Coll, Llucia
Pareto, Deborah
Carbonell Mirabent, Pere
Cobo Calvo, Alvaro
Arrambide, Georgina
Vidal-Jordana, Angela
Comabella López, Manuel
Castilló, Joaquín
Rodríguez-Acevedo, Breogán
Zabalza, Ana
Galan, Ingrid
Midaglia, Luciana
Nos, Carlos
Auger, Cristina
Alberich, Manel
Río, Jordi
Sastre Garriga, Jaume
Oliver i Malagelada, Arnau
Montalban Gairín, Xavier
Rovira, Àlex
Tintoré, Mar
Lladó Bardera, Xavier
Tur, Carmen
2024-07
Background: The combination of anatomical MRI and deep learning-based methods such as convolutional neural networks (CNNs) is a promising strategy to build predictive models of multiple sclerosis (MS) prognosis. However, studies assessing the effect of different input strategies on model's performance are lacking. Purpose: To compare whole-brain input sampling strategies and regional/specific-tissue strategies, which focus on a priori known relevant areas for disability accrual, to stratify MS patients based on their disability level. Study Type: Retrospective. Subjects: Three hundred nineteen MS patients (382 brain MRI scans) with clinical assessment of disability level performed within the following 6 months (~70% training/~15% validation/~15% inference in-house dataset) and 440 MS patients from multiple centers (independent external validation cohort). Field Strength/Sequence: Single vendor 1.5 T or 3.0 T. Magnetization-Prepared Rapid Gradient-Echo and Fluid-Attenuated Inversion Recovery sequences. Assessment: A 7-fold patient cross validation strategy was used to train a 3D-CNN to classify patients into two groups, Expanded Disability Status Scale score (EDSS) ≥ 3.0 or EDSS < 3.0. Two strategies were investigated: 1) a global approach, taking the whole brain volume as input and 2) regional approaches using five different regions-of-interest: white matter, gray matter, subcortical gray matter, ventricles, and brainstem structures. The performance of the models was assessed in the in-house and the independent external cohorts. Statistical Tests: Balanced accuracy, sensitivity, specificity, area under receiver operating characteristic (ROC) curve (AUC). Results: With the in-house dataset, the gray matter regional model showed the highest stratification accuracy (81%), followed by the global approach (79%). In the external dataset, without any further retraining, an accuracy of 72% was achieved for the white matter model and 71% for the global approach. Data Conclusion: The global approach offered the best trade-off between internal performance and external validation to stratify MS patients based on accumulated disability
Research funding: 'la Caixa' Foundation. Grant Numbers: 100010434, LCF/BQ/PI20/11760008
English
Esclerosi múltiple; Multiple sclerosis; Imatges -- Processament; Image processing; Imatgeria mèdica; Imaging systems in medicine; Imatgeria per ressonància magnètica; Magnetic resonance imaging
Wiley
info:eu-repo/semantics/altIdentifier/doi/10.1002/jmri.29046
info:eu-repo/semantics/altIdentifier/issn/1522-2586
Attribution-NonCommercial 4.0 International
http://creativecommons.org/licenses/by-nc/4.0/