DLMUSE

DLMUSE - Deep Learning MUlti-atlas region Segmentation utilizing Ensembles of registration algorithms and parameters


Keywords
deep, learning, image, segmentation, semantic, medical, analysis, nnU-Net, nnunet
License
SMPPL
Install
pip install DLMUSE==1.0.3

Documentation

DLMUSE - Deep Learning MUlti-atlas region Segmentation utilizing Ensembles of registration algorithms and parameters

Overview

DLMUSE uses a trained nnUNet model to compute the segmentation of the brain into MUSE ROIs from the nifti image of the Intra Cranial Volume (ICV - see DLICV method), oriented in LPS orientation. It produces the segmented brain, along with a .csv file of the calculated volumes of each ROI.

Installation

As a python package

pip install DLMUSE

Directly from this repository

git clone https://github.com/CBICA/DLMUSE
cd DLMUSE
pip install -e .

Installing PyTorch

Depending on your system configuration and supported CUDA version, you may need to follow the PyTorch Installation Instructions.

Usage

A pre-trained nnUNet model can be found at our hugging face account. Feel free to use it under the package's license.

From command line

DLMUSE -i "input_folder" -o "output_folder" -device cpu

For more details, please refer to

DLMUSE -h

[Windows Users] Troubleshooting model download failures

Our model download process creates several deep directory structures. If you are on Windows and your model download process fails, it may be due to Windows file path limitations.

To enable long path support in Windows 10, version 1607, and later, the registry key HKEY_LOCAL_MACHINE\SYSTEM\CurrentControlSet\Control\FileSystem LongPathsEnabled (Type: REG_DWORD) must exist and be set to 1.

If this affects you, we recommend re-running DLMUSE with the --clear_cache flag set on the first run.

Contact

For more information, please contact CBICA Software.

For Developers

Contributions are welcome! Please refer to our CONTRIBUTING.md for more information on how to report bugs, suggest enhancements, and contribute code. Please make sure to write tests for new code and run them before submitting a pull request.