Sun Xuemei, Chen Yancong, Gao Yinyan, Zhang Zixuan, Qin Lang, Song Jinlu, Wang Huan, Wu Irene Xy
1Department of Epidemiology and Biostatistics, Xiangya School of Public Health, Central South University, Changsha 410000, Hunan, China.
2Hunan Provincial Key Laboratory of Clinical Epidemiology, Changsha 410000, China.
Aging Dis. 2022 Jul 11;13(4):1215-1238. doi: 10.14336/AD.2021.1206.
Osteoporotic fractures (OF) are a global public health problem currently. Many risk prediction models for OF have been developed, but their performance and methodological quality are unclear. We conducted this systematic review to summarize and critically appraise the OF risk prediction models. Three databases were searched until April 2021. Studies developing or validating multivariable models for OF risk prediction were considered eligible. Used the prediction model risk of bias assessment tool to appraise the risk of bias and applicability of included models. All results were narratively summarized and described. A total of 68 studies describing 70 newly developed prediction models and 138 external validations were included. Most models were explicitly developed (n=31, 44%) and validated (n=76, 55%) only for female. Only 22 developed models (31%) were externally validated. The most validated tool was Fracture Risk Assessment Tool. Overall, only a few models showed outstanding (n=3, 1%) or excellent (n=32, 15%) prediction discrimination. Calibration of developed models (n=25, 36%) or external validation models (n=33, 24%) were rarely assessed. No model was rated as low risk of bias, mostly because of an insufficient number of cases and inappropriate assessment of calibration. There are a certain number of OF risk prediction models. However, few models have been thoroughly internally validated or externally validated (with calibration being unassessed for most of the models), and all models showed methodological shortcomings. Instead of developing completely new models, future research is suggested to validate, improve, and analyze the impact of existing models.
骨质疏松性骨折(OF)目前是一个全球性的公共卫生问题。已经开发了许多用于OF的风险预测模型,但其性能和方法学质量尚不清楚。我们进行了这项系统评价,以总结和批判性评价OF风险预测模型。检索了三个数据库至2021年4月。考虑将开发或验证用于OF风险预测的多变量模型的研究纳入。使用预测模型偏倚风险评估工具评估纳入模型的偏倚风险和适用性。所有结果均进行了叙述性总结和描述。共纳入68项研究,描述了70个新开发的预测模型和138次外部验证。大多数模型仅针对女性进行了明确开发(n = 31,44%)和验证(n = 76,55%)。仅22个开发的模型(31%)进行了外部验证。验证最多的工具是骨折风险评估工具。总体而言,只有少数模型显示出出色(n = 3,1%)或优秀(n = 32,15%)的预测辨别力。很少评估开发模型(n = 25,36%)或外部验证模型(n = 33,24%)的校准情况。没有模型被评为低偏倚风险,主要是因为病例数量不足以及校准评估不当。有一定数量的OF风险预测模型。然而,很少有模型经过全面的内部验证或外部验证(大多数模型未评估校准),并且所有模型都存在方法学上的缺陷。建议未来的研究不是开发全新的模型,而是验证、改进和分析现有模型的影响。