MyoQuant🔬 is a command-line tool to automatically quantify pathological features in muscle fiber histology images.
It is built using CellPose, Stardist, custom neural-network models and image analysis techniques to automatically analyze myopathy histology images.
Currently MyoQuant is capable of quantifying centralization of nuclei in muscle fiber with HE staining, anomaly in the mitochondria distribution in muscle fibers with SDH staining and the number of type 1 muscle fiber vs type 2 muscle fiber with ATP staining.
An online demo with a web interface is available at https://huggingface.co/spaces/corentinm7/MyoQuant. This project is free and open-source under the AGPL license, feel free to fork and contribute to the development.
MyoQuant package is officially available on PyPi (pip) repository. https://pypi.org/project/myoquant/
Using pip, you can simply install MyoQuant in a python environment with a simple: pip install myoquant
I recommend using UV for python environment management. See UV documentation.
- Clone this repository using
git clone https://github.com/lambda-science/MyoQuant.git
- Create a virtual environment by using
uv sync
- Run Myoquant with
uv run myoquant --help
To use the command-line tool, first activate your venv in which MyoQuant is installed: source .venv/bin/activate
or simply install the package using UV.
Then you can perform SDH or HE analysis. You can use the command myoquant --help
or uv run myoquant --help
to list available commands.
💡Full command documentation is available here: CLI Documentation
- For SDH Image Analysis the command is:
myoquant sdh-analysis IMAGE_PATH
Don't forget to runmyoquant sdh-analysis --help
for information about options. - For HE Image Analysis the command is:
myoquant he-analysis IMAGE_PATH
Don't forget to runmyoquant he-analysis --help
for information about options. - For ATP Image Analysis the command is:
myoquant atp-analysis IMAGE_PATH
Don't forget to runmyoquant atp-analysis --help
for information about options.
_If you're running into an issue such as myoquant: command not found
please check if you activated your virtual environment with the package installed. And also you can try to run it with the full command: python -m myoquant sdh-analysis --help
or uv run myoquant sdh-analysis --help
Creator and Maintainer: Corentin Meyer, PhD in Biomedical AI [email protected]
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For HE Staining analysis, you can download this sample image: HERE
For SDH Staining analysis, you can download this sample image: HERE
For ATP Staining analysis, you can download this sample image: HERE
- Example of successful SDH analysis output with:
myoquant sdh-analysis sample_sdh.jpg
2. Example of HE analysis:
myoquant he-analysis sample_he.jpg
- Example of ATP analysis with:
myoquan atp-analysis sample_atp.jpg
In a effort to push for open-science, MyoQuant SDH dataset and model and availiable on HuggingFace🤗
MyoQuant is born within the collaboration between the CSTB Team @ ICube led by Julie D. Thompson, the Morphological Unit of the Institute of Myology of Paris led by Teresinha Evangelista, the imagery platform MyoImage of Center of Research in Myology led by Bruno Cadot, the photonic microscopy platform of the IGMBC led by Bertrand Vernay and the Pathophysiology of neuromuscular diseases team @ IGBMC led by Jocelyn Laporte