Bukhari Qasim, Rosenfield David, Hofmann Stefan G, Gabrieli John D E, Ghosh Satrajit S
McGovern Institute for Brain Research and Department of Brain and Cognitive Sciences, Massachusetts Institute of Technology, Massachusetts, United States of America.
Department of Psychological and Brain Sciences, Boston University, Boston, United States of America.
PLoS One. 2025 Mar 18;20(3):e0313351. doi: 10.1371/journal.pone.0313351. eCollection 2025.
Only about half of patients with social anxiety disorder (SAD) respond substantially to cognitive behavioral therapy (CBT). However, there has been little evidence available to clinicians or patients about whether any individual patient is more or less likely to have a positive response to CBT. Here, we used machine learning on data from 157 patients to examine whether individual patient responses to CBT can be predicted based on demographic information, psychiatric history, and self-reported or clinician-reported scales, subscales and questionnaires acquired prior to treatment. Machine learning models were able to explain about 26% of the variance in final treatment improvements. To assess generalizability, we evaluated multiple machine learning models using cross-validation and determined which input features were essential for prediction. While prediction accuracy was similar across models, the importance of specific features varied across models. In general, the combination of total scale score, subscale scores and responses to individual questions on a severity measure, the Liebowitz Social Anxiety Scale (LSAS), was the most informative in achieving the highest predictions that alone accounted for about 26% of the variance in treatment outcome. Demographic information, psychiatric history, personality measures, other self-reported or clinician-reported questionnaires, and clinical scales related to anxiety, depression, and quality of life provided no additional predictive power. These findings indicate that combining scaled and individual responses to LSAS questions are informative for predicting individual response to CBT in patients with SAD.
社交焦虑障碍(SAD)患者中只有约一半对认知行为疗法(CBT)有显著反应。然而,对于临床医生或患者而言,几乎没有证据表明任何个体患者对CBT产生积极反应的可能性是更高还是更低。在此,我们对157名患者的数据进行机器学习,以检验是否可以根据人口统计学信息、精神病史以及治疗前获得的自我报告或临床医生报告的量表、分量表和问卷来预测个体患者对CBT的反应。机器学习模型能够解释最终治疗改善中约26%的方差。为了评估可推广性,我们使用交叉验证评估了多个机器学习模型,并确定了哪些输入特征对于预测至关重要。虽然各模型的预测准确性相似,但特定特征的重要性因模型而异。总体而言,在实现最高预测方面,总量表得分、分量表得分以及对严重程度测量工具利博维茨社交焦虑量表(LSAS)上各个问题的回答相结合最具信息量,仅这一项就占治疗结果方差的约26%。人口统计学信息、精神病史、人格测量、其他自我报告或临床医生报告的问卷以及与焦虑、抑郁和生活质量相关的临床量表均未提供额外的预测能力。这些发现表明,将对LSAS问题的量表和个体回答相结合,对于预测SAD患者对CBT的个体反应具有参考价值。