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deepwma's Introduction

https://github.com/zhangfanmark/DeepWMA

https://github.com/tengfeixue-victor/DeepWMA/tree/Tensorflow2

DeepWMA (Deep White Matter Analysis) - Tensorflow2

This code implements a deep learning tractography segmentation method (DeepWMA) that allows fast and consistent white matter fiber tract identification, as described in the following paper:

Fan Zhang, Suheyla Cetin Karayumak, Nico Hoffmann, Yogesh Rathi, Alexandra J. Golby, and Lauren J. O’Donnell.
Deep white matter analysis (DeepWMA): fast and consistent tractography segmentation.
Medical Image Analysis 65 (2020): 101761

This version updates the code to the latest Tensorflow 2 environment.

Dependencies

Tensorflow == 2.3.0

Python == 3.6.13

Cuda == 10.1.243

Cudnn = 7.6.5

Example

See the following script for instructions:

sh run_DeepWMA.sh

Please cite the following papers:

Fan Zhang, Suheyla Cetin Karayumak, Nico Hoffmann, Yogesh Rathi, Alexandra J. Golby, and Lauren J. O’Donnell.
Deep white matter analysis (DeepWMA): fast and consistent tractography segmentation.
Medical Image Analysis 65 (2020): 101761

Fam Zhang, Ye Wu, Isaiah Norton, Yogesh Rathi, Nikos Makris and Lauren J. O’Donnell.
An anatomically curated fiber clustering white matter atlas for consistent white matter tract parcellation across the lifespan.
NeuroImage, 2018 (179): 429-447

Fan Zhang, Thomas Noh, Parikshit Juvekar, Sarah F Frisken, Laura Rigolo, Isaiah Norton, Tina Kapur, Sonia Pujol, William Wells III, Alex Yarmarkovich, Gordon Kindlmann, Demian Wassermann, Raul San Jose Estepar, Yogesh Rathi, Ron Kikinis, Hans J Johnson, Carl-Fredrik Westin, Steve Pieper, Alexandra J Golby, Lauren J O'Donnell.
SlicerDMRI: Diffusion MRI and Tractography Research Software for Brain Cancer Surgery Planning and Visualization.
JCO Clinical Cancer Informatics 4, e299-309, 2020.

Isaiah Norton, Walid Ibn Essayed, Fan Zhang, Sonia Pujol, Alex Yarmarkovich, Alexandra J. Golby, Gordon Kindlmann, Demian Wassermann, Raul San Jose Estepar, Yogesh Rathi, Steve Pieper, Ron Kikinis, Hans J. Johnson, Carl-Fredrik Westin and Lauren J. O'Donnell.
SlicerDMRI: Open Source Diffusion MRI Software for Brain Cancer Research. Cancer Research 77(21), e101-e103, 2017.

deepwma's People

Contributors

tengfeixue-victor avatar zhangfanmark avatar

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