Zech James M, Steele Robert, Foley Victoria K, Hull Thomas D
Department of Counseling and Clinical Psychology, Teachers College, Columbia University, New York, NY, United States.
Department of Research & Development, Talkspace, New York, NY, United States.
Front Digit Health. 2022 Aug 16;4:917918. doi: 10.3389/fdgth.2022.917918. eCollection 2022.
While message-based therapy has been shown to be effective in treating a range of mood disorders, it is critical to ensure that providers are meeting a consistently high standard of care over this medium. One recently developed measure of messaging quality-The Facilitative Interpersonal Skills Task for Text (FIS-T)-provides estimates of therapists' demonstrated ability to convey psychotherapy's common factors (e.g., hopefulness, warmth, persuasiveness) over text. However, the FIS-T's scoring procedure relies on trained human coders to manually code responses, thereby rendering the FIS-T an unscalable quality control tool for large messaging therapy platforms.
In the present study, researchers developed two algorithms to automatically score therapist performance on the FIS-T task.
The FIS-T was administered to 978 messaging therapists, whose responses were then manually scored by a trained team of raters. Two machine learning algorithms were then trained on task-taker messages and coder scores: a support vector regressor (SVR) and a transformer-based neural network (DistilBERT).
The DistilBERT model had superior performance on the prediction task while providing a distribution of ratings that was more closely aligned with those of human raters, versus SVR. Specifically, the DistilBERT model was able to explain 58.8% of the variance ( = 0.588) in human-derived ratings and realized a prediction mean absolute error of 0.134 on a 1-5 scale.
Algorithms can be effectively used to ensure that digital providers meet a consistently high standard of interactions in the course of messaging therapy. Natural language processing can be applied to develop new quality assurance systems in message-based digital psychotherapy.
虽然基于信息的疗法已被证明在治疗一系列情绪障碍方面有效,但确保提供者在这种媒介上始终保持高标准的护理至关重要。最近开发的一种信息质量衡量方法——文本促进性人际技能任务(FIS-T)——提供了治疗师在文本中传达心理治疗共同因素(如希望、温暖、说服力)的能力估计。然而,FIS-T的评分程序依赖于经过培训的人工编码员手动对回复进行编码,因此FIS-T对于大型信息治疗平台来说是一种不可扩展的质量控制工具。
在本研究中,研究人员开发了两种算法来自动对治疗师在FIS-T任务上的表现进行评分。
对978名信息治疗师进行了FIS-T测试,其回复随后由一组经过培训的评分员进行手动评分。然后,在任务参与者的信息和编码员评分上训练两种机器学习算法:支持向量回归器(SVR)和基于Transformer的神经网络(DistilBERT)。
与SVR相比,DistilBERT模型在预测任务上表现更优,同时提供了与人工评分员更接近的评分分布。具体而言,DistilBERT模型能够解释人为评分中58.8%的方差(r = 0.588),并在1-5的量表上实现了0.134的预测平均绝对误差。
算法可有效用于确保数字提供者在信息治疗过程中保持始终如一的高标准互动。自然语言处理可应用于开发基于信息的数字心理治疗中的新质量保证系统。