Department of Medical Informatics, Amsterdam UMC location University of Amsterdam, Amsterdam, The Netherlands.
Amsterdam Public Health, Aging and Later Life & Methodology, Amsterdam, The Netherlands.
Age Ageing. 2024 Jul 2;53(7). doi: 10.1093/ageing/afae131.
Prediction models can identify fall-prone individuals. Prediction models can be based on either data from research cohorts (cohort-based) or routinely collected data (RCD-based). We review and compare cohort-based and RCD-based studies describing the development and/or validation of fall prediction models for community-dwelling older adults.
Medline and Embase were searched via Ovid until January 2023. We included studies describing the development or validation of multivariable prediction models of falls in older adults (60+). Both risk of bias and reporting quality were assessed using the PROBAST and TRIPOD, respectively.
We included and reviewed 28 relevant studies, describing 30 prediction models (23 cohort-based and 7 RCD-based), and external validation of two existing models (one cohort-based and one RCD-based). The median sample sizes for cohort-based and RCD-based studies were 1365 [interquartile range (IQR) 426-2766] versus 90 441 (IQR 56 442-128 157), and the ranges of fall rates were 5.4% to 60.4% versus 1.6% to 13.1%, respectively. Discrimination performance was comparable between cohort-based and RCD-based models, with the respective area under the receiver operating characteristic curves ranging from 0.65 to 0.88 versus 0.71 to 0.81. The median number of predictors in cohort-based final models was 6 (IQR 5-11); for RCD-based models, it was 16 (IQR 11-26). All but one cohort-based model had high bias risks, primarily due to deficiencies in statistical analysis and outcome determination.
Cohort-based models to predict falls in older adults in the community are plentiful. RCD-based models are yet in their infancy but provide comparable predictive performance with no additional data collection efforts. Future studies should focus on methodological and reporting quality.
预测模型可用于识别易跌倒的个体。预测模型可以基于研究队列的数据(基于队列)或常规收集的数据(基于 RCD)。我们综述和比较了基于队列和基于 RCD 的研究,这些研究描述了用于社区居住的老年人跌倒预测模型的开发和/或验证。
通过 Ovid 检索 Medline 和 Embase,截至 2023 年 1 月。我们纳入了描述老年人(60 岁以上)跌倒多变量预测模型开发或验证的研究。分别使用 PROBAST 和 TRIPOD 评估风险偏倚和报告质量。
我们纳入并综述了 28 项相关研究,描述了 30 个预测模型(23 个基于队列,7 个基于 RCD),以及对两个现有模型(一个基于队列,一个基于 RCD)的外部验证。基于队列和基于 RCD 的研究的中位样本量分别为 1365 [四分位距(IQR)426-2766]和 90441(IQR 56442-128157),跌倒率范围分别为 5.4%至 60.4%和 1.6%至 13.1%。基于队列和基于 RCD 的模型的区分性能相当,各自的受试者工作特征曲线下面积范围分别为 0.65 至 0.88 和 0.71 至 0.81。基于队列的最终模型中预测因子的中位数数量为 6(IQR 5-11);对于基于 RCD 的模型,中位数数量为 16(IQR 11-26)。除一个模型外,所有基于队列的模型都存在较高的偏倚风险,主要原因是统计分析和结果确定方面存在缺陷。
用于预测社区中老年人跌倒的基于队列的模型很多。基于 RCD 的模型尚处于起步阶段,但无需额外的数据收集工作即可提供相当的预测性能。未来的研究应侧重于方法学和报告质量。