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Computational classifiers for predicting the short-term course of Multiple sclerosis

BACKGROUND: The aim of this study was to assess the diagnostic accuracy (sensitivity and specificity) of clinical, imaging and motor evoked potentials (MEP) for predicting the short-term prognosis of multiple sclerosis (MS). METHODS: We obtained clinical data, MRI and MEP from a prospective cohort o...

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Autores principales: Bejarano, Bartolome, Bianco, Mariangela, Gonzalez-Moron, Dolores, Sepulcre, Jorge, Goñi, Joaquin, Arcocha, Juan, Soto, Oscar, Carro, Ubaldo Del, Comi, Giancarlo, Leocani, Letizia, Villoslada, Pablo
Formato: Online Artículo Texto
Lenguaje:English
Publicado: BioMed Central 2011
Materias:
Acceso en línea:https://www.ncbi.nlm.nih.gov/pmc/articles/PMC3118106/
https://www.ncbi.nlm.nih.gov/pubmed/21649880
http://dx.doi.org/10.1186/1471-2377-11-67
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author Bejarano, Bartolome
Bianco, Mariangela
Gonzalez-Moron, Dolores
Sepulcre, Jorge
Goñi, Joaquin
Arcocha, Juan
Soto, Oscar
Carro, Ubaldo Del
Comi, Giancarlo
Leocani, Letizia
Villoslada, Pablo
author_facet Bejarano, Bartolome
Bianco, Mariangela
Gonzalez-Moron, Dolores
Sepulcre, Jorge
Goñi, Joaquin
Arcocha, Juan
Soto, Oscar
Carro, Ubaldo Del
Comi, Giancarlo
Leocani, Letizia
Villoslada, Pablo
author_sort Bejarano, Bartolome
collection PubMed
description BACKGROUND: The aim of this study was to assess the diagnostic accuracy (sensitivity and specificity) of clinical, imaging and motor evoked potentials (MEP) for predicting the short-term prognosis of multiple sclerosis (MS). METHODS: We obtained clinical data, MRI and MEP from a prospective cohort of 51 patients and 20 matched controls followed for two years. Clinical end-points recorded were: 1) expanded disability status scale (EDSS), 2) disability progression, and 3) new relapses. We constructed computational classifiers (Bayesian, random decision-trees, simple logistic-linear regression-and neural networks) and calculated their accuracy by means of a 10-fold cross-validation method. We also validated our findings with a second cohort of 96 MS patients from a second center. RESULTS: We found that disability at baseline, grey matter volume and MEP were the variables that better correlated with clinical end-points, although their diagnostic accuracy was low. However, classifiers combining the most informative variables, namely baseline disability (EDSS), MRI lesion load and central motor conduction time (CMCT), were much more accurate in predicting future disability. Using the most informative variables (especially EDSS and CMCT) we developed a neural network (NNet) that attained a good performance for predicting the EDSS change. The predictive ability of the neural network was validated in an independent cohort obtaining similar accuracy (80%) for predicting the change in the EDSS two years later. CONCLUSIONS: The usefulness of clinical variables for predicting the course of MS on an individual basis is limited, despite being associated with the disease course. By training a NNet with the most informative variables we achieved a good accuracy for predicting short-term disability.
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spelling pubmed-31181062011-06-19 Computational classifiers for predicting the short-term course of Multiple sclerosis Bejarano, Bartolome Bianco, Mariangela Gonzalez-Moron, Dolores Sepulcre, Jorge Goñi, Joaquin Arcocha, Juan Soto, Oscar Carro, Ubaldo Del Comi, Giancarlo Leocani, Letizia Villoslada, Pablo BMC Neurol Research Article BACKGROUND: The aim of this study was to assess the diagnostic accuracy (sensitivity and specificity) of clinical, imaging and motor evoked potentials (MEP) for predicting the short-term prognosis of multiple sclerosis (MS). METHODS: We obtained clinical data, MRI and MEP from a prospective cohort of 51 patients and 20 matched controls followed for two years. Clinical end-points recorded were: 1) expanded disability status scale (EDSS), 2) disability progression, and 3) new relapses. We constructed computational classifiers (Bayesian, random decision-trees, simple logistic-linear regression-and neural networks) and calculated their accuracy by means of a 10-fold cross-validation method. We also validated our findings with a second cohort of 96 MS patients from a second center. RESULTS: We found that disability at baseline, grey matter volume and MEP were the variables that better correlated with clinical end-points, although their diagnostic accuracy was low. However, classifiers combining the most informative variables, namely baseline disability (EDSS), MRI lesion load and central motor conduction time (CMCT), were much more accurate in predicting future disability. Using the most informative variables (especially EDSS and CMCT) we developed a neural network (NNet) that attained a good performance for predicting the EDSS change. The predictive ability of the neural network was validated in an independent cohort obtaining similar accuracy (80%) for predicting the change in the EDSS two years later. CONCLUSIONS: The usefulness of clinical variables for predicting the course of MS on an individual basis is limited, despite being associated with the disease course. By training a NNet with the most informative variables we achieved a good accuracy for predicting short-term disability. BioMed Central 2011-06-07 /pmc/articles/PMC3118106/ /pubmed/21649880 http://dx.doi.org/10.1186/1471-2377-11-67 Text en Copyright ©2011 Bejarano et al; licensee BioMed Central Ltd. http://creativecommons.org/licenses/by/2.0 This is an Open Access article distributed under the terms of the Creative Commons Attribution License (http://creativecommons.org/licenses/by/2.0), which permits unrestricted use, distribution, and reproduction in any medium, provided the original work is properly cited.
spellingShingle Research Article
Bejarano, Bartolome
Bianco, Mariangela
Gonzalez-Moron, Dolores
Sepulcre, Jorge
Goñi, Joaquin
Arcocha, Juan
Soto, Oscar
Carro, Ubaldo Del
Comi, Giancarlo
Leocani, Letizia
Villoslada, Pablo
Computational classifiers for predicting the short-term course of Multiple sclerosis
title Computational classifiers for predicting the short-term course of Multiple sclerosis
title_full Computational classifiers for predicting the short-term course of Multiple sclerosis
title_fullStr Computational classifiers for predicting the short-term course of Multiple sclerosis
title_full_unstemmed Computational classifiers for predicting the short-term course of Multiple sclerosis
title_short Computational classifiers for predicting the short-term course of Multiple sclerosis
title_sort computational classifiers for predicting the short-term course of multiple sclerosis
topic Research Article
url https://www.ncbi.nlm.nih.gov/pmc/articles/PMC3118106/
https://www.ncbi.nlm.nih.gov/pubmed/21649880
http://dx.doi.org/10.1186/1471-2377-11-67
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