Single-Subject Anxiety Treatment Outcome Prediction using Functional Neuroimaging

被引:0
|
作者
Tali M Ball
Murray B Stein
Holly J Ramsawh
Laura Campbell-Sills
Martin P Paulus
机构
[1] University of California San Diego,Department of Psychiatry
[2] San Diego State University/University of California San Diego Joint Doctoral Program in Clinical Psychology,Department of Family and Preventive Medicine
[3] Psychiatry Service,Department of Psychiatry
[4] Veterans Affairs San Diego Healthcare System,undefined
[5] University of California San Diego,undefined
[6] Uniformed Services University of the Health Sciences,undefined
来源
Neuropsychopharmacology | 2014年 / 39卷
关键词
anxiety disorders; prediction; fMRI; random forest; emotion regulation; cognitive behavioral therapy;
D O I
暂无
中图分类号
学科分类号
摘要
The possibility of individualized treatment prediction has profound implications for the development of personalized interventions for patients with anxiety disorders. Here we utilize random forest classification and pre-treatment functional magnetic resonance imaging (fMRI) data from individuals with generalized anxiety disorder (GAD) and panic disorder (PD) to generate individual subject treatment outcome predictions. Before cognitive behavioral therapy (CBT), 48 adults (25 GAD and 23 PD) reduced (via cognitive reappraisal) or maintained their emotional responses to negative images during fMRI scanning. CBT responder status was predicted using activations from 70 anatomically defined regions. The final random forest model included 10 predictors contributing most to classification accuracy. A similar analysis was conducted using the clinical and demographic variables. Activations in the hippocampus during maintenance and anterior insula, superior temporal, supramarginal, and superior frontal gyri during reappraisal were among the best predictors, with greater activation in responders than non-responders. The final fMRI-based model yielded 79% accuracy, with good sensitivity (0.86), specificity (0.68), and positive and negative likelihood ratios (2.73, 0.20). Clinical and demographic variables yielded poorer accuracy (69%), sensitivity (0.79), specificity (0.53), and likelihood ratios (1.67, 0.39). This is the first use of random forest models to predict treatment outcome from pre-treatment neuroimaging data in psychiatry. Together, random forest models and fMRI can provide single-subject predictions with good test characteristics. Moreover, activation patterns are consistent with the notion that greater activation in cortico-limbic circuitry predicts better CBT response in GAD and PD.
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页码:1254 / 1261
页数:7
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