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K-means cluster analysis of rehabilitation service users in the home health care system of Ontario: Examining the heterogeneity of a complex geriatric population

机译:安大略省家庭医疗保健系统中康复服务用户的K均值聚类分析:检查复杂的老年人群的异质性

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Armstrong JJ, Zhu M, Hirdes JP, Stolee P. K-means cluster analysis of rehabilitation service users in the home health care system of Ontario: examining the heterogeneity of a complex geriatric population. Objective: To examine the heterogeneity of home care clients who use rehabilitation services by using the K-means algorithm to identify previously unknown patterns of clinical characteristics. Design: Observational study of secondary data. Setting: Home care system. Participants: Assessment information was collected on 150,253 home care clients using the provincially mandated Resident Assessment Instrument-Home Care (RAI-HC) data system. Interventions: Not applicable. Main Outcome Measures: Assessment information from every long-stay (>60d) home care client that entered the home care system between 2005 and 2008 and used rehabilitation services within 3 months of their initial assessment was analyzed. The K-means clustering algorithm was applied using 37 variables from the RAI-HC assessment. Results: The K-means cluster analysis resulted in the identification of 7 relatively homogeneous subgroups that differed on characteristics such as age, sex, cognition, and functional impairment. Client profiles were created to illustrate the diversity of this geriatric population. Conclusions: The K-means algorithm provided a useful way to segment a heterogeneous rehabilitation client population into more homogeneous subgroups. This analysis provides an enhanced understanding of client characteristics and needs, and could enable more appropriate targeting of rehabilitation services for home care clients.
机译:Armstrong JJ,朱敏,Hirdes JP,Stolee P. K-均值对安大略省家庭医疗保健系统中的康复服务使用者进行聚类分析:检查复杂的老年人群的异质性。目的:通过使用K-means算法确定以前未知的临床特征模式,来研究使用康复服务的家庭护理客户的异质性。设计:辅助数据的观察性研究。布置:家庭护理系统。参与者:使用省级授权的居民评估工具-家庭护理(RAI-HC)数据系统收集了150,253个家庭护理客户的评估信息。干预措施:不适用。主要结果指标:分析了从2005年至2008年进入家庭护理系统并在其初次评估的3个月内使用康复服务的所有长期(> 60天)家庭护理客户的评估信息。使用来自RAI-HC评估的37个变量应用K均值聚类算法。结果:K-均值聚类分析确定了在年龄,性别,认知和功能障碍等特征上不同的7个相对均一的亚组。创建了客户档案以说明该老年人群的多样性。结论:K-means算法提供了一种有用的方法,可以将异类的康复服务对象群体细分为更均一的亚组。这种分析可以加深对服务对象特征和需求的了解,并且可以使针对家庭护理服务对象的康复服务更加合适。

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