4.7 Article

Volumetric segmentation of white matter tracts with label embedding

Journal

NEUROIMAGE
Volume 250, Issue -, Pages -

Publisher

ACADEMIC PRESS INC ELSEVIER SCIENCE
DOI: 10.1016/j.neuroimage.2022.118934

Keywords

Convolutional neural network; Diffusion magnetic resonance imaging; Label embedding; White matter tract segmentation

Funding

  1. Beijing Municipal Natural Science Foundation [L192058]
  2. National Natural Science Foundation of China [81870958, 81571631]
  3. Beijing Municipal Natural Science Foundation for Distinguished Young Scholars [JQ20035]
  4. Special Fund of the Pediatric Medical Coordinated Development Center of Beijing Hospitals Authority [XTYB201831]

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This study aims to improve the segmentation of white matter tracts based on diffusion magnetic resonance imaging. By exploiting the characteristics of WM tracts and modifying the network design, a segmentation method based on embedded space is proposed, which significantly enhances the accuracy of segmentation.
Convolutional neural networks have achieved state-of-the-art performance for white matter (WM) tract segmentation based on diffusion magnetic resonance imaging (dMRI). However, the segmentation can still be difficult for challenging WM tracts with thin bodies or complicated shapes; the segmentation is even more problematic in challenging scenarios with reduced data quality or domain shift between training and test data, which can be easily encountered in clinical settings. In this work, we seek to improve the segmentation of WM tracts, especially for challenging WM tracts in challenging scenarios. In particular, our method is based on volumetric WM tract segmentation, where voxels are directly labeled without performing tractography. To improve the segmentation, we exploit the characteristics of WM tracts that different tracts can cross or overlap and revise the network design accordingly. Specifically, because multiple tracts can co-exist in a voxel, we hypothesize that the different tract labels can be correlated. The tract labels at a single voxel are concatenated as a label vector, the length of which is the number of tract labels. Due to the tract correlation, this label vector can be projected into a lower dimensional space -referred to as the embedded space -for each voxel, which allows the segmentation network to solve a simpler problem. By predicting the coordinate in the embedded space for the tracts at each voxel and subsequently mapping the coordinate to the label vector with a reconstruction module, the segmentation result can be achieved. To facilitate the learning of the embedded space, an auxiliary label reconstruction loss is integrated with the segmentation accuracy loss during network training, and network training and inference are end-to-end. Our method was validated on two dMRI datasets under various settings. The results show that the proposed method improves the accuracy of WM tract segmentation, and the improvement is more prominent for challenging tracts in challenging scenarios.

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