痴呆症患者从社区向长期住院护理过渡的预测算法的推导和验证--一项回顾性队列研究。

PLOS digital health Pub Date : 2024-10-18 eCollection Date: 2024-10-01 DOI:10.1371/journal.pdig.0000441
Wenshan Li, Luke Turcotte, Amy T Hsu, Robert Talarico, Danial Qureshi, Colleen Webber, Steven Hawken, Peter Tanuseputro, Douglas G Manuel, Greg Huyer
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引用次数: 0

摘要

目的开发并验证一个模型,以预测痴呆症患者入住长期护理中心的时间:设计:基于人口的回顾性队列研究,使用健康管理数据:2010年4月1日至2017年3月31日期间,安大略省居住在社区的患有痴呆症的老年人(65岁以上),并使用家庭护理居民评估工具(RAI-HC)进行评估:对衍生队列(n = 95,813;2015 年 3 月 31 日之前评估)中的个人进行了长达 360 天的随访,随访时间为 RAI-HC 评估指数进入 LTC 后的 360 天。我们使用了一个多变量 Fine Gray 子分布危险模型来预测进入 LTC 的累积发病率,同时将全因死亡率作为竞争风险加以考虑。该模型在2015年4月1日至2017年3月31日期间进行了RAI-HC指数评估的34038名老年痴呆症患者中进行了验证:在RAI-HC评估后的一年内,推导队列中有35513人(37.1%)和验证队列中有10735人(31.5%)进入了LTC。我们的算法校准良好(Emax = 0.119,ICIavg = 0.057),验证队列中的 c 统计量为 0.707(95% 置信区间:0.703-0.712):我们开发了一种算法来预测痴呆症患者进入长期护理中心的时间。该工具可为痴呆症患者及其家庭护理者的护理规划提供参考。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Derivation and validation of an algorithm to predict transitions from community to residential long-term care among persons with dementia-A retrospective cohort study.

Objectives: To develop and validate a model to predict time-to-LTC admissions among individuals with dementia.

Design: Population-based retrospective cohort study using health administrative data.

Setting and participants: Community-dwelling older adults (65+) in Ontario living with dementia and assessed with the Resident Assessment Instrument for Home Care (RAI-HC) between April 1, 2010 and March 31, 2017.

Methods: Individuals in the derivation cohort (n = 95,813; assessed before March 31, 2015) were followed for up to 360 days after the index RAI-HC assessment for admission into LTC. We used a multivariable Fine Gray sub-distribution hazard model to predict the cumulative incidence of LTC entry while accounting for all-cause mortality as a competing risk. The model was validated in 34,038 older adults with dementia with an index RAI-HC assessment between April 1, 2015 and March 31, 2017.

Results: Within one year of a RAI-HC assessment, 35,513 (37.1%) individuals in the derivation cohort and 10,735 (31.5%) in the validation cohort entered LTC. Our algorithm was well-calibrated (Emax = 0.119, ICIavg = 0.057) and achieved a c-statistic of 0.707 (95% confidence interval: 0.703-0.712) in the validation cohort.

Conclusions and implications: We developed an algorithm to predict time to LTC entry among individuals living with dementia. This tool can inform care planning for individuals with dementia and their family caregivers.

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