Ren Minhua, Guo Hongtao, Guo Yingjie, Guo Wanjun, Zhu Liangjin
School of Nursing, Inner Mongolia Medical University, Hohhot, China.
Nursing Department, Affiliated Hospital of Inner Mongolia Medical University, Hohhot, China.
BMC Geriatr. 2025 May 22;25(1):365. doi: 10.1186/s12877-025-05961-2.
Recently, many risk prediction models for Cognitive Frailty (CF) in older people in China have been developed. However, there is a shortage of large-scale systematic and comprehensive studies of the methods, quality, and predictors involved in model development.
To systematically assess the risk prediction model of CF in older people in China and to conduct a meta-analysis of its predictors.
PubMed, Cochrane Library, EMbase, Web of Science, CNKI, Wanfang, VIP, and SinoMed were searched from the inception to April 30, 2024. Two researchers independently screened the literature and extracted data. The quality of studies was assessed using the PROBAST tool. Additionally, Stata 18.0 software and MedCalc software were employed to perform a meta-analysis of the modeled predictors and area under the curve (AUC).
17 articles were included, encompassing 22 CF risk prediction models, involving 9,614 participants, of which 2488 (25.9%) were diagnosed with CF. 15 models reported discrimination by AUC (0.710 to 0.991). 8 models conducted internal validation, while 7 models performed external validation. PROBAST evaluation results found that 15 articles (15/17, 88.24%) exhibited a high risk of bias (ROB). The most common predictors were advanced age, irregular exercise, malnutrition, depression, Barthel Index score, female gender, and Instrumental Activities of Daily Living (IADL) score.
Due to imprecise modeling methods, incomplete presentation, and lack of external validation, the models' usefulness still needs to be determined. Seven predictive factors are established predictors for CF among older people, including advanced age and so on, but the roles of educational level and fall incidents warrant further investigation.
近年来,中国已开发出许多针对老年人认知衰弱(CF)的风险预测模型。然而,对于模型开发所涉及的方法、质量和预测因素,缺乏大规模的系统性综合研究。
系统评估中国老年人CF的风险预测模型,并对其预测因素进行荟萃分析。
检索了从数据库建库至2024年4月30日的PubMed、Cochrane图书馆、EMbase、Web of Science、中国知网、万方、维普和中国生物医学文献数据库。两名研究人员独立筛选文献并提取数据。使用PROBAST工具评估研究质量。此外,使用Stata 18.0软件和MedCalc软件对建模预测因素和曲线下面积(AUC)进行荟萃分析。
纳入17篇文章,包含22个CF风险预测模型,涉及9614名参与者,其中2488人(25.9%)被诊断为CF。15个模型报告了AUC的区分度(0.710至0.991)。8个模型进行了内部验证,7个模型进行了外部验证。PROBAST评估结果发现,15篇文章(15/17,88.24%)存在高偏倚风险(ROB)。最常见的预测因素是高龄、运动不规律、营养不良、抑郁、巴氏指数评分、女性性别和工具性日常生活活动(IADL)评分。
由于建模方法不精确、呈现不完整以及缺乏外部验证,这些模型的实用性仍有待确定。七个预测因素是老年人CF的既定预测指标,包括高龄等,但教育水平和跌倒事件的作用值得进一步研究。