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静息态功能连接组预测 COVID-19 大流行期间个体抑郁的差异。

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

机构信息

College of Computer and Information Science, School of Software, Southwest University.

Faculty of Psychology, Key Laboratory of Cognition and Personality of the Ministry of Education, Southwest University.

出版信息

Am Psychol. 2022 Sep;77(6):760-769. doi: 10.1037/amp0001031. Epub 2022 Jul 21.

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).

摘要

生活应激事件是抑郁的重要风险因素,在 COVID-19 大流行期间观察到抑郁症状增加。本研究旨在利用连接组预测建模 (CPM) 探索 COVID-19 期间个体抑郁的神经标志物。然后,我们使用纵向数据集测试这些神经标志物是否可用于识别高/低抑郁风险组。结果表明,与低风险组相比,高危组在大流行期间表现出更高水平和更严重的抑郁。此外,支持向量机 (SVM) 算法用于使用 CPM 定义的神经特征来区分重度抑郁症患者和健康对照者。结果证实了 CPM 捕捉个体静息状态功能连接特征中与抑郁相关模式的能力。对这些功能连接特征的解剖结构的探索强调了情绪调节回路和内脏感知回路在抑郁神经病理学中的作用。总之,本研究增强了对急性和不可预测的危及生命事件期间抑郁潜在病理机制的现有理解,并表明静息状态功能连接可能为识别易感人群提供潜在有效的神经标志物。(PsycInfo 数据库记录(c)2022 APA,保留所有权利)。

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