Global and Regional Deep Learning Models for Multiple Sclerosis Stratification From MRI

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Institut Català de la Salut
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[Coll L, Carbonell-Mirabent P, Cobo-Calvo Á, Arrambide G, Vidal-Jordana Á, Comabella M, Castilló J, Rodríguez-Acevedo B, Zabalza A, Galán I, Midaglia L, Nos C, Río J, Sastre-Garriga J, Montalban X, Tintoré M, Tur C] Centre d’Esclerosi Múltiple de Catalunya (CEMCAT), Barcelona, Spain. Vall d’Hebron Hospital Universitari, Barcelona, Spain. Universitat Autònoma de Barcelona, Bellaterra, Spain. [Pareto D, Auger C, Alberich M, Rovira À] Secció de Neuroradiologia, Servei de Radiologia, Vall d’Hebron Hospital Universitari, Barcelona, Spain. Universitat Autònoma de Barcelona, Bellaterra, Spain
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Vall d'Hebron Barcelona Hospital Campus
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Coll, Llucia
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Carbonell Mirabent, Pere
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Castillo Justribo, Joaquin
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Galan, Ingrid
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Nos, Carlos
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Auger, Cristina
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Alberich, Manel
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Pareto, Deborah
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Cobo-Calvo, Alvaro
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Vidal-Jordana, Angela
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Comabella Lopez, Manuel
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Rodriguez Acevedo, Breogan
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Zabalza, Ana
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midaglia, luciana
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Rio, Jordi
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Sastre Garriga, Jaume
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Rovira, Alex
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Tintore, Mar
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TUR, CARMEN
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Arrambide, Georgina
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Montalban, Xavier
dc.date.issued
2024-06-11T10:09:48Z
dc.date.issued
2024-06-11T10:09:48Z
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2023
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2024-07
dc.identifier
Coll L, Pareto D, Carbonell-Mirabent P, Cobo-Calvo Á, Arrambide G, Vidal-Jordana Á, et al. Global and Regional Deep Learning Models for Multiple Sclerosis Stratification From MRI. J Magn Reson Imaging. 2024 Jul;60(1):258–67.
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1522-2586
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https://hdl.handle.net/11351/11572
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10.1002/jmri.29046
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37803817
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001079314200001
dc.description.abstract
Deep learning; Multiple sclerosis; Structural MRI
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Aprendizaje profundo; Esclerosis múltiple; Resonancia magnética estructural
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Aprenentatge profund; Esclerosi múltiple; Ressonància magnètica estructural
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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. Evidence Level 4 Technical Efficacy Stage 2.
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This study has been possible thanks to a Junior Leader La Caixa Fellowship awarded to C. Tur (fellowship code is LCF/BQ/PI20/11760008) by “la Caixa” Foundation (ID 100010434). The salaries of C. Tur and Ll. Coll are covered by this award.
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application/pdf
dc.language
eng
dc.publisher
Wiley
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Journal of Magnetic Resonance Imaging;60(1)
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https://doi.org/10.1002/jmri.29046
dc.rights
Attribution-NonCommercial 4.0 International
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http://creativecommons.org/licenses/by-nc/4.0/
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info:eu-repo/semantics/openAccess
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Scientia
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Aprenentatge automàtic
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Esclerosi múltiple - Prognosi
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Imatgeria per ressonància magnètica
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DISEASES::Nervous System Diseases::Autoimmune Diseases of the Nervous System::Demyelinating Autoimmune Diseases, CNS::Multiple Sclerosis
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Other subheadings::Other subheadings::/diagnosis
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ANALYTICAL, DIAGNOSTIC AND THERAPEUTIC TECHNIQUES, AND EQUIPMENT::Diagnosis::Diagnostic Techniques and Procedures::Diagnostic Imaging::Tomography::Magnetic Resonance Imaging
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PHENOMENA AND PROCESSES::Mathematical Concepts::Mathematical Concepts::Neural Networks (Computer)::Deep Learning
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ENFERMEDADES::enfermedades del sistema nervioso::enfermedades autoinmunitarias del sistema nervioso::enfermedades autoinmunes desmielinizantes del SNC::esclerosis múltiple
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Otros calificadores::Otros calificadores::/diagnóstico
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TÉCNICAS Y EQUIPOS ANALÍTICOS, DIAGNÓSTICOS Y TERAPÉUTICOS::diagnóstico::técnicas y procedimientos diagnósticos::diagnóstico por imagen::tomografía::imagen por resonancia magnética
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FENÓMENOS Y PROCESOS::conceptos matemáticos::conceptos matemáticos::redes neuronales (ordenador)::aprendizaje profundo
dc.title
Global and Regional Deep Learning Models for Multiple Sclerosis Stratification From MRI
dc.type
info:eu-repo/semantics/article
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info:eu-repo/semantics/publishedVersion


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