Abstract

BackgroundChildren exposed to natural disasters are vulnerable to developing posttraumatic stress disorder (PTSD). Previous studies using resting-state functional neuroimaging have revealed alterations in graph-based brain topological network metrics in pediatric PTSD patients relative to healthy controls (HC). Here we aimed to apply deep learning (DL) models to neuroimaging markers of classification which may be of assistance in diagnosis of pediatric PTSD.MethodsWe studied 33 pediatric PTSD and 53 matched HC. Functional connectivity between 90 brain regions from the automated anatomical labeling atlas was established using partial correlation coefficients, and the whole-brain functional connectome was constructed by applying a threshold to the resultant 90 * 90 partial correlation matrix. Graph theory analysis was used to examine the topological properties of the functional connectome. A DL algorithm then used this measure to classify pediatric PTSD vs HC.ResultsGraphic topological measures using DL provide a potentially clinically useful classifier for differentiating pediatric PTSD and HC (overall accuracy 71.2%). Frontoparietal areas (central executive network), cingulate cortex, and amygdala contributed the most to the DL model’s performance.ConclusionsGraphic topological measures based on fMRI data could contribute to imaging models of clinical utility in distinguishing pediatric PTSD from HC. DL model may be a useful tool in the identification of brain mechanisms PTSD participants.

Highlights

  • Children exposed to natural disasters are vulnerable to developing posttraumatic stress disorder (PTSD)

  • Demographic and clinical characteristics There were no significant differences in age, gender, education between pediatric PTSD and healthy controls (HC) (p > 0.05; Table 1)

  • Classification performance The single-subject classification of pediatric PTSD and HC using graph-based topological metrics was assessed for accuracy, sensitivity and specificity at 10-fold crossvalidation

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Summary

Introduction

Children exposed to natural disasters are vulnerable to developing posttraumatic stress disorder (PTSD). Previous studies using resting-state functional neuroimaging have revealed alterations in graph-based brain topological network metrics in pediatric PTSD patients relative to healthy controls (HC). Two decades ago it was hoped that neuroimaging-based biomarkers would prove diagnostically and prognostically effective in a number of neuropsychiatric diseases. This hope has not yet been realized, as research has revealed an increasingly complex picture of subtle, distributed brain changes varying with individual clinical characteristics. We used graph-based analysis to investigate the disrupted topology of the functional brain connectome in PTSD, which throws some light on the pathogenesis of pediatric PTSD as well as yielding potential biomarkers of the disease [21]

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