电子衰弱指数在使用电子健康记录数据识别高风险老年人中的应用

IF 4.5 2区 医学 Q1 GERIATRICS & GERONTOLOGY
Bharati Kochar, David Cheng, Hanna-Riikka Lehto, Nelia Jain, Elizabeth Araka, Christine S. Ritchie, Rachelle Bernacki, Ariela R. Orkaby
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引用次数: 0

摘要

背景:虚弱的测量在临床实践中是有限的。现有的电子虚弱指数(eFIs)来自常规的初级保健就诊,几乎完全捕获了健康状况。我们的目标是根据常规收集的临床数据开发eFI,并评估其在没有完全健康状况捕获的老年人中的表现。方法:使用来自综合区域卫生系统的电子健康记录(EHR)数据,我们创建了一个2017年1月1日年龄≥60岁的患者队列,这些患者在3年前有2次门诊就诊,或在2年前有1次门诊就诊。我们基于使用诊断和程序代码确定的31个年龄相关缺陷开发了eFI。虚弱状态被分类为健壮(eFI 0.3)。我们估计了累积死亡率、急诊就诊和虚弱再入院率,并拟合了Cox比例风险模型。我们在接受该系统初级保健的患者亚队列中重复分析。结果:518449例患者中,男性占43%,平均年龄72岁;73%强健,16%体弱,7%体弱,4%非常体弱。与健康的老年人相比,非常虚弱的老年人的死亡率(HR: 4.1, 95% CI: 4.0-4.3)、急诊就诊(HR: 5.5, 95% CI: 5.4-5.6)和90天再入院(HR: 2.1, 95% CI: 2.1-2.2)的风险明显更高。在初级保健亚队列中,虽然缺陷的患病率较高,但与结果的关联相似。结论:即使没有常规初级保健访问的数据,该eFI也确定了老年人不良健康结果风险增加。该工具可以集成到电子病历中,进行大规模的脆弱性评估。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Application of an Electronic Frailty Index to Identify High-Risk Older Adults Using Electronic Health Record Data

Background

Measurement of frailty is limited in clinical practice. Existing electronic frailty indices (eFIs) are derived from routine primary care encounters, with near-complete health condition capture. We aimed to develop an eFI from routinely collected clinical data and evaluate its performance in older adults without complete health condition capture.

Methods

Using Electronic Health Record (EHR) data from an integrated regional health system, we created a cohort of patients who were ≥ 60 years on January 1, 2017 with two outpatient encounters in 3 years prior or one outpatient encounter in 2 years prior. We developed an eFI based on 31 age-related deficits identified using diagnostic and procedure codes. Frailty status was categorized as robust (eFI < 0.1), prefrail (0.1–0.2), frail (0.2–0.3), and very frail (> 0.3). We estimated cumulative incidence of mortality, acute care visits and readmissions by frailty, and fit Cox proportional hazards models. We repeated analyses in a sub-cohort of patients who receive primary care in the system.

Results

Among 518,449 patients, 43% were male with a mean age of 72 years; 73% were robust, 16% were pre-frail, 7% were frail, and 4% were very frail. Very frail older adults had a significantly higher risk for mortality (HR: 4.1, 95% CI: 4.0–4.3), acute care visits (HR: 5.5, 95% CI: 5.4–5.6), and 90-day readmissions (HR: 2.1, 95% CI: 2.1–2.2) than robust older adults. In a primary care sub-cohort, while prevalence of deficits was higher, associations with outcomes were similar.

Conclusions

This eFI identified older adults at increased risk for adverse health outcomes even when data from routine primary care visits were not available. This tool can be integrated into EHRs for frailty assessment at scale.

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来源期刊
CiteScore
10.00
自引率
6.30%
发文量
504
审稿时长
3-6 weeks
期刊介绍: Journal of the American Geriatrics Society (JAGS) is the go-to journal for clinical aging research. We provide a diverse, interprofessional community of healthcare professionals with the latest insights on geriatrics education, clinical practice, and public policy—all supporting the high-quality, person-centered care essential to our well-being as we age. Since the publication of our first edition in 1953, JAGS has remained one of the oldest and most impactful journals dedicated exclusively to gerontology and geriatrics.
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