Literature DB >> 30113112

Development and evaluation of a multimodal marker of major depressive disorder.

Jie Yang1, Mengru Zhang2, Hongshik Ahn2, Qing Zhang2, Tony B Jin3, Ien Li4, Matthew Nemesure5, Nandita Joshi6, Haoran Jiang2, Jeffrey M Miller7, Robert Todd Ogden7, Eva Petkova8, Matthew S Milak7, Mary Elizabeth Sublette7, Gregory M Sullivan9, Madhukar H Trivedi10, Myrna Weissman7, Patrick J McGrath7, Maurizio Fava11, Benji T Kurian10, Diego A Pizzagalli12, Crystal M Cooper10, Melvin McInnis13, Maria A Oquendo14, Joseph John Mann7, Ramin V Parsey3, Christine DeLorenzo3.   

Abstract

This study aimed to identify biomarkers of major depressive disorder (MDD), by relating neuroimage-derived measures to binary (MDD/control), ordinal (severe MDD/mild MDD/control), or continuous (depression severity) outcomes. To address MDD heterogeneity, factors (severity of psychic depression, motivation, anxiety, psychosis, and sleep disturbance) were also used as outcomes. A multisite, multimodal imaging (diffusion MRI [dMRI] and structural MRI [sMRI]) cohort (52 controls and 147 MDD patients) and several modeling techniques-penalized logistic regression, random forest, and support vector machine (SVM)-were used. An additional cohort (25 controls and 83 MDD patients) was used for validation. The optimally performing classifier (SVM) had a 26.0% misclassification rate (binary), 52.2 ± 1.69% accuracy (ordinal) and r = .36 correlation coefficient (p < .001, continuous). Using SVM, R2 values for prediction of any MDD factors were <10%. Binary classification in the external data set resulted in 87.95% sensitivity and 32.00% specificity. Though observed classification rates are too low for clinical utility, four image-based features contributed to accuracy across all models and analyses-two dMRI-based measures (average fractional anisotropy in the right cuneus and left insula) and two sMRI-based measures (asymmetry in the volume of the pars triangularis and the cerebellum) and may serve as a priori regions for future analyses. The poor accuracy of classification and predictive results found here reflects current equivocal findings and sheds light on challenges of using these modalities for MDD biomarker identification. Further, this study suggests a paradigm (e.g., multiple classifier evaluation with external validation) for future studies to avoid nongeneralizable results.
© 2018 Wiley Periodicals, Inc.

Entities:  

Keywords:  diffusion MRI; magnetic resonance imaging; major depressive disorder; structural MRI; support vector machine

Mesh:

Year:  2018        PMID: 30113112      PMCID: PMC6815672          DOI: 10.1002/hbm.24282

Source DB:  PubMed          Journal:  Hum Brain Mapp        ISSN: 1065-9471            Impact factor:   5.038


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Authors:  Jie Yang; Mengru Zhang; Hongshik Ahn; Qing Zhang; Tony B Jin; Ien Li; Matthew Nemesure; Nandita Joshi; Haoran Jiang; Jeffrey M Miller; Robert Todd Ogden; Eva Petkova; Matthew S Milak; Mary Elizabeth Sublette; Gregory M Sullivan; Madhukar H Trivedi; Myrna Weissman; Patrick J McGrath; Maurizio Fava; Benji T Kurian; Diego A Pizzagalli; Crystal M Cooper; Melvin McInnis; Maria A Oquendo; Joseph John Mann; Ramin V Parsey; Christine DeLorenzo
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  15 in total

1.  Development and evaluation of a multimodal marker of major depressive disorder.

Authors:  Jie Yang; Mengru Zhang; Hongshik Ahn; Qing Zhang; Tony B Jin; Ien Li; Matthew Nemesure; Nandita Joshi; Haoran Jiang; Jeffrey M Miller; Robert Todd Ogden; Eva Petkova; Matthew S Milak; Mary Elizabeth Sublette; Gregory M Sullivan; Madhukar H Trivedi; Myrna Weissman; Patrick J McGrath; Maurizio Fava; Benji T Kurian; Diego A Pizzagalli; Crystal M Cooper; Melvin McInnis; Maria A Oquendo; Joseph John Mann; Ramin V Parsey; Christine DeLorenzo
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