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Examining Healthcare Utilization Patterns of Elderly Middle-Aged Adults in the United States

机译:检查美国老年中年成年人的医疗利用模式

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Elderly patients, aged 65 or older, make up 13.5% of the U.S. population, but represent 45.2% of the top 10% of healthcare utilizers, in terms of expenditures. Middle-aged Americans, aged 45 to 64 make up another 37.0% of that category. Given the high demand for healthcare services by the aforementioned population, it is important to identify high-cost users of healthcare systems and, more importantly, ineffective utilization patterns to highlight where targeted interventions could be placed to improve care delivery. In this work, we present a novel multi-level framework applying machine learning (ML) methods (i.e., random forest regression and hierarchical clustering) to group patients with similar utilization profiles into clusters. We use a vector space model to characterize a patient's utilization profile as the number of visits to different care providers and prescribed medications. We applied the proposed methods using the 2013 Medical Expenditures Panel Survey (MEPS) dataset. We identified clusters of healthcare utilization patterns of elderly and middle-aged adults in the United States, and assessed the general and clinical characteristics associated with these utilization patterns. Our results demonstrate the effectiveness of the proposed framework to model healthcare utilization patterns. Understanding of these patterns can be used to guide healthcare policy-making and practice.
机译:老年患者,65岁或以上,占美国人口的13.5%,但在支出方面,占医疗保健利用者的10%的45.2%。中年美国人45至64岁,占该类别的37.0%。鉴于上述人口对医疗保健服务的需求很高,重要的是要确定医疗保健系统的高成本用户,更重要的是,在可以将有针对性的干预措施改善护理递送的情况下强调突出的突出显示。在这项工作中,我们提出了一种新的多级框架应用机器学习(ML)方法(即,随机森林回归和分层聚类),将具有与群集相似利用率的患者进行分组。我们使用传染媒介空间模型来表征患者的利用率,作为对不同护理提供者和规定的药物的访问次数。我们使用2013医疗支出面板调查(MEPS)数据集应用了所提出的方法。我们确定了美国老年人和中年成年人的医疗利用模式的集群,并评估了与这些利用模式相关的一般和临床特征。我们的结果展示了建议框架的有效性,以模拟医疗保健利用模式。理解这些模式可用于指导医疗保健政策制定和实践。

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