A Framework for Predicting Adherence in Remote Health Monitoring Systems

N. Alshurafa, J. Eastwood, M. Pourhomayoun, Jason J. Liu, Suneil Nyamathi, M. Sarrafzadeh
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引用次数: 10

Abstract

Remote health monitoring (RHM) systems have shown potential effectiveness in disease management and prevention. In several studies RHM systems have been shown to reduce risk factors for cardiovascular disease (CVD) for a subset of the study participants. However, many RHM study participants fail to adhere to the prescribed study protocol or end up dropping from the study prior to its completion. In a recent Women's Heart Health study of 90 individuals in the community, we developed Wanda-CVD, an enhancement to our previous RHM system. Wanda-CVD is a smartphone-based RHM system designed to assist participants to reduce identified CVD risk factors by motivating participants through wireless coaching using feedback and prompts as social support. Many participants adhered to the study protocol, however, many did not completely adhere, and some even dropped prior to study completion. In this paper, we present a framework for analyzing baseline features to predict adherence to prescribed medical protocols that can be applied to other RHM systems. Such a prediction tool can aid study coordinators and clinicians in identifying participants who will need further study support, leading potentially to participants deriving maximal benefit from the RHM system, potentially saving healthcare costs, clinician and participant time and resources. We analyze key contextual features that predict with an accuracy of 85.2% which participants are more likely to adhere to the study protocol. Results from the Women's Heart Health study demonstrate that factors such as perceived health threat of heart disease, and perceived social support are among the factors that aid in predicting patient RHM protocol adherence in a group of African American women ages 25-45.
预测远程健康监测系统依从性的框架
远程健康监测(RHM)系统在疾病管理和预防方面显示出潜在的有效性。在几项研究中,RHM系统已被证明可以降低一部分研究参与者心血管疾病(CVD)的危险因素。然而,许多RHM研究参与者未能遵守规定的研究方案,或在研究完成前退出研究。在最近一项针对90名社区妇女心脏健康的研究中,我们开发了Wanda-CVD,这是我们之前RHM系统的改进。Wanda-CVD是一个基于智能手机的RHM系统,旨在通过使用反馈和提示作为社会支持的无线指导来激励参与者,帮助参与者减少已确定的CVD风险因素。许多参与者遵守了研究方案,然而,许多人并没有完全遵守,有些人甚至在研究完成之前就放弃了。在本文中,我们提出了一个框架,用于分析基线特征,以预测可应用于其他RHM系统的处方医疗方案的依从性。这种预测工具可以帮助研究协调员和临床医生确定需要进一步研究支持的参与者,从而可能使参与者从RHM系统中获得最大的收益,从而可能节省医疗成本、临床医生和参与者的时间和资源。我们分析了关键的上下文特征,以85.2%的准确率预测哪些参与者更有可能遵守研究方案。妇女心脏健康研究的结果表明,在一组年龄在25-45岁的非裔美国妇女中,诸如感知到的心脏病健康威胁和感知到的社会支持等因素是帮助预测患者RHM协议遵守情况的因素之一。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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