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多维风险评分模型,基于老年人意外伤害预防(STEADI)框架,对未来有跌倒风险的社区居住老年人进行分层。

Multidimensional risk score to stratify community-dwelling older adults by future fall risk using the Stopping Elderly Accidents, Deaths and Injuries (STEADI) framework.

机构信息

Internal Medicine, Division of Physical Activity and Weight Management, University of Kansas Medical Center, Kansas City, Kansas, USA

Public Health Sciences, Clemson University, Clemson, South Carolina, USA.

出版信息

Inj Prev. 2021 Oct;27(5):461-466. doi: 10.1136/injuryprev-2020-044014. Epub 2020 Dec 22.

Abstract

BACKGROUND

The Stopping Elderly Accidents, Deaths and Injuries (STEADI) screening algorithm aligns with current fall prevention guidelines and is easy to administer within clinical practice. However, the stratification into low, moderate and high risk categories limits the meaningful interpretation of the fall-related risk factors.

METHODS

Baseline measures from a modified STEADI were used to predict self-reported falls over 4 years in 3170 respondents who participated in the 2011-2015 National Health and Aging Trends Study. A point method was then applied to find coefficient-based integers and 4-year fall risk estimates from the predictive model. Sensitivity and specificity estimates from the point method and the combined moderate and high fall risk STEADI categories were compared.

RESULTS

There were 886 (27.95%) and 387 (12.21%) respondents who were classified as moderate and high risk, respectively, when applying the stratification method. Falls in the past year (OR: 2.16; 95% CI: 1.61 to 2.89), multiple falls (OR: 2.94; 95% CI: 1.89 to 4.55) and a fear of falling (OR: 1.77; 95% CI: 1.45 to 2.16) were among the significant predictors of 4-year falls in older adults. The point method revealed integers that ranged from 0 (risk: 27.21%) to 44 (risk: 99.71%) and a score of 10 points had comparable discriminatory capacity to the combined moderate and high STEADI categories.

CONCLUSION

Coefficient-based integers and their risk estimates can provide an alternative interpretation of a predictive model that may be useful in determining fall risk within a clinical setting, tracking changes longitudinally and defining the effectiveness of an intervention.

摘要

背景

“阻止老年人意外伤害、死亡和伤害(STEADI)”筛查算法与当前的防跌倒指南一致,易于在临床实践中实施。然而,将风险分为低、中、高风险类别限制了对与跌倒相关的风险因素的有意义的解释。

方法

使用改良的 STEADI 的基线测量值来预测 3170 名参加 2011-2015 年国家健康与老龄化趋势研究的受访者在 4 年内的自我报告跌倒情况。然后应用点法从预测模型中找到基于系数的整数和 4 年跌倒风险估计值。比较点法和中度和高度跌倒风险 STEADI 类别的综合敏感性和特异性估计值。

结果

当应用分层方法时,分别有 886(27.95%)和 387(12.21%)名受访者被归类为中度和高度风险。过去一年的跌倒(OR:2.16;95%CI:1.61 至 2.89)、多次跌倒(OR:2.94;95%CI:1.89 至 4.55)和害怕跌倒(OR:1.77;95%CI:1.45 至 2.16)是老年人 4 年内跌倒的重要预测因素。点法显示的整数范围从 0(风险:27.21%)到 44(风险:99.71%),10 分的分数与中度和高度 STEADI 类别相结合具有相当的区分能力。

结论

基于系数的整数及其风险估计值可以为预测模型提供替代解释,这可能有助于在临床环境中确定跌倒风险、纵向跟踪变化和定义干预措施的有效性。

https://cdn.ncbi.nlm.nih.gov/pmc/blobs/edd0/9940266/6af1a4232d32/nihms-1872820-f0001.jpg

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