Singh Akanksha, Schooley Benjamin, Floyd Sarah B, Pill Stephen G, Brooks John M
Department of Integrated Information Technology, College of Engineering and Computing, University of South Carolina, Columbia, SC, United States.
Center for Effectiveness Research in Orthopaedics, Arnold School of Public Health, University of South Carolina, Columbia, SC, United States.
Front Digit Health. 2023 Jun 20;5:1137066. doi: 10.3389/fdgth.2023.1137066. eCollection 2023.
A core set of requirements for designing AI-based Health Recommender Systems (HRS) is a thorough understanding of human factors in a decision-making process. Patient preferences regarding treatment outcomes can be one important human factor. For orthopaedic medicine, limited communication may occur between a patient and a provider during the short duration of a clinical visit, limiting the opportunity for the patient to express treatment outcome preferences (TOP). This may occur despite patient preferences having a significant impact on achieving patient satisfaction, shared decision making and treatment success. Inclusion of patient preferences during patient intake and/or during the early phases of patient contact and information gathering can lead to better treatment recommendations.
We aim to explore patient treatment outcome preferences as significant human factors in treatment decision making in orthopedics. The goal of this research is to design, build, and test an app that collects baseline TOPs across orthopaedic outcomes and reports this information to providers during a clinical visit. This data may also be used to inform the design of HRSs for orthopaedic treatment decision making.
We created a mobile app to collect TOPs using a direct weighting (DW) technique. We used a mixed methods approach to pilot test the app with 23 first-time orthopaedic visit patients presenting with joint pain and/or function deficiency by presenting the app for utilization and conducting qualitative interviews and quantitative surveys post utilization.
The study validated five core TOP domains, with most users dividing their 100-point DW allocation across 1-3 domains. The tool received moderate to high usability scores. Thematic analysis of patient interviews provides insights into TOPs that are important to patients, how they can be communicated effectively, and incorporated into a clinical visit with meaningful patient-provider communication that leads to shared decision making.
Patient TOPs may be important human factors to consider in determining treatment options that may be helpful for automating patient treatment recommendations. We conclude that inclusion of patient TOPs to inform the design of HRSs results in creating more robust patient treatment profiles in the EHR thus enhancing opportunities for treatment recommendations and future AI applications.
设计基于人工智能的健康推荐系统(HRS)的一组核心要求是深入了解决策过程中的人为因素。患者对治疗结果的偏好可能是一个重要的人为因素。对于骨科医学而言,在临床就诊的短时间内,患者与医护人员之间的沟通可能有限,这限制了患者表达治疗结果偏好(TOP)的机会。尽管患者偏好对实现患者满意度、共同决策和治疗成功有重大影响,但这种情况仍可能发生。在患者就诊和/或患者接触及信息收集的早期阶段纳入患者偏好,可带来更好的治疗建议。
我们旨在探讨患者治疗结果偏好作为骨科治疗决策中重要人为因素的情况。本研究的目标是设计、构建并测试一款应用程序,该程序可收集骨科各种结果的基线TOP,并在临床就诊期间将此信息报告给医护人员。这些数据还可用于为骨科治疗决策的HRS设计提供参考。
我们创建了一个移动应用程序,使用直接加权(DW)技术收集TOP。我们采用混合方法对23名首次因关节疼痛和/或功能缺陷前来骨科就诊的患者进行了该应用程序的试点测试,即展示该应用程序以供使用,并在使用后进行定性访谈和定量调查。
该研究验证了五个核心TOP领域,大多数用户将其100分的DW分配在1 - 3个领域。该工具获得了中等至高的可用性评分。对患者访谈的主题分析提供了关于对患者重要的TOP、如何有效沟通这些TOP以及如何将其纳入临床就诊并通过有意义的医患沟通实现共同决策的见解。
患者TOP可能是确定治疗方案时需要考虑的重要人为因素,这可能有助于自动化患者治疗建议。我们得出结论,将患者TOP纳入HRS设计可在电子健康记录(EHR)中创建更完善的患者治疗档案,从而增加治疗建议和未来人工智能应用机会。