Peretz Gal, Taylor C Barr, Ruzek Josef I, Jefroykin Samuel, Sadeh-Sharvit Shiri
Eleos Health, Waltham, MA, United States.
Center for m2Health, Palo Alto University, Palo Alto, CA, United States.
JMIR Form Res. 2023 May 15;7:e45156. doi: 10.2196/45156.
Therapeutic homework is a core element of cognitive and behavioral interventions, and greater homework compliance predicts improved treatment outcomes. To date, research in this area has relied mostly on therapists' and clients' self-reports or studies carried out in academic settings, and there is little knowledge on how homework is used as a treatment intervention in routine clinical care.
This study tested whether a machine learning (ML) model using natural language processing could identify homework assignments in behavioral health sessions. By leveraging this technology, we sought to develop a more objective and accurate method for detecting the presence of homework in therapy sessions.
We analyzed 34,497 audio-recorded treatment sessions provided in 8 behavioral health care programs via an artificial intelligence (AI) platform designed for therapy provided by Eleos Health. Therapist and client utterances were captured and analyzed via the AI platform. Experts reviewed the homework assigned in 100 sessions to create classifications. Next, we sampled 4000 sessions and labeled therapist-client microdialogues that suggested homework to train an unsupervised sentence embedding model. This model was trained on 2.83 million therapist-client microdialogues.
An analysis of 100 random sessions found that homework was assigned in 61% (n=61) of sessions, and in 34% (n=21) of these cases, more than one homework assignment was provided. Homework addressed practicing skills (n=34, 37%), taking action (n=26, 28.5%), journaling (n=17, 19%), and learning new skills (n=14, 15%). Our classifier reached a 72% F-score, outperforming state-of-the-art ML models. The therapists reviewing the microdialogues agreed in 90% (n=90) of cases on whether or not homework was assigned.
The findings of this study demonstrate the potential of ML and natural language processing to improve the detection of therapeutic homework assignments in behavioral health sessions. Our findings highlight the importance of accurately capturing homework in real-world settings and the potential for AI to support therapists in providing evidence-based care and increasing fidelity with science-backed interventions. By identifying areas where AI can facilitate homework assignments and tracking, such as reminding therapists to prescribe homework and reducing the charting associated with homework, we can ultimately improve the overall quality of behavioral health care. Additionally, our approach can be extended to investigate the impact of homework assignments on therapeutic outcomes, providing insights into the effectiveness of specific types of homework.
治疗性作业是认知和行为干预的核心要素,更高的作业依从性预示着更好的治疗效果。迄今为止,该领域的研究主要依赖治疗师和患者的自我报告或在学术环境中开展的研究,对于在常规临床护理中如何将作业用作治疗干预措施知之甚少。
本研究测试了一种使用自然语言处理的机器学习(ML)模型能否识别行为健康治疗中的作业布置。通过利用这项技术,我们试图开发一种更客观、准确的方法来检测治疗过程中作业的存在情况。
我们通过Eleos Health提供的用于治疗的人工智能(AI)平台,分析了8个行为健康护理项目提供的34497次录音治疗会话。通过该AI平台捕捉并分析治疗师和患者的话语。专家对100次会话中布置的作业进行审查以创建分类。接下来,我们抽取了4000次会话,并对表明布置作业的治疗师 -患者微对话进行标记,以训练一个无监督句子嵌入模型。该模型在283万个治疗师 -患者微对话上进行训练。
对100次随机会话的分析发现,61%(n = 61)的会话布置了作业,其中34%(n = 21)的情况下布置了不止一项作业。作业涉及练习技能(n = 34,37%)、采取行动(n = 26,28.5%)、写日记(n = 17,19%)和学习新技能(n = 14,15%)。我们的分类器F分数达到72%,优于最先进的ML模型。审查微对话的治疗师在90%(n = 90)的情况下对是否布置作业达成一致。
本研究结果证明了ML和自然语言处理在改善行为健康治疗中治疗性作业布置检测方面的潜力。我们的研究结果凸显了在现实环境中准确捕捉作业的重要性,以及AI支持治疗师提供循证护理并提高对科学支持干预措施的依从性的潜力。通过确定AI可以促进作业布置和跟踪的领域,例如提醒治疗师布置作业并减少与作业相关的记录工作,我们最终可以提高行为健康护理的整体质量。此外,我们的方法可以扩展到调查作业布置对治疗效果的影响,从而深入了解特定类型作业的有效性。