Burger Franziska, Neerincx Mark A, Brinkman Willem-Paul
Department of Intelligent Systems, Delft University of Technology, Delft, Netherlands.
Department of Perceptual and Cognitive Systems, Netherlands Organisation of Applied Scientific Research (TNO), Soesterberg, Netherlands.
Front Digit Health. 2022 Jul 19;4:930874. doi: 10.3389/fdgth.2022.930874. eCollection 2022.
E-mental health for depression is increasingly used in clinical practice, but patient adherence suffers as therapist involvement decreases. One reason may be the low responsiveness of existing programs: especially autonomous systems are lacking in their input interpretation and feedback-giving capabilities. Here, we explore (a) to what extent a more socially intelligent and, therefore, technologically advanced solution, namely a conversational agent, is a feasible means of collecting thought record data in dialog, (b) what people write about in their thought records, (c) whether providing content-based feedback increases motivation for thought recording, a core technique of cognitive therapy that helps patients gain an understanding of how their thoughts cause their feelings. Using the crowd-sourcing platform Prolific, 308 participants with subclinical depression symptoms were recruited and split into three conditions of varying feedback richness using the minimization method of randomization. They completed two thought recording sessions with the conversational agent: one practice session with scenarios and one open session using situations from their own lives. All participants were able to complete thought records with the agent such that the thoughts could be interpreted by the machine learning algorithm, rendering the completion of thought records with the agent feasible. Participants chose interpersonal situations nearly three times as often as achievement-related situations in the open chat session. The three most common underlying schemas were the Attachment, Competence, and Global Self-evaluation schemas. No support was found for a motivational effect of providing richer feedback. In addition to our findings, we publish the dataset of thought records for interested researchers and developers.
抑郁症的电子心理健康服务在临床实践中越来越多地被使用,但随着治疗师参与度的降低,患者的依从性也受到影响。一个原因可能是现有项目的响应性较低:尤其是自主系统在输入解释和反馈能力方面存在不足。在此,我们探讨:(a)一个更具社交智能、因而技术更先进的解决方案,即对话代理,在多大程度上是在对话中收集思维记录数据的可行手段;(b)人们在思维记录中写了什么;(c)提供基于内容的反馈是否会增加思维记录的动力,思维记录是认知疗法的一项核心技术,有助于患者理解他们的思维如何引发他们的情绪。我们通过众包平台Prolific招募了308名有亚临床抑郁症状的参与者,并使用随机化的最小化方法将他们分为三种反馈丰富程度不同的条件。他们与对话代理完成了两次思维记录会话:一次是使用情景的练习会话,一次是使用他们自己生活中的情况的开放会话。所有参与者都能够与代理完成思维记录,以便机器学习算法能够解释这些思维,这使得与代理完成思维记录是可行的。在开放聊天会话中,参与者选择人际情境的频率几乎是与成就相关情境的三倍。三种最常见的潜在模式是依恋、能力和整体自我评价模式。未发现提供更丰富反馈具有激励作用的证据。除了我们的研究结果,我们还为感兴趣的研究人员和开发人员发布了思维记录数据集。