Developing a Machine Learning-Based Automated Patient Engagement Estimator for Telehealth: Algorithm Development and Validation Study

被引:0
作者
Guhan, Pooja [1 ]
Awasthi, Naman [1 ]
Mcdonald, Kathryn [2 ]
Bussell, Kristin [3 ]
Reeves, Gloria [2 ]
Manocha, Dinesh [1 ]
Bera, Aniket [4 ]
机构
[1] Univ Maryland, Dept Comp Sci, 8125 Paint Branch Dr, College Pk, MD 20742 USA
[2] Univ Maryland, Dept Psychiat, Child & Adolescent Div, Baltimore, MD USA
[3] Univ Maryland, Sch Nursing, Baltimore, MD USA
[4] Purdue Univ, Dept Comp Sci, West Lafayett, IN USA
关键词
machine learning; mental health; telehealth; engagement detection; patient engagement; RECOGNITION;
D O I
10.2196/46390
中图分类号
R19 [保健组织与事业(卫生事业管理)];
学科分类号
摘要
Background: 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. Objective: 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. Methods: 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. Results: 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. Conclusions: Patient engagement has been identified as being important to improve therapeutic alliance. However, limited 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.
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页数:18
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