舍曲林
抗抑郁药
脑电图
磁刺激
心理学
安慰剂
萧条(经济学)
神经科学
医学
刺激
病理
宏观经济学
经济
替代医学
海马体
作者
Wei Wu,Yu Zhang,Jing Jiang,Molly V. Lucas,Gregory A. Fonzo,Camarin E. Rolle,Crystal Cooper,Cherise Chin-Fatt,Noralie Krepel,Carena Cornelssen,Rachael Wright,Russell T. Toll,Hersh Trivedi,Karen Monuszko,Trevor Caudle,Kamron Sarhadi,Manish K. Jha,Joseph M. Trombello,Thilo Deckersbach,Phil Adams
标识
DOI:10.1038/s41587-019-0397-3
摘要
Antidepressants are widely prescribed, but their efficacy relative to placebo is modest, in part because the clinical diagnosis of major depression encompasses biologically heterogeneous conditions. Here, we sought to identify a neurobiological signature of response to antidepressant treatment as compared to placebo. We designed a latent-space machine-learning algorithm tailored for resting-state electroencephalography (EEG) and applied it to data from the largest imaging-coupled, placebo-controlled antidepressant study (n = 309). Symptom improvement was robustly predicted in a manner both specific for the antidepressant sertraline (versus placebo) and generalizable across different study sites and EEG equipment. This sertraline-predictive EEG signature generalized to two depression samples, wherein it reflected general antidepressant medication responsivity and related differentially to a repetitive transcranial magnetic stimulation treatment outcome. Furthermore, we found that the sertraline resting-state EEG signature indexed prefrontal neural responsivity, as measured by concurrent transcranial magnetic stimulation and EEG. Our findings advance the neurobiological understanding of antidepressant treatment through an EEG-tailored computational model and provide a clinical avenue for personalized treatment of depression. The efficacy of an antidepressant is predicted from an EEG signature.
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