Nadarajah Ramesh, Younsi Tanina, Romer Elizabeth, Raveendra Keerthenan, Nakao Yoko M, Nakao Kazuhiro, Shuweidhi Farag, Hogg David C, Arbel Ronen, Zahger Doron, Iakobishvili Zaza, Fonarow Gregg C, Petrie Mark C, Wu Jianhua, Gale Chris P
Leeds Institute for Cardiovascular and Metabolic Medicine, University of Leeds, Leeds, UK.
Leeds Institute of Data Analytics, University of Leeds, Leeds, UK.
Eur J Heart Fail. 2023 Oct;25(10):1724-1738. doi: 10.1002/ejhf.2970. Epub 2023 Jul 31.
Multivariable prediction models can be used to estimate risk of incident heart failure (HF) in the general population. A systematic review and meta-analysis was performed to determine the performance of models.
From inception to 3 November 2022 MEDLINE and EMBASE databases were searched for studies of multivariable models derived, validated and/or augmented for HF prediction in community-based cohorts. Discrimination measures for models with c-statistic data from ≥3 cohorts were pooled by Bayesian meta-analysis, with heterogeneity assessed through a 95% prediction interval (PI). Risk of bias was assessed using PROBAST. We included 36 studies with 59 prediction models. In meta-analysis, the Atherosclerosis Risk in Communities (ARIC) risk score (summary c-statistic 0.802, 95% confidence interval [CI] 0.707-0.883), GRaph-based Attention Model (GRAM; 0.791, 95% CI 0.677-0.885), Pooled Cohort equations to Prevent Heart Failure (PCP-HF) white men model (0.820, 95% CI 0.792-0.843), PCP-HF white women model (0.852, 95% CI 0.804-0.895), and REverse Time AttentIoN model (RETAIN; 0.839, 95% CI 0.748-0.916) had a statistically significant 95% PI and excellent discrimination performance. The ARIC risk score and PCP-HF models had significant summary discrimination among cohorts with a uniform prediction window. 77% of model results were at high risk of bias, certainty of evidence was low, and no model had a clinical impact study.
Prediction models for estimating risk of incident HF in the community demonstrate excellent discrimination performance. Their usefulness remains uncertain due to high risk of bias, low certainty of evidence, and absence of clinical effectiveness research.
多变量预测模型可用于估计普通人群发生心力衰竭(HF)的风险。进行了一项系统评价和荟萃分析以确定模型的性能。
从数据库建立至2022年11月3日,检索MEDLINE和EMBASE数据库,查找在基于社区的队列中推导、验证和/或扩充用于HF预测的多变量模型的研究。通过贝叶斯荟萃分析汇总来自≥3个队列且有c统计量数据的模型的鉴别指标,并通过95%预测区间(PI)评估异质性。使用PROBAST评估偏倚风险。我们纳入了36项研究中的59个预测模型。在荟萃分析中,社区动脉粥样硬化风险(ARIC)评分(汇总c统计量0.802,95%置信区间[CI]0.707 - 0.883)、基于图的注意力模型(GRAM;0.791,95% CI 0.677 - 0.885)、预防心力衰竭的合并队列方程(PCP - HF)白人男性模型(0.820,95% CI 0.792 - 0.843)、PCP - HF白人女性模型(0.852,95% CI 0.804 - 0.895)和反向时间注意力模型(RETAIN;0.839,95% CI 0.748 - 0.916)具有统计学显著的95% PI和出色的鉴别性能。ARIC风险评分和PCP - HF模型在具有统一预测窗口的队列之间具有显著的汇总鉴别能力。77%的模型结果存在高偏倚风险,证据确定性低,且没有模型进行过临床影响研究。
用于估计社区中发生HF风险的预测模型显示出出色的鉴别性能。由于高偏倚风险、低证据确定性以及缺乏临床有效性研究,其有用性仍不确定。