Multivariate neuroanatomical classification of cognitive subtypes in schizophrenia: A support vector machine learning approach

Autor: Ian C. Gould, Alana M. Shepherd, Kristin R. Laurens, Murray J. Cairns, Vaughan J. Carr, Melissa J. Green
Jazyk: angličtina
Rok vydání: 2014
Předmět:
Zdroj: NeuroImage: Clinical, Vol 6, Iss C, Pp 229-236 (2014)
Druh dokumentu: article
ISSN: 2213-1582
DOI: 10.1016/j.nicl.2014.09.009
Popis: Heterogeneity in the structural brain abnormalities associated with schizophrenia has made identification of reliable neuroanatomical markers of the disease difficult. The use of more homogenous clinical phenotypes may improve the accuracy of predicting psychotic disorder/s on the basis of observable brain disturbances. Here we investigate the utility of cognitive subtypes of schizophrenia – ‘cognitive deficit’ and ‘cognitively spared’ – in determining whether multivariate patterns of volumetric brain differences can accurately discriminate these clinical subtypes from healthy controls, and from each other. We applied support vector machine classification to grey- and white-matter volume data from 126 schizophrenia patients previously allocated to the cognitive spared subtype, 74 cognitive deficit schizophrenia patients, and 134 healthy controls. Using this method, cognitive subtypes were distinguished from healthy controls with up to 72% accuracy. Cross-validation analyses between subtypes achieved an accuracy of 71%, suggesting that some common neuroanatomical patterns distinguish both subtypes from healthy controls. Notably, cognitive subtypes were best distinguished from one another when the sample was stratified by sex prior to classification analysis: cognitive subtype classification accuracy was relatively low (
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