Background/objectives: Characterizing spinal cord multiple sclerosis (MS) lesions in MRI is critical for diagnosis, monitoring, and treatment evaluation. However, current automated approaches for lesion detection and segmentation are typically designed for specific MRI contrasts or acquisition sites, limiting their generalizability in real-world clinical settings where imaging protocols vary widely. This work proposes a robust multi-site, multi-contrast segmentation framework for spinal cord lesions. Methods: The segmentation model was trained and evaluated on a large-scale dataset comprising 4428 annotated images from 1849 persons with MS across 23 imaging centers, encompassing six MRI contrasts (T1w, T2w, T2*w, PSIR, STIR, and UNIT1) acquired at 1.5 tesla (T), 3 T, and 7 T. Results: Likert-type assessment performed by neuroradiologist ratings demonstrated superior generalization of the model compared to existing contrast-specific pipelines (p < 0.01). Additional experiments evaluated robustness across spinal levels, acquisition resolutions, binarization thresholds, and quantitative evaluation on external labeled datasets. Conclusions: The proposed model can achieve accurate and reliable spinal cord MS lesion segmentation across heterogeneous MRI data, addressing a key barrier to clinical translation. The model is available in the Spinal Cord Toolbox v7.2 and higher.Code repository: https://github.com/ivadomed/seg-sc-ms-lesion-multicontrast.
Generalizable spinal cord multiple sclerosis lesion segmentation across MRI contrasts, protocols, and centers / Benveniste, Pierre-Louis; Létourneau-Guillon, Laurent; Araujo, David; Chougar, Lydia; Fetco, Dumitru; Hori, Masaaki; Kamiya, Kouhei; Messina, Steven; Tsagkas, Charidimos; Audoin, Bertrand; Bakshi, Rohit; Bannier, Elise; Blezek, Daniel; Brisset, Jean-Christophe; Callot, Virginie; Charlson, Erik; Chen, Michelle; Ciccarelli, Olga; Demortière, Sarah; Edan, Gilles; Filippi, Massimo; Granberg, Tobias; Granziera, Cristina; Hemond, Christopher C.; Keegan, B. Mark; Kerbrat, Anne; Kirschke, Jan; Kolind, Shannon; Labauge, Pierre; Lee, Lisa Eunyoung; Liu, Yaou; Mainero, Caterina; Mcginnis, Julian; Laines Medina, Nilser; Mühlau, Mark; Nair, Govind; O'Grady, Kristin P.; Oh, Jiwon; Ouellette, Russell; Prat, Alexandre; Reich, Daniel S.; Rocca, Maria A.; Shepherd, Timothy M.; Smith, Seth A.; Stawiarz, Leszek; Talbott, Jason; Tam, Roger; Tauhid, Shahamat; Traboulsee, Anthony; Treaba, Constantina Andrada; Valsasina, Paola; Vavasour, Zachary; Yiannakas, Marios; Lombaert, Hervé; Cohen-Adad, Julien. - In: MULTIPLE SCLEROSIS. - ISSN 1352-4585. - (2026). [Epub ahead of print] [10.1177/13524585261427333]
Generalizable spinal cord multiple sclerosis lesion segmentation across MRI contrasts, protocols, and centers
Filippi, Massimo;Rocca, Maria A.;
2026-01-01
Abstract
Background/objectives: Characterizing spinal cord multiple sclerosis (MS) lesions in MRI is critical for diagnosis, monitoring, and treatment evaluation. However, current automated approaches for lesion detection and segmentation are typically designed for specific MRI contrasts or acquisition sites, limiting their generalizability in real-world clinical settings where imaging protocols vary widely. This work proposes a robust multi-site, multi-contrast segmentation framework for spinal cord lesions. Methods: The segmentation model was trained and evaluated on a large-scale dataset comprising 4428 annotated images from 1849 persons with MS across 23 imaging centers, encompassing six MRI contrasts (T1w, T2w, T2*w, PSIR, STIR, and UNIT1) acquired at 1.5 tesla (T), 3 T, and 7 T. Results: Likert-type assessment performed by neuroradiologist ratings demonstrated superior generalization of the model compared to existing contrast-specific pipelines (p < 0.01). Additional experiments evaluated robustness across spinal levels, acquisition resolutions, binarization thresholds, and quantitative evaluation on external labeled datasets. Conclusions: The proposed model can achieve accurate and reliable spinal cord MS lesion segmentation across heterogeneous MRI data, addressing a key barrier to clinical translation. The model is available in the Spinal Cord Toolbox v7.2 and higher.Code repository: https://github.com/ivadomed/seg-sc-ms-lesion-multicontrast.I documenti in IRIS sono protetti da copyright e tutti i diritti sono riservati, salvo diversa indicazione.


