Yao Lijun, Zhao Xudong, Xu Zhiwei, Chen Yang, Liu Liang, Feng Qiang, Chen Fazhan
Shanghai Pudong New Area Mental Health Center, Tongji University School of Medicine, Shanghai, China.
Department of Psychosomatic, Shanghai East Hospital, Tongji University School of Medicine, Shanghai, China.
Front Psychiatry. 2020 Dec 3;11:537442. doi: 10.3389/fpsyt.2020.537442. eCollection 2020.
Side effects in psychotherapy are a common phenomenon, but due to insufficient understanding of the relevant predictors of side effects in psychotherapy, many psychotherapists or clinicians fail to identify and manage these side effects. The purpose of this study was to predict whether clients or patients would experience side effects in psychotherapy by machine learning and to analyze the related influencing factors. A self-compiled "Psychotherapy Side Effects Questionnaire (PSEQ)" was delivered online by a WeChat official account. Three hundred and seventy participants were included in the cross-sectional analysis. Psychotherapy outcomes were classified as participants with side effects and without side effects. A number of features were selected to distinguish participants with different psychotherapy outcomes. Six machine learning-based algorithms were then chosen and trained by our dataset to build outcome prediction classifiers. Our study showed that: (1) the most common side effects were negative emotions in psychotherapy, such as anxiety, tension, sadness, and anger, etc. (24.6%, 91/370); (2) the mental state of the psychotherapist, as perceived by the participant during psychotherapy, was the most relevant feature to predict whether clients would experience side effects in psychotherapy; (3) a Random Forest-based machine learning classifier offered the best prediction performance of the psychotherapy outcomes, with an F1-score of 0.797 and an AUC value of 0.804. These numbers indicate a high prediction performance, which allowed our approach to be used in practice. Our Random Forest-based machine learning classifier could accurately predict the possible outcome of a client in psychotherapy. Our study sheds light on the influencing factors of the side effects of psychotherapy and could help psychotherapists better predict the outcomes of psychotherapy.
心理治疗中的副作用是一种常见现象,但由于对心理治疗中副作用的相关预测因素认识不足,许多心理治疗师或临床医生未能识别和处理这些副作用。本研究的目的是通过机器学习预测来访者或患者在心理治疗中是否会出现副作用,并分析相关影响因素。通过微信公众号在线发放自编的“心理治疗副作用问卷(PSEQ)”。横断面分析纳入了370名参与者。心理治疗结果分为有副作用和无副作用的参与者。选择了一些特征来区分具有不同心理治疗结果的参与者。然后选择六种基于机器学习的算法,并通过我们的数据集进行训练,以构建结果预测分类器。我们的研究表明:(1)心理治疗中最常见的副作用是负面情绪,如焦虑、紧张、悲伤和愤怒等(24.6%,91/370);(2)参与者在心理治疗过程中感知到的心理治疗师的心理状态是预测来访者在心理治疗中是否会出现副作用的最相关特征;(3)基于随机森林的机器学习分类器对心理治疗结果的预测性能最佳,F1分数为0.797,AUC值为0.804。这些数字表明预测性能较高,这使得我们的方法能够在实践中应用。我们基于随机森林的机器学习分类器可以准确预测来访者在心理治疗中的可能结果。我们的研究揭示了心理治疗副作用的影响因素,并有助于心理治疗师更好地预测心理治疗的结果。