Skip to content

CBICA/NiChart_Project

Repository files navigation

NiChart: Neuro-imaging Chart

NiChart is a comprehensive framework designed to revolutionize neuroimaging research. It offers large-scale neuroimaging capabilities, sophisticated analysis methods, and user-friendly tools, all seamlessly integrated into a local installation version and the AWS Cloud.

Components

  1. Image Processing: Utilizes tools like DLMUSE, fMRIPrep XCEPengine, and QSIPrep for effective image analytics.
  2. Reference Data Curation: Houses ISTAGING, 70000 Scans, and 14 individual studies to provide curated reference data.
  3. Data Harmonization: Employs neuroharmonize and Combat for ensuring consistent data standards.
  4. Machine Learning Models: Provides Supervised, Semi-supervised, and DL Models for advanced neuroimaging analysis including SpareScore.
  5. Data Visualization: Features like Centile curves, direct image linking, and reference values for comprehensive data visualization.
  6. Deployment: Supports open-source Github components and Docker container compatibility deployed in a local environment & AWS Cloud.

System Requirements

For recommended system configuration, please refer to: nnUNet hardware requirements.

Installation Instructions

  1. Mamba installation Mamba Installation Guide (Official)

    Example (Linux x86):

    wget https://github.com/conda-forge/miniforge/releases/latest/download/Mambaforge-Linux-x86_64.sh
    
    bash Mambaforge-Linux-x86_64.sh
    mamba create -c conda-forge -c bioconda -n NCP_env python=3.12 snakemake
    mamba activate NCP_env
  2. Manual installation

    git clone https://github.com/CBICA/NiChart_Project.git
    pip install -r requirements.txt

Run NiChart Locally (GUI)

cd src/viewer/
streamlit run NiChartProject.py

The app will start in your localhost.

Quick Links

NiChart Website & Cloud Docker AIBIL Research YouTube

Twitter

© 2024 CBICA. All Rights Reserved.

About

Neuro Imaging Chart of AI-based Imaging Biomarkers

Resources

License

Stars

Watchers

Forks

Packages

No packages published

Languages