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Dynamic Resting-State Network Biomarkers of Antidepressant Treatment Response

机译:抗抑郁药治疗反应的动态静息态网络生物标志物

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? 2022 Society of Biological PsychiatryBackground: Delivery of effective antidepressant treatment has been hampered by a lack of objective tools for predicting or monitoring treatment response. This study aimed to address this gap by testing novel dynamic resting-state functional network markers of antidepressant response. Methods: The Establishing Moderators and Biosignatures of Antidepressant Response in Clinical Care (EMBARC) study randomized adults with major depressive disorder to 8 weeks of either sertraline or placebo, and depression severity was evaluated longitudinally. Participants completed resting-state neuroimaging pretreatment and again after 1 week of treatment (n = 259 eligible for analyses). Coactivation pattern analyses identified recurrent whole-brain states of spatial coactivation, and computed time spent in each state for each participant was the main dynamic measure. Multilevel modeling estimated the associations between pretreatment network dynamics and sertraline response and between early (pretreatment to 1 week) changes in network dynamics and sertraline response. Results: Dynamic network markers of early sertraline response included increased time in network states consistent with canonical default and salience networks, together with decreased time in network states characterized by coactivation of cingulate and ventral limbic or temporal regions. The effect of sertraline on depression recovery was mediated by these dynamic network changes. In contrast, early changes in dynamic functioning of corticolimbic and frontoinsular-default networks were related to patterns of symptom recovery common across treatment groups. Conclusions: Dynamic resting-state markers of early antidepressant response or general recovery may assist development of clinical tools for monitoring and predicting effective intervention.
机译:?2022 年生物精神病学学会背景:由于缺乏预测或监测治疗反应的客观工具,有效的抗抑郁药治疗的实施受到阻碍。本研究旨在通过测试抗抑郁药反应的新型动态静息态功能网络标志物来解决这一差距。方法:在临床护理中建立抗抑郁药反应的调节因子和生物特征 (EMBARC) 研究将患有重度抑郁症的成人随机分配到 8 周的舍曲林或安慰剂组,并纵向评估抑郁严重程度。参与者完成了静息态神经影像学预处理,并在治疗 1 周后再次完成(n = 259 符合分析条件)。共激活模式分析确定了空间共激活的复发性全脑状态,计算每个参与者在每个状态下花费的时间是主要的动态测量。多级建模估计了治疗前网络动力学与舍曲林反应之间的关联,以及早期(治疗前至1周)网络动力学变化与舍曲林反应之间的关联。结果:早期舍曲林反应的动态网络标志物包括与典型默认和显著性网络一致的网络状态时间增加,以及以扣带和腹侧边缘或颞区共激活为特征的网络状态时间减少。舍曲林对抑郁恢复的影响是由这些动态网络变化介导的。相比之下,皮质边缘和额叶默认网络动态功能的早期变化与治疗组中常见的症状恢复模式有关。结论:早期抗抑郁药反应或一般恢复的动态静息状态标志物可能有助于开发用于监测和预测有效干预的临床工具。

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