SVM recursive feature elimination analyses of structural brain MRI predicts near-term relapses in patients with clinically isolated syndromes suggestive of multiple sclerosis

Machine learning classification is an attractive approach to automatically differentiate patients from healthy subjects, and to predict future disease outcomes. A clinically isolated syndrome (CIS) is often the first presentation of multiple sclerosis (MS), but it is difficult at onset to predict wh...

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Main Authors: Viktor Wottschel, Declan T. Chard, Christian Enzinger, Massimo Filippi, Jette L. Frederiksen, Claudio Gasperini, Antonio Giorgio, Maria A. Rocca, Alex Rovira, Nicola De Stefano, Mar Tintoré, Daniel C. Alexander, Frederik Barkhof, Olga Ciccarelli
Format: Article
Language:English
Published: Elsevier 2019-01-01
Series:NeuroImage: Clinical
Online Access:http://www.sciencedirect.com/science/article/pii/S2213158219303614
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author Viktor Wottschel
Declan T. Chard
Christian Enzinger
Massimo Filippi
Jette L. Frederiksen
Claudio Gasperini
Antonio Giorgio
Maria A. Rocca
Alex Rovira
Nicola De Stefano
Mar Tintoré
Daniel C. Alexander
Frederik Barkhof
Olga Ciccarelli
spellingShingle Viktor Wottschel
Declan T. Chard
Christian Enzinger
Massimo Filippi
Jette L. Frederiksen
Claudio Gasperini
Antonio Giorgio
Maria A. Rocca
Alex Rovira
Nicola De Stefano
Mar Tintoré
Daniel C. Alexander
Frederik Barkhof
Olga Ciccarelli
SVM recursive feature elimination analyses of structural brain MRI predicts near-term relapses in patients with clinically isolated syndromes suggestive of multiple sclerosis
NeuroImage: Clinical
author_facet Viktor Wottschel
Declan T. Chard
Christian Enzinger
Massimo Filippi
Jette L. Frederiksen
Claudio Gasperini
Antonio Giorgio
Maria A. Rocca
Alex Rovira
Nicola De Stefano
Mar Tintoré
Daniel C. Alexander
Frederik Barkhof
Olga Ciccarelli
author_sort Viktor Wottschel
title SVM recursive feature elimination analyses of structural brain MRI predicts near-term relapses in patients with clinically isolated syndromes suggestive of multiple sclerosis
title_short SVM recursive feature elimination analyses of structural brain MRI predicts near-term relapses in patients with clinically isolated syndromes suggestive of multiple sclerosis
title_full SVM recursive feature elimination analyses of structural brain MRI predicts near-term relapses in patients with clinically isolated syndromes suggestive of multiple sclerosis
title_fullStr SVM recursive feature elimination analyses of structural brain MRI predicts near-term relapses in patients with clinically isolated syndromes suggestive of multiple sclerosis
title_full_unstemmed SVM recursive feature elimination analyses of structural brain MRI predicts near-term relapses in patients with clinically isolated syndromes suggestive of multiple sclerosis
title_sort svm recursive feature elimination analyses of structural brain mri predicts near-term relapses in patients with clinically isolated syndromes suggestive of multiple sclerosis
publisher Elsevier
series NeuroImage: Clinical
issn 2213-1582
publishDate 2019-01-01
description Machine learning classification is an attractive approach to automatically differentiate patients from healthy subjects, and to predict future disease outcomes. A clinically isolated syndrome (CIS) is often the first presentation of multiple sclerosis (MS), but it is difficult at onset to predict who will have a second relapse and hence convert to clinically definite MS. In this study, we thus aimed to distinguish CIS converters from non-converters at onset of a CIS, using recursive feature elimination and weight averaging with support vector machines. We also sought to assess the influence of cohort size and cross-validation methods on the accuracy estimate of the classification.We retrospectively collected 400 patients with CIS from six European MAGNIMS MS centres. Patients underwent brain MRI at onset of a CIS according to local standard-of-care protocols. The diagnosis of clinically definite MS at one-year follow-up was the standard against which the accuracy of the model was tested. For each patient, we derived MRI-based features, such as grey matter probability, white matter lesion load, cortical thickness, and volume of specific cortical and white matter regions. Features with little contribution to the classification model were removed iteratively through an interleaved sample bootstrapping and feature averaging approach. Classification of CIS outcome at one-year follow-up was performed with 2-fold, 5-fold, 10-fold and leave-one-out cross-validation for each centre cohort independently and in all patients together.The estimated classification accuracy across centres ranged from 64.9% to 88.1% using 2-fold cross-validation and from 73% to 92.9% using leave-one-out cross-validation. The classification accuracy estimate was higher in single-centre, smaller data sets than in combinations of data sets, being the lowest when all patients were merged together.Regional MRI features such as WM lesions, grey matter probability in the thalamus and the precuneus or cortical thickness in the cuneus and inferior temporal gyrus predicted the occurrence of a second relapse in patients at onset of a CIS using support vector machines. The increased accuracy estimate of the classification achieved with smaller and single-centre samples may indicate a model bias (overfitting) when data points were limited, but also more homogeneous. We provide an overview of classifier performance from a range of cross-validation schemes to give insight into the variability across schemes. The proposed recursive feature elimination approach with weight averaging can be used both in single- and multi-centre data sets in order to bridge the gap between group-level comparisons and making predictions for individual patients. Keywords: Multiple sclerosis, Machine learning classification, Feature selection
url http://www.sciencedirect.com/science/article/pii/S2213158219303614
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spelling doaj-05ece51b95f542a3a1b6aa71bbeee3512020-11-25T01:12:42ZengElsevierNeuroImage: Clinical2213-15822019-01-0124SVM recursive feature elimination analyses of structural brain MRI predicts near-term relapses in patients with clinically isolated syndromes suggestive of multiple sclerosisViktor Wottschel0Declan T. Chard1Christian Enzinger2Massimo Filippi3Jette L. Frederiksen4Claudio Gasperini5Antonio Giorgio6Maria A. Rocca7Alex Rovira8Nicola De Stefano9Mar Tintoré10Daniel C. Alexander11Frederik Barkhof12Olga Ciccarelli13Department of Radiology and Nuclear Medicine, Amsterdam University Medical Centers, Location VUmc, Amsterdam, The Netherlands; Queen Square MS Centre, University College London, London, United Kingdom; Corresponding author at: Department of Radiology and Nuclear Medicine, Amsterdam University Medical Centers, Location VUmc, Postbus 7057, 1007 MB Amsterdam, the Netherlands.Queen Square MS Centre, University College London, London, United Kingdom; National Institute of Health Research (NIHR), University College London Hospitals, Biomedical Research Centre, London, United KingdomResearch Unit for Neuronal Repair and Plasticity, Department of Neurology, Medical University of Graz, Graz, AustriaNeuroimaging Research Unit, Institute of Experimental Neurology, Division of Neuroscience, San Raffaele Scientific Institute, Vita-Salute San Raffaele University, Milan, ItalyRigshospitalet-Glostrup and University of Copenhagen, Copenhagen, DenmarkSan Camillo-Forlanini Hospital, Rome, ItalyUniversity of Siena, Siena, ItalyNeuroimaging Research Unit, Institute of Experimental Neurology, Division of Neuroscience, San Raffaele Scientific Institute, Vita-Salute San Raffaele University, Milan, ItalyHospital Vall d'Hebron, Barcelona, SpainUniversity of Siena, Siena, ItalyHospital Vall d'Hebron, Barcelona, SpainCentre for Medical Image Computing, Department of Computer Science, University College London, London, United KingdomDepartment of Radiology and Nuclear Medicine, Amsterdam University Medical Centers, Location VUmc, Amsterdam, The Netherlands; Queen Square MS Centre, University College London, London, United Kingdom; National Institute of Health Research (NIHR), University College London Hospitals, Biomedical Research Centre, London, United Kingdom; Institute of Neurology and Healthcare Engineering, University College London, London, United KingdomQueen Square MS Centre, University College London, London, United Kingdom; National Institute of Health Research (NIHR), University College London Hospitals, Biomedical Research Centre, London, United KingdomMachine learning classification is an attractive approach to automatically differentiate patients from healthy subjects, and to predict future disease outcomes. A clinically isolated syndrome (CIS) is often the first presentation of multiple sclerosis (MS), but it is difficult at onset to predict who will have a second relapse and hence convert to clinically definite MS. In this study, we thus aimed to distinguish CIS converters from non-converters at onset of a CIS, using recursive feature elimination and weight averaging with support vector machines. We also sought to assess the influence of cohort size and cross-validation methods on the accuracy estimate of the classification.We retrospectively collected 400 patients with CIS from six European MAGNIMS MS centres. Patients underwent brain MRI at onset of a CIS according to local standard-of-care protocols. The diagnosis of clinically definite MS at one-year follow-up was the standard against which the accuracy of the model was tested. For each patient, we derived MRI-based features, such as grey matter probability, white matter lesion load, cortical thickness, and volume of specific cortical and white matter regions. Features with little contribution to the classification model were removed iteratively through an interleaved sample bootstrapping and feature averaging approach. Classification of CIS outcome at one-year follow-up was performed with 2-fold, 5-fold, 10-fold and leave-one-out cross-validation for each centre cohort independently and in all patients together.The estimated classification accuracy across centres ranged from 64.9% to 88.1% using 2-fold cross-validation and from 73% to 92.9% using leave-one-out cross-validation. The classification accuracy estimate was higher in single-centre, smaller data sets than in combinations of data sets, being the lowest when all patients were merged together.Regional MRI features such as WM lesions, grey matter probability in the thalamus and the precuneus or cortical thickness in the cuneus and inferior temporal gyrus predicted the occurrence of a second relapse in patients at onset of a CIS using support vector machines. The increased accuracy estimate of the classification achieved with smaller and single-centre samples may indicate a model bias (overfitting) when data points were limited, but also more homogeneous. We provide an overview of classifier performance from a range of cross-validation schemes to give insight into the variability across schemes. The proposed recursive feature elimination approach with weight averaging can be used both in single- and multi-centre data sets in order to bridge the gap between group-level comparisons and making predictions for individual patients. Keywords: Multiple sclerosis, Machine learning classification, Feature selectionhttp://www.sciencedirect.com/science/article/pii/S2213158219303614