Title of article
Predicting obsessive–compulsive disorder severity combining neuroimaging and machine learning methods
Author/Authors
Hoexter، نويسنده , , Marcelo Q. and Miguel، نويسنده , , Euripedes C. and Diniz، نويسنده , , Juliana B. and Shavitt، نويسنده , , Roseli G. and Busatto، نويسنده , , Geraldo F. and Sato، نويسنده , , Joمo R. and Leal، نويسنده ,
Issue Information
روزنامه با شماره پیاپی سال 2013
Pages
4
From page
1213
To page
1216
Abstract
AbstractBackground
ly, machine learning methods have been used to discriminate, on an individual basis, patients from healthy controls through brain structural magnetic resonance imaging (MRI). However, the application of these methods to predict the severity of psychiatric symptoms is less common.
s
, support vector regression (SVR) was employed to evaluate whether gray matter volumes encompassing cortical–subcortical loops contain discriminative information to predict obsessive–compulsive disorder (OCD) symptom severity in 37 treatment-naïve adult OCD patients.
s
arson correlation coefficient between predicted and observed symptom severity scores was 0.49 (p=0.002) for total Dimensional Yale-Brown Obsessive–Compulsive Scale (DY-BOCS) and 0.44 (p=0.006) for total Yale-Brown Obsessive–Compulsive Scale (Y-BOCS). The regions that contained the most discriminative information were the left medial orbitofrontal cortex and the left putamen for both scales.
tions
mple is relatively small and our results must be replicated with independent and larger samples.
sions
results indicate that machine learning methods such as SVR analysis may identify neurobiological markers to predict OCD symptom severity based on individual structural MRI datasets.
Keywords
Machine Learning , Neuroimaging , symptom severity , Obsessive–compulsive disorder , Support vector regression , MAGNETIC RESONANCE IMAGING
Journal title
Journal of Affective Disorders
Serial Year
2013
Journal title
Journal of Affective Disorders
Record number
1434025
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