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Predicting long-term outcome of Internet-delivered cognitive behavior therapy for social anxiety disorder using fMRI and support vector machine learning

机译:使用fMRI和支持向量机学习预测互联网提供的社交焦虑症的认知行为疗法的长期结果

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摘要

Cognitive behavior therapy (CBT) is an effective treatment for social anxiety disorder (SAD), but many patients do not respond sufficiently and a substantial proportion relapse after treatment has ended. Predicting an individual's long-term clinical response therefore remains an important challenge. This study aimed at assessing neural predictors of long-term treatment outcome in participants with SAD 1 year after completion of Internet-delivered CBT (iCBT). Twenty-six participants diagnosed with SAD underwent iCBT including attention bias modification for a total of 13 weeks. Support vector machines (SVMs), a supervised pattern recognition method allowing predictions at the individual level, were trained to separate long-term treatment responders from nonresponders based on blood oxygen level-dependent (BOLD) responses to self-referential criticism. The Clinical Global Impression-Improvement scale was the main instrument to determine treatment response at the 1-year follow-up. Results showed that the proportion of long-term responders was 52% (12/23). From multivariate BOLD responses in the dorsal anterior cingulate cortex (dACC) together with the amygdala, we were able to predict long-term response rate of iCBT with an accuracy of 92% (confidence interval 95% 73.2-97.6). This activation pattern was, however, not predictive of improvement in the continuous Liebowitz Social Anxiety Scale-Self-report version. Follow-up psychophysiological interaction analyses revealed that lower dACC-amygdala coupling was associated with better long-term treatment response. Thus, BOLD response patterns in the fear-expressing dACC-amygdala regions were highly predictive of long-term treatment outcome of iCBT, and the initial coupling between these regions differentiated long-term responders from nonresponders. The SVM-neuroimaging approach could be of particular clinical value as it allows for accurate prediction of treatment outcome at the level of the individual.
机译:认知行为疗法(CBT)是治疗社交焦虑症(SAD)的有效方法,但许多患者反应不足,治疗结束后有相当一部分复发。因此,预测一个人的长期临床反应仍然是一个重要的挑战。这项研究旨在评估Internet交付的CBT(iCBT)完成1年后SAD参与者长期治疗结果的神经预测指标。 26名被诊断为SAD的参与者接受了iCBT,包括注意偏倚调整,总共进行了13周。支持向量机(SVM)是一种监督模式识别方法,允许在单个级别进行预测,并经过训练,可以根据对自我指责批评的血氧水平依赖性(BOLD)响应,将长期治疗反应者与无反应者分开。临床总体印象改善量表是在1年随访中确定治疗反应的主要工具。结果显示,长期反应者的比例为52%(12/23)。根据背侧扣带回皮层(dACC)与杏仁核的多变量BOLD应答,我们能够预测iCBT的长期应答率,准确度为92%(置信区间95%73.2-97.6)。然而,这种激活方式不能预测连续的利勃维茨社交焦虑量表-自我报告版本的改善。后续的心理生理相互作用分析显示,较低的dACC-杏仁核偶联与较好的长期治疗反应相关。因此,在表达恐惧的dACC-杏仁核区域中的BOLD应答模式可高度预测iCBT的长期治疗结果,并且这些区域之间的初始耦合将长期应答者与无应答者区分开。 SVM神经影像方法可能具有特殊的临床价值,因为它可以在个体水平上准确预测治疗结果。

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