학술논문

An electroencephalographic signature predicts antidepressant response in major depression
Document Type
article
Source
Nature Biotechnology. 38(4)
Subject
Serious Mental Illness
Neurosciences
Mental Health
Major Depressive Disorder
Depression
Clinical Research
Brain Disorders
6.1 Pharmaceuticals
Evaluation of treatments and therapeutic interventions
Mental health
Good Health and Well Being
Antidepressive Agents
Depressive Disorder
Major
Double-Blind Method
Electroencephalography
Humans
Machine Learning
Membrane Potentials
Models
Neurological
Predictive Value of Tests
Prefrontal Cortex
Reproducibility of Results
Sertraline
Transcranial Magnetic Stimulation
Treatment Outcome
Language
Abstract
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.