利用现有临床数据衡量老年住院病人入院和出院时的虚弱程度:医院病人登记研究》。

IF 5 Q1 GERIATRICS & GERONTOLOGY
JMIR Aging Pub Date : 2024-10-28 DOI:10.2196/54839
Boris Wernli, Henk Verloo, Armin von Gunten, Filipa Pereira
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引用次数: 0

摘要

背景:虚弱是老年人(包括住院老年患者)中普遍存在的一种老年综合征。一些国家使用电子虚弱测量工具来识别初级保健层面的虚弱,但这种方法很少在急症护理医院的住院期间进行调查。以人群为基础的医院电子健康记录为基础的电子虚弱测量工具可以有效地检测虚弱、与虚弱相关的问题和并发症,并发出临床警报。利用现有的患者健康数据来识别老年人的虚弱程度,将大大有助于管理和支持虚弱程度的识别,并能在不增加成本的情况下提供有价值的公共卫生工具:目的:我们旨在利用入院和出院时收集的常规数据,为老年住院患者探索一种数据驱动的虚弱测量工具:一项回顾性电子病历研究纳入了一家公立医院 2015 年至 2017 年期间入院和出院的年龄≥65 岁的住院患者。受Rolfson等人开发的埃德蒙顿虚弱量表的启发,利用53690例住院患者的数据集定制了这一数据驱动的虚弱测量工具,采用两步分层聚类程序计算入院和出院时的e-Frail-CH(瑞士)评分。计算了患病率、中心倾向、比较和验证统计数据:入院时患者的平均年龄为 78.4 岁(标准差为 7.9 岁),女性患者(28,018/53,690,52.18%)多于男性患者(25,672/53,690,47.81%)。我们的两步分层聚类法计算了 46,743 个入院输入和 47,361 个出院输入。聚类解决方案的评分范围为 0.5 至 0.8(从 0 到 1)。被认为体弱的患者占入院人数的 42.02%(n=19,643)和出院人数的 48.23%(n=22,845)。在 e-Frail-CH 的 0-12 分范围内,得分≥6 表示体弱。我们发现,在入院(5.3,SD 2.6)和出院(5.75,SD 2.7;Ps=-0.844;PC 结论)之间,e-Frail-CH 的平均得分变化具有统计学意义:利用住院期间,特别是入院和出院时收集的患者常规数据,构建并验证了电子虚弱测量工具。出院时的 e-Frail-CH 平均得分高于入院时。在住院期间常规计算 e-Frail-CH 分数可以为老年人的健康轨迹提供非常有用的临床警示,并有助于选择预防或减轻虚弱的干预措施。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Using Existing Clinical Data to Measure Older Adult Inpatients' Frailty at Admission and Discharge: Hospital Patient Register Study.

Background: Frailty is a widespread geriatric syndrome among older adults, including hospitalized older inpatients. Some countries use electronic frailty measurement tools to identify frailty at the primary care level, but this method has rarely been investigated during hospitalization in acute care hospitals. An electronic frailty measurement instrument based on population-based hospital electronic health records could effectively detect frailty, frailty-related problems, and complications as well be a clinical alert. Identifying frailty among older adults using existing patient health data would greatly aid the management and support of frailty identification and could provide a valuable public health instrument without additional costs.

Objective: We aim to explore a data-driven frailty measurement instrument for older adult inpatients using data routinely collected at hospital admission and discharge.

Methods: A retrospective electronic patient register study included inpatients aged ≥65 years admitted to and discharged from a public hospital between 2015 and 2017. A dataset of 53,690 hospitalizations was used to customize this data-driven frailty measurement instrument inspired by the Edmonton Frailty Scale developed by Rolfson et al. A 2-step hierarchical cluster procedure was applied to compute e-Frail-CH (Switzerland) scores at hospital admission and discharge. Prevalence, central tendency, comparative, and validation statistics were computed.

Results: Mean patient age at admission was 78.4 (SD 7.9) years, with more women admitted (28,018/53,690, 52.18%) than men (25,672/53,690, 47.81%). Our 2-step hierarchical clustering approach computed 46,743 inputs of hospital admissions and 47,361 for discharges. Clustering solutions scored from 0.5 to 0.8 on a scale from 0 to 1. Patients considered frail comprised 42.02% (n=19,643) of admissions and 48.23% (n=22,845) of discharges. Within e-Frail-CH's 0-12 range, a score ≥6 indicated frailty. We found a statistically significant mean e-Frail-CH score change between hospital admission (5.3, SD 2.6) and discharge (5.75, SD 2.7; P<.001). Sensitivity and specificity cut point values were 0.82 and 0.88, respectively. The area under the receiver operating characteristic curve was 0.85. Comparing the e-Frail-CH instrument to the existing Functional Independence Measure (FIM) instrument, FIM scores indicating severe dependence equated to e-Frail-CH scores of ≥9, with a sensitivity and specificity of 0.97 and 0.88, respectively. The area under the receiver operating characteristic curve was 0.92. There was a strong negative association between e-Frail-CH scores at hospital discharge and FIM scores (rs=-0.844; P<.001).

Conclusions: An electronic frailty measurement instrument was constructed and validated using patient data routinely collected during hospitalization, especially at admission and discharge. The mean e-Frail-CH score was higher at discharge than at admission. The routine calculation of e-Frail-CH scores during hospitalization could provide very useful clinical alerts on the health trajectories of older adults and help select interventions for preventing or mitigating frailty.

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来源期刊
JMIR Aging
JMIR Aging Social Sciences-Health (social science)
CiteScore
6.50
自引率
4.10%
发文量
71
审稿时长
12 weeks
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