Classification of radiologically isolated syndrome and clinically isolated syndrome with machine-learning techniques.

Journal: European journal of neurology
Published Date:

Abstract

BACKGROUND AND PURPOSE: The unanticipated detection by magnetic resonance imaging (MRI) in the brain of asymptomatic subjects of white matter lesions suggestive of multiple sclerosis (MS) has been named radiologically isolated syndrome (RIS). As the difference between early MS [i.e. clinically isolated syndrome (CIS)] and RIS is the occurrence of a clinical event, it is logical to improve detection of the subclinical form without interfering with MRI as there are radiological diagnostic criteria for that. Our objective was to use machine-learning classification methods to identify morphometric measures that help to discriminate patients with RIS from those with CIS.

Authors

  • V Mato-Abad
    ISLA, Computer Science Faculty, A Coruna University, A Coruña.
  • A Labiano-Fontcuberta
    Department of Neurology, University Hospital '12 de Octubre', Madrid.
  • S Rodríguez-Yáñez
    ISLA, Computer Science Faculty, A Coruna University, A Coruña.
  • R García-Vázquez
    ISLA, Computer Science Faculty, A Coruna University, A Coruña.
  • C R Munteanu
    RNASA-IMEDIR, Computer Science Faculty, A Coruna University, A Coruña.
  • J Andrade-Garda
    ISLA, Computer Science Faculty, A Coruna University, A Coruña.
  • A Domingo-Santos
    Department of Neurology, University Hospital '12 de Octubre', Madrid.
  • V Galán Sánchez-Seco
    Department of Neurology, University Hospital '12 de Octubre', Madrid.
  • Y Aladro
    Department of Neurology, Getafe University Hospital, Getafe.
  • M L Martínez-Ginés
    Department of Neurology, University Hospital 'Gregorio Marañón', Madrid.
  • L Ayuso
    Department of Neurology, University Hospital 'Principe de Asturias', Alcalá de Henares.
  • J Benito-León
    Department of Neurology, University Hospital '12 de Octubre', Madrid.