Guhan Pooja, Awasthi Naman, McDonald Kathryn, Bussell Kristin, Reeves Gloria, Manocha Dinesh, Bera Aniket
Department of Computer Science, University of Maryland, College Park, MD, United States.
Department of Psychiatry, Child and Adolescent Division, University of Maryland, Baltimore, MD, United States.
JMIR Form Res. 2025 Jan 20;9:e46390. doi: 10.2196/46390.
Patient engagement is a critical but challenging public health priority in behavioral health care. During telehealth sessions, health care providers need to rely predominantly on verbal strategies rather than typical nonverbal cues to effectively engage patients. Hence, the typical patient engagement behaviors are now different, and health care provider training on telehealth patient engagement is unavailable or quite limited. Therefore, we explore the application of machine learning for estimating patient engagement. This can assist psychotherapists in the development of a therapeutic relationship with the patient and enhance patient engagement in the treatment of mental health conditions during tele-mental health sessions.
This study aimed to examine the ability of machine learning models to estimate patient engagement levels during a tele-mental health session and understand whether the machine learning approach could support therapeutic engagement between the client and psychotherapist.
We proposed a multimodal learning-based approach. We uniquely leveraged latent vectors corresponding to affective and cognitive features frequently used in psychology literature to understand a person's level of engagement. Given the labeled data constraints that exist in health care, we explored a semisupervised learning solution. To support the development of similar technologies for telehealth, we also plan to release a dataset called Multimodal Engagement Detection in Clinical Analysis (MEDICA). This dataset includes 1229 video clips, each lasting 3 seconds. In addition, we present experiments conducted on this dataset, along with real-world tests that demonstrate the effectiveness of our method.
Our algorithm reports a 40% improvement in root mean square error over state-of-the-art methods for engagement estimation. In our real-world tests on 438 video clips from psychotherapy sessions with 20 patients, in comparison to prior methods, positive correlations were observed between psychotherapists' Working Alliance Inventory scores and our mean and median engagement level estimates. This indicates the potential of the proposed model to present patient engagement estimations that align well with the engagement measures used by psychotherapists.
Patient engagement has been identified as being important to improve therapeutic alliance. However, limited research has been conducted to measure this in a telehealth setting, where the therapist lacks conventional cues to make a confident assessment. The algorithm developed is an attempt to model person-oriented engagement modeling theories within machine learning frameworks to estimate the level of engagement of the patient accurately and reliably in telehealth. The results are encouraging and emphasize the value of combining psychology and machine learning to understand patient engagement. Further testing in the real-world setting is necessary to fully assess its usefulness in helping therapists gauge patient engagement during online sessions. However, the proposed approach and the creation of the new dataset, MEDICA, open avenues for future research and the development of impactful tools for telehealth.
患者参与是行为健康护理中一项关键但具有挑战性的公共卫生重点。在远程医疗会诊期间,医疗保健提供者主要需要依靠言语策略而非典型的非言语线索来有效地吸引患者。因此,典型的患者参与行为如今有所不同,并且针对远程医疗患者参与的医疗保健提供者培训要么不存在,要么非常有限。所以,我们探索机器学习在估计患者参与度方面的应用。这可以帮助心理治疗师与患者建立治疗关系,并在远程心理健康会诊期间提高患者在心理健康状况治疗中的参与度。
本研究旨在检验机器学习模型在远程心理健康会诊期间估计患者参与度水平的能力,并了解机器学习方法是否能够支持客户与心理治疗师之间的治疗互动。
我们提出了一种基于多模态学习的方法。我们独特地利用了心理学文献中经常使用的与情感和认知特征相对应的潜在向量,以了解一个人的参与度水平。鉴于医疗保健中存在的标记数据限制,我们探索了一种半监督学习解决方案。为了支持远程医疗类似技术的开发,我们还计划发布一个名为临床分析中的多模态参与度检测(MEDICA)的数据集。该数据集包括1229个视频片段,每个片段持续3秒。此外,我们展示了在此数据集上进行的实验以及证明我们方法有效性的实际测试。
我们的算法在参与度估计方面的均方根误差比现有最先进方法提高了40%。在我们对来自20名患者的心理治疗会诊的438个视频片段进行的实际测试中,与先前方法相比,观察到心理治疗师的工作联盟量表得分与我们的平均和中位数参与度水平估计之间存在正相关。这表明所提出的模型有潜力呈现与心理治疗师使用的参与度测量方法高度一致的患者参与度估计。
患者参与已被确定对改善治疗联盟很重要。然而,在远程医疗环境中进行测量的研究有限,在这种环境中治疗师缺乏常规线索来进行可靠评估。所开发的算法是在机器学习框架内对以人为本的参与度建模理论进行建模的一次尝试,以在远程医疗中准确可靠地估计患者的参与度水平。结果令人鼓舞,并强调了结合心理学和机器学习来理解患者参与度的价值。在实际环境中进行进一步测试对于全面评估其在帮助治疗师评估在线会诊期间患者参与度方面的有用性是必要的。然而,所提出的方法以及新数据集MEDICA的创建为未来研究和开发有影响力的远程医疗工具开辟了道路。