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      Resting-state functional connectome predicts individual differences in depression during COVID-19 pandemic.

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          Abstract

          Stressful life events are significant risk factors for depression, and increases in depressive symptoms have been observed during the COVID-19 pandemic. The aim of this study is to explore the neural makers for individuals' depression during COVID-19, using connectome-based predictive modeling (CPM). Then we tested whether these neural markers could be used to identify groups at high/low risk for depression with a longitudinal dataset. The results suggested that the high-risk group demonstrated a higher level and increment of depression during the pandemic, as compared to the low-risk group. Furthermore, a support vector machine (SVM) algorithm was used to discriminate major depression disorder patients and healthy controls, using neural features defined by CPM. The results confirmed the CPM's ability for capturing the depression-related patterns with individuals' resting-state functional connectivity signature. The exploration for the anatomy of these functional connectivity features emphasized the role of an emotion-regulation circuit and an interoception circuit in the neuropathology of depression. In summary, the present study augments current understanding of potential pathological mechanisms underlying depression during an acute and unpredictable life-threatening event and suggests that resting-state functional connectivity may provide potential effective neural markers for identifying susceptible populations. (PsycInfo Database Record (c) 2022 APA, all rights reserved).

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          Author and article information

          Journal
          Am Psychol
          The American psychologist
          American Psychological Association (APA)
          1935-990X
          0003-066X
          Sep 2022
          : 77
          : 6
          Affiliations
          [1 ] College of Computer and Information Science.
          [2 ] Faculty of Psychology.
          [3 ] College of Artificial Intelligence.
          Article
          2022-83272-001
          10.1037/amp0001031
          35862107
          2c6e5821-7e90-4e7b-a084-869d907cf10c
          History

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