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A plugin for batch processing of confocal and whole-slide microscopy images of biological tissues

Project description

napari-tmidas

License BSD-3 PyPI Python Version Downloads DOI tests

AI-powered batch processing for microscopy images

Transform, analyze, and quantify microscopy data at scale with deep learning - from file conversion to segmentation, tracking, and analysis.

✨ Key Features

🤖 5 AI Methods Built-In

  • Virtual staining (VisCy) • Denoising (CAREamics) • Spot detection (Spotiflow) • Segmentation (Cellpose) • Tracking (Trackastra)
  • Auto-install in isolated environments • No dependency conflicts • GPU acceleration

🔄 Universal File Conversion

  • Convert LIF, ND2, CZI, NDPI, Acquifer → TIFF or OME-Zarr
  • Preserve spatial metadata automatically

Batch Processing

  • Process entire folders with one click • 40+ processing functions • Progress tracking & quality control

📊 Complete Analysis Pipeline

  • Segmentation → Tracking → Quantification → Colocalization

🚀 Quick Start

# Install napari and the plugin
mamba create -y -n napari-tmidas -c conda-forge python=3.11
mamba activate napari-tmidas
pip install "napari[all]"
pip install napari-tmidas

# Launch napari
napari

Then find napari-tmidas in the Plugins menu. Watch video tutorials →

💡 Tip: AI methods auto-install their dependencies on first use - no manual setup required!

📖 Documentation

AI-Powered Methods

Method Description Documentation
🎨 VisCy Virtual staining from phase/DIC Guide
🔧 CAREamics Noise2Void/CARE denoising Guide
🎯 Spotiflow Spot/puncta detection Guide
🔬 Cellpose Cell/nucleus segmentation Guide
📈 Trackastra Cell tracking over time Guide

Core Workflows

Advanced Features

💻 Installation

Step 1: Install napari

mamba create -y -n napari-tmidas -c conda-forge python=3.11
mamba activate napari-tmidas
python -m pip install "napari[all]"

Step 2: Install napari-tmidas

Your Needs Command
Just process & convert images pip install napari-tmidas
Need AI features (SAM2, Cellpose, Spotiflow, etc.) pip install 'napari-tmidas[deep-learning]'
Want the latest dev features pip install git+https://github.com/MercaderLabAnatomy/napari-tmidas.git

Recommended for most users: pip install 'napari-tmidas[deep-learning]'

🖼️ Screenshots

File Conversion Widget File Conversion

Convert proprietary formats to open standards with metadata preservation.

Batch Processing Interface Batch Processing

Select files → Choose processing function → Run on entire dataset.

Label Inspection Label Inspection

Inspect and manually correct segmentation results.

SAM2 Crop Anything Crop Anything

Interactive object selection and cropping with SAM2.

🤝 Contributing

Contributions are welcome! Please ensure tests pass before submitting PRs:

pip install tox
tox

📄 License

BSD-3 License - see LICENSE for details.

🐛 Issues

Found a bug or have a feature request? Open an issue

🙏 Acknowledgments

Built with napari and powered by:


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