Literature DB >> 21295452

Maximum-uncertainty linear discrimination analysis of first-episode schizophrenia subjects.

Tomas Kasparek1, Carlos Eduardo Thomaz, Joao Ricardo Sato, Daniel Schwarz, Eva Janousova, Radek Marecek, Radovan Prikryl, Jiri Vanicek, Andre Fujita, Eva Ceskova.   

Abstract

Recent techniques of image analysis brought the possibility to recognize subjects based on discriminative image features. We performed a magnetic resonance imaging (MRI)-based classification study to assess its usefulness for outcome prediction of first-episode schizophrenia patients (FES). We included 39 FES patients and 39 healthy controls (HC) and performed the maximum-uncertainty linear discrimination analysis (MLDA) of MRI brain intensity images. The classification accuracy index (CA) was correlated with the Positive and Negative Syndrome Scale (PANSS) and the Global Assessment of Functioning scale (GAF) at 1-year follow-up. The rate of correct classifications of patients with poor and good outcomes was analyzed using chi-square tests. MLDA classification was significantly better than classification by chance. Leave-one-out accuracy was 72%. CA correlated significantly with PANSS and GAF scores at the 1-year follow-up. Moreover, significantly more patients with poor outcome than those with good outcome were classified correctly. MLDA of brain MR intensity features is, therefore, able to correctly classify a significant number of FES patients, and the discriminative features are clinically relevant for clinical presentation 1 year after the first episode of schizophrenia. The accuracy of the current approach is, however, insufficient to be used in clinical practice immediately. Several methodological issues need to be addressed to increase the usefulness of this classification approach.
Copyright © 2010 Elsevier Ireland Ltd. All rights reserved.

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Year:  2011        PMID: 21295452     DOI: 10.1016/j.pscychresns.2010.09.016

Source DB:  PubMed          Journal:  Psychiatry Res        ISSN: 0165-1781            Impact factor:   3.222


  15 in total

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Authors:  Joel Weijia Lai; Candice Ke En Ang; U Rajendra Acharya; Kang Hao Cheong
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Review 9.  Towards the identification of imaging biomarkers in schizophrenia, using multivariate pattern classification at a single-subject level.

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