Risk Mediation Cloud Service: Constructing Statistical Models of Patient Adherence for Sustainable Case Management

P. Hsueh, S. Ramakrishnan, Henry Chang
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Abstract

Regimen adherence is a common problem among chronic disease patients and has posed tremendous challenges to sustainable case management. Intervening on every single non-adherence case often creates unnecessary burdens for providers and considerable annoyance for patients, leading to wastes of resources and increasing patient churn rates. In current practice, mitigating the risk of non-adherence cases is a labor-intensive task that requires additional efforts from healthcare professionals to handle on a case-by-case basis. Previous work has investigated into the possibility of modeling patient adherence behavior, but left questions about the accountability of such models in services. With the prevalence of mobile devices and maturing cloud-based service models, more patient data are fed to cloud services from a variety of sources (e.g., health records, surveys, sensors, embedded GPS modules). In this paper, we propose a risk mitigation service that can utilize heterogeneous patient behavioral data sources to construct statistical models of adherence and estimate intervention need. We design evaluations to examine a number of dimensions in statistical models of patient adherence and their impacts on the task of determining critical cases and patient propensity to churn. Finally, we demonstrate how the new service is designed to assist adherence case management with models that can classify cases of different intervention needs and discuss its applications, limitations, and sustainability issues.
风险中介云服务:构建可持续病例管理的患者依从性统计模型
治疗方案的依从性是慢性病患者的共同问题,并对可持续的病例管理提出了巨大的挑战。对每一个不遵医嘱的病例进行干预往往会给提供者带来不必要的负担,给患者带来相当大的烦恼,导致资源浪费,增加患者流失率。在目前的实践中,降低不遵医嘱病例的风险是一项劳动密集型任务,需要医疗保健专业人员在个案基础上进行额外的努力。以前的工作已经调查了病人依从行为建模的可能性,但留下了关于这种模型在服务中的责任的问题。随着移动设备的普及和基于云的服务模式的成熟,越来越多的患者数据从各种来源(例如,健康记录、调查、传感器、嵌入式GPS模块)提供给云服务。在本文中,我们提出了一种风险缓解服务,该服务可以利用异质患者行为数据源构建依从性统计模型并估计干预需求。我们设计评估来检查患者依从性统计模型中的许多维度及其对确定危重病例和患者流失倾向的任务的影响。最后,我们展示了新服务是如何设计的,以帮助依从性案例管理的模型,可以分类不同的干预需求的案例,并讨论其应用,限制和可持续性问题。
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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