52

Benchmarking and Explaining Deep Learning Cortical Lesion MRI Segmentation in Multiple Sclerosis

Nataliia Molchanova
Alessandro Cagol
Mario Ocampo-Pineda
Po-Jui Lu
Matthias Weigel
Xinjie Chen
Erin Beck
Charidimos Tsagkas
Daniel Reich
Colin Vanden Bulcke
Anna Stolting
Serena Borrelli
Pietro Maggi
Adrien Depeursinge
Cristina Granziera
Henning Mueller
Pedro M. Gordaliza
Meritxell Bach Cuadra
Main:33 Pages
11 Figures
Bibliography:9 Pages
5 Tables
Abstract

Cortical lesions (CLs) have emerged as valuable biomarkers in multiple sclerosis (MS), offering high diagnostic specificity and prognostic relevance. However, their routine clinical integration remains limited due to subtle magnetic resonance imaging (MRI) appearance, challenges in expert annotation, and a lack of standardized automated methods. We propose a comprehensive multi-centric benchmark of CL detection and segmentation in MRI. A total of 656 MRI scans, including clinical trial and research data from four institutions, were acquired at 3T and 7T using MP2RAGE and MPRAGE sequences with expert-consensus annotations. We rely on the self-configuring nnU-Net framework, designed for medical imaging segmentation, and propose adaptations tailored to the improved CL detection. We evaluated model generalization through out-of-distribution testing, demonstrating strong lesion detection capabilities with an F1-score of 0.64 and 0.5 in and out of the domain, respectively. We also analyze internal model features and model errors for a better understanding of AI decision-making. Our study examines how data variability, lesion ambiguity, and protocol differences impact model performance, offering future recommendations to address these barriers to clinical adoption. To reinforce the reproducibility, the implementation and models will be publicly accessible and ready to use atthis https URLandthis https URL.

View on arXiv
Comments on this paper