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EPISeg: Automated segmentation of the spinal cord on echo planar images using open-access multi-center data.

Publication ,  Journal Article
Banerjee, R; Kaptan, M; Tinnermann, A; Khatibi, A; Dabbagh, A; Büchel, C; Kündig, CW; Law, CSW; Pfyffer, D; Lythgoe, DJ; Tsivaka, D; David, G ...
Published in: bioRxiv
January 27, 2025

Functional magnetic resonance imaging (fMRI) of the spinal cord is relevant for studying sensation, movement, and autonomic function. Preprocessing of spinal cord fMRI data involves segmentation of the spinal cord on gradient-echo echo planar imaging (EPI) images. Current automated segmentation methods do not work well on these data, due to the low spatial resolution, susceptibility artifacts causing distortions and signal drop-out, ghosting, and motion-related artifacts. Consequently, this segmentation task demands a considerable amount of manual effort which takes time and is prone to user bias. In this work, we (i) gathered a multi-center dataset of spinal cord gradient-echo EPI with ground-truth segmentations and shared it on OpenNeuro https://openneuro.org/datasets/ds005143/versions/1.3.0, and (ii) developed a deep learning-based model, EPISeg, for the automatic segmentation of the spinal cord on gradient-echo EPI data. We observe a significant improvement in terms of segmentation quality compared to other available spinal cord segmentation models. Our model is resilient to different acquisition protocols as well as commonly observed artifacts in fMRI data. The training code is available at https://github.com/sct-pipeline/fmri-segmentation/, and the model has been integrated into the Spinal Cord Toolbox as a command-line tool.

Duke Scholars

Published In

bioRxiv

DOI

EISSN

2692-8205

Publication Date

January 27, 2025

Location

United States
 

Citation

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Banerjee, R., Kaptan, M., Tinnermann, A., Khatibi, A., Dabbagh, A., Büchel, C., … Cohen-Adad, J. (2025). EPISeg: Automated segmentation of the spinal cord on echo planar images using open-access multi-center data. BioRxiv. https://doi.org/10.1101/2025.01.07.631402
Banerjee, Rohan, Merve Kaptan, Alexandra Tinnermann, Ali Khatibi, Alice Dabbagh, Christian Büchel, Christian W. Kündig, et al. “EPISeg: Automated segmentation of the spinal cord on echo planar images using open-access multi-center data.BioRxiv, January 27, 2025. https://doi.org/10.1101/2025.01.07.631402.
Banerjee R, Kaptan M, Tinnermann A, Khatibi A, Dabbagh A, Büchel C, et al. EPISeg: Automated segmentation of the spinal cord on echo planar images using open-access multi-center data. bioRxiv. 2025 Jan 27;
Banerjee, Rohan, et al. “EPISeg: Automated segmentation of the spinal cord on echo planar images using open-access multi-center data.BioRxiv, Jan. 2025. Pubmed, doi:10.1101/2025.01.07.631402.
Banerjee R, Kaptan M, Tinnermann A, Khatibi A, Dabbagh A, Büchel C, Kündig CW, Law CSW, Pfyffer D, Lythgoe DJ, Tsivaka D, Van De Ville D, Eippert F, Muhammad F, Glover GH, David G, Haynes G, Haaker J, Brooks JCW, Finsterbusch J, Martucci KT, Hemmerling KJ, Mobarak-Abadi M, Hoggarth MA, Howard MA, Bright MG, Kinany N, Kowalczyk OS, Freund P, Barry RL, Mackey S, Vahdat S, Schading S, McMahon SB, Parish T, Marchand-Pauvert V, Chen Y, Smith ZA, Weber KA, De Leener B, Cohen-Adad J. EPISeg: Automated segmentation of the spinal cord on echo planar images using open-access multi-center data. bioRxiv. 2025 Jan 27;

Published In

bioRxiv

DOI

EISSN

2692-8205

Publication Date

January 27, 2025

Location

United States