo.png                     # Static assets (e.g., images, logos)
| │
| ├── tailwind.config.js               # Tailwind CSS configuration file
| ├── postcss.config.js                # PostCSS configuration file
| ├── next.config.js                   # Next.js configuration file
| ├── package.json                     # Node.js dependencies
| └── README.md                        # Project documentation
├── cloud/
│ └── gcp_deploy.sh
├── Dockerfile
├── app.py
├── requirements.txt
├── package.json
└── README.md

Getting Started

Prerequisites

Before you begin, ensure you have met the following requirements:

  • Python: Version 3.x installed on your machine.
  • Node.js: Make sure you have Node.js installed.
  • TensorFlow: Install TensorFlow to run the machine learning models.
  • Next.js: Used for building the frontend of the application.
  • Docker: Optional, but recommended for containerization.

Installation

  1. Clone the repository:
    git clone https://github.com/ParagGhatage/NeuroCure1.git
    cd NeuroCure1
    pip install -r requirements.txt
    cd frontend
    npm install
    python app.py
    cd frontend
    npm run dev
    
    

About

NeuroCure is a cutting-edge project focused on the detection and classification of brain tumors, leveraging the power of deep learning for advanced medical image analysis. Developed using TensorFlow and a variety of custom models, this initiative aims to deliver accurate and efficient identification of brain tumors from MRI scans.

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