Division of Geriatric Medicine and Center for Aging and Health, the Institute on Aging, and the Department of Emergency Medicine, University of North Carolina at Chapel Hill, Chapel Hill, NC, USA.
Acad Emerg Med. 2010 Mar;17(3):252-9. doi: 10.1111/j.1553-2712.2009.00675.x.
Methods to accurately identify elderly patients with a high likelihood of hospital admission or subsequent return to the emergency department (ED) might facilitate the development of interventions to expedite the admission process, improve patient care, and reduce overcrowding. This study sought to identify variables found among elderly ED patients that could predict either hospital admission or return to the ED.
All visits by patients 75 years of age or older during 2007 at an academic ED serving a large community of elderly were reviewed. Clinical and demographic data were used to construct regression models to predict admission or ED return. These models were then validated in a second group of patients 75 and older who presented during two 1-month periods in 2008.
Of 4,873 visits, 3,188 resulted in admission (65.4%). Regression modeling identified five variables statistically related to the probability of admission: age, triage score, heart rate, diastolic blood pressure, and chief complaint. Upon validation, the c-statistic of the receiver operating characteristic (ROC) curve was 0.73, moderately predictive of admission. We were unable to produce models that predicted ED return for these elderly patients.
A derived and validated triage-based model is presented that provides a moderately accurate probability of hospital admission of elderly patients. If validated experimentally, this model might expedite the admission process for elderly ED patients. Our models failed, as have others, to accurately predict ED return among elderly patients, underscoring the challenge of identifying those individuals at risk for early ED returns.
准确识别极有可能住院或随后返回急诊科(ED)的老年患者的方法可能有助于制定干预措施,以加快入院流程,改善患者护理,并减少过度拥挤。本研究旨在确定在老年 ED 患者中发现的变量,这些变量可以预测住院或返回 ED。
回顾了 2007 年在一所为大量老年人群服务的学术 ED 就诊的 75 岁及以上患者的所有就诊情况。使用临床和人口统计学数据构建回归模型来预测入院或 ED 复诊。然后,在 2008 年的两个 1 个月期间就诊的 75 岁及以上的第二组患者中验证这些模型。
在 4873 次就诊中,有 3188 次导致入院(65.4%)。回归建模确定了与入院概率相关的五个统计学变量:年龄、分诊评分、心率、舒张压和主要主诉。验证时,接收器操作特征(ROC)曲线的 c 统计量为 0.73,对入院有中度预测能力。我们无法为这些老年患者建立预测 ED 复诊的模型。
提出了一种衍生和验证的基于分诊的模型,该模型可提供老年患者住院概率的中等准确性。如果经过实验验证,该模型可能会加快老年 ED 患者的入院流程。我们的模型和其他人的模型一样,无法准确预测老年患者的 ED 复诊,这突显了识别那些有早期 ED 复诊风险的患者的挑战。