SupWMA: Consistent and Efficient Tractography Parcellation of
Superficial White Matter with Deep Learning
- URL: http://arxiv.org/abs/2201.12528v1
- Date: Sat, 29 Jan 2022 08:42:03 GMT
- Title: SupWMA: Consistent and Efficient Tractography Parcellation of
Superficial White Matter with Deep Learning
- Authors: Tengfei Xue, Fan Zhang, Chaoyi Zhang, Yuqian Chen, Yang Song, Nikos
Makris, Yogesh Rathi, Weidong Cai, Lauren J. O'Donnell
- Abstract summary: White matter parcellation classifies tractography streamlines into clusters or anatomically meaningful tracts.
Most parcellation methods focus on the deep white matter (DWM), while fewer methods address the superficial white matter (SWM) due to its complexity.
We propose a deep-learning-based framework, Superficial White Matter Analysis (SupWMA), that performs an efficient and consistent parcellation of 198 SWM clusters from whole-brain tractography.
- Score: 22.754116315299182
- License: http://arxiv.org/licenses/nonexclusive-distrib/1.0/
- Abstract: White matter parcellation classifies tractography streamlines into clusters
or anatomically meaningful tracts to enable quantification and visualization.
Most parcellation methods focus on the deep white matter (DWM), while fewer
methods address the superficial white matter (SWM) due to its complexity. We
propose a deep-learning-based framework, Superficial White Matter Analysis
(SupWMA), that performs an efficient and consistent parcellation of 198 SWM
clusters from whole-brain tractography. A point-cloud-based network is modified
for our SWM parcellation task, and supervised contrastive learning enables more
discriminative representations between plausible streamlines and outliers. We
perform evaluation on a large tractography dataset with ground truth labels and
on three independently acquired testing datasets from individuals across ages
and health conditions. Compared to several state-of-the-art methods, SupWMA
obtains a highly consistent and accurate SWM parcellation result. In addition,
the computational speed of SupWMA is much faster than other methods.
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