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Please use this identifier to cite or link to this item:
http://hdl.handle.net/10171/22776
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| Title: | Computational classifiers for predicting the short-term course of Multiple sclerosis |
| Author(s) : | Bejarano, B. (B.) Bianco, M. (Mariangela) Gonzalez-Moron, D. (Dolores) Sepulcre, J. (Jorge) Goñi, J. (Joaquín) Arcocha, J. (Juan) Soto, Ó. (Óscar) Carro, U. (Ubaldo) del Comi, G. (Giancarlo) Leocani, L. (Letizia) Villoslada, P. (Pablo) |
| Issue Date: | 2011 |
| Publisher: | BioMed Central |
| Citation: | Bejarano B, Bianco M, Gonzalez-Moron D, Sepulcre J, Goni J, Arcocha J, et al. Computational classifiers for predicting the short-term course of Multiple sclerosis. BMC Neurol 2011 Jun 7;11:67. |
| Keywords: | Magnetic Resonance Imaging Multiple Sclerosis/classification/diagnosis Neural Conduction/physiology |
| Abstract: | 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. |
| URI: | http://hdl.handle.net/10171/22776 |
| Publisher version (URL): | http://www.biomedcentral.com/content/pdf/1471-2377-11-67.pdf |
| Appears in Collections: | DA - CUN - Neurología - Artículos de revista
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