4.7 Article

Automated claustrum segmentation in human brain MRI using deep learning

Journal

HUMAN BRAIN MAPPING
Volume 42, Issue 18, Pages 5862-5872

Publisher

WILEY
DOI: 10.1002/hbm.25655

Keywords

claustrum; deep learning; image segmentation; MRI; multi-view

Funding

  1. German Federal Ministry of Education and Science [BMBF 01ER0801, BMBF 01ER0803]
  2. Technische Universitat Munchen [KKF 8765162]
  3. Federal Ministry of Education and Science [BMBF 01ER0801, BMBF 01ER0803]
  4. Deutsche Forschungsgemeinschaft [SO 1336/1-1]

Ask authors/readers for more resources

In this study, a multi-view Deep Learning approach was used to segment the claustrum in T1-weighted MRI scans. The results showed good performance in humans and potential for assisting MRI-based research. The algorithm developed allows for robust automated claustrum segmentation and is publicly available for use.
In the last two decades, neuroscience has produced intriguing evidence for a central role of the claustrum in mammalian forebrain structure and function. However, relatively few in vivo studies of the claustrum exist in humans. A reason for this may be the delicate and sheet-like structure of the claustrum lying between the insular cortex and the putamen, which makes it not amenable to conventional segmentation methods. Recently, Deep Learning (DL) based approaches have been successfully introduced for automated segmentation of complex, subcortical brain structures. In the following, we present a multi-view DL-based approach to segment the claustrum in T1-weighted MRI scans. We trained and evaluated the proposed method in 181 individuals, using bilateral manual claustrum annotations by an expert neuroradiologist as reference standard. Cross-validation experiments yielded median volumetric similarity, robust Hausdorff distance, and Dice score of 93.3%, 1.41 mm, and 71.8%, respectively, representing equal or superior segmentation performance compared to human intra-rater reliability. The leave-one-scanner-out evaluation showed good transferability of the algorithm to images from unseen scanners at slightly inferior performance. Furthermore, we found that DL-based claustrum segmentation benefits from multi-view information and requires a sample size of around 75 MRI scans in the training set. We conclude that the developed algorithm allows for robust automated claustrum segmentation and thus yields considerable potential for facilitating MRI-based research of the human claustrum. The software and models of our method are made publicly available.

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