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Predicting first session working alliances using deep learning algorithms: A proof-of-concept study for personalized psychotherapy

Zhou, Ying; Chen, Xiao-yu; Liu, Ding; Pan, Yu-lin; Hou, Yan-fei; Gao, Ting-ting; Peng, Fei; Wang, Xiao-cong*; Zhang, Xiao-yuan*
Social Sciences Citation Index
南方医科大学

摘要

Objective The aim of this proof-of-concept study is to develop a predictive model based on deep learning algorithms to predict working alliances after the first therapeutic session and to provide a basis for clinical decisions. Methods Using a sample of 325 patients and 32 psychotherapists from three university counseling centers, a deep learning algorithm known as fully connected neural networks (FCNNs) was adopted to construct data-driven predictive models. The performance differences between the model including only patient indicators and the model including both patient and therapist indicators were compared. The optimal model was further tested in a general hospital sample of 85 patients and 8 therapists. Results The model incorporating both patient indicators and therapist-level indicators (R-2: 0.30 +/- 0.02) performed better than the model incorporating only patient indicators (R-2: 0.11 +/- 0.02). The performance of this model decreased when being transferred to the independent general hospital sample, but still retained some predictive value (R-2 = 0.11). Conclusion This study showed that the inclusion of therapist-level indicators can improve the performance of a predictive model in predicting working alliances. This model could assist clinical decisions on choosing psychotherapists for patients and may also initiate new possibilities for future research.

关键词

personalized psychotherapy clinical decision supports deep learning algorithm working alliance therapist-level indicators