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STEADI 有多稳定?CDC 跌倒风险工具包的推理分析。

How steady is the STEADI? Inferential analysis of the CDC fall risk toolkit.

机构信息

Doctor of Physical Therapy Program, College of Health Sciences, Midwestern University, Glendale, AZ, United States.

Doctor of Physical Therapy Program, University of Arkansas for Medical Sciences, Fayetteville, AR, United States.

出版信息

Arch Gerontol Geriatr. 2019 Jul-Aug;83:185-194. doi: 10.1016/j.archger.2019.02.018. Epub 2019 Mar 18.

Abstract

INTRODUCTION

The CDC developed the STEADI toolkit to assist providers with incorporating fall risk screening, assessment of modifiable risk factors, and implementing evidence-based treatment strategies. The purpose of this study was two-fold: analyze the STEADI algorithm for strengths/weaknesses based upon inferential data and provide recommendations for additional research and possible limitations of the STEADI toolkit from a physical therapy perspective.

METHODS

This investigation employed a quantitative, cross-sectional cohort design collating data from community-dwelling and retirement-facility seniors (n = 77) from two regions of the U.S. Data is reported based upon descriptive statistics, correlation, and validity of the STEADI algorithm, its subcomponent tests, and self-reported fall data. All participants completed the Stay Independent Brochure (SIB) and the algorithm's mobility, balance, and lower extremity strength tests regardless of risk categorization.

RESULTS

Sensitivity of the STEADI with discriminating fallers and predicting future falls was better among community-dwellers (73-80%) versus the retirement facility-dwellers (56-62%). The STEADI demonstrated high false negative rates among those categorized as low risk as 57% community-dwellers and 24% facility-dwellers fell in the prior 12 months and several fell within 6 months following participation. Results suggest that it is important to conduct more than one mobility or balance screening test, and indicate that elevated STEADI risk classification was not associated with advancing age.

CONCLUSIONS

Outcomes from this study suggest that cut-off scores and the selection of functional fall screening tests, as well as the relative weights and scoring of items on the SIB/3KQ be reevaluated to maximize discriminate and predictive validity of the algorithm.

摘要

简介

美国疾病控制与预防中心(CDC)开发了 STEADI 工具包,以帮助医务人员进行跌倒风险筛查、评估可改变的风险因素,并实施基于证据的治疗策略。本研究的目的有两个:一是根据推断性数据分析 STEADI 算法的优缺点;二是从物理治疗的角度,为该工具包提供额外的研究和可能的局限性建议。

方法

本研究采用定量、横断队列设计,收集了来自美国两个地区的社区居住者和退休设施居住者(n=77)的数据。数据报告基于描述性统计、相关性以及 STEADI 算法及其子组件测试和自我报告的跌倒数据的有效性。所有参与者都完成了 Stay Independent Brochure(SIB)和算法的移动性、平衡和下肢力量测试,无论风险分类如何。

结果

在区分跌倒者和预测未来跌倒方面,STEADI 的敏感性在社区居住者中(73-80%)优于退休设施居住者(56-62%)。STEADI 在低风险人群中的假阴性率较高,57%的社区居住者和 24%的设施居住者在过去 12 个月内跌倒,其中一些人在参与后 6 个月内跌倒。结果表明,进行一次以上的移动或平衡筛查测试很重要,并且表明 STEADI 风险分类的升高与年龄的增长无关。

结论

本研究的结果表明,需要重新评估截值分数和功能跌倒筛查测试的选择,以及 SIB/3KQ 上项目的相对权重和评分,以最大程度地提高算法的区分度和预测准确性。

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