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Kaplan–Meier survival analysis overestimates cumulative incidence of health-related events in competing risk settings: a meta-analysis

机译:Kaplan-Meier生存分析高估竞争风险环境中健康相关事件的累积发生率:META分析

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Abstract Objectives KaplanMeier survival analysis overestimates cumulative incidence in competing risks (CRs) settings. The extent of overestimation (or its clinical significance) has been questioned, and CRs methods are infrequently used. This meta-analysis compares the KaplanMeier method to the cumulative incidence function (CIF), a CRs method. Study Design and Setting We searched MEDLINE, EMBASE, BIOSIS Previews, Web of Science (19922016), and article bibliographies for studies estimating cumulative incidence using the KaplanMeier method and CIF. For studies with sufficient data, we calculated pooled risk ratios (RRs) comparing KaplanMeier and CIF estimates using DerSimonian and Laird random effects models. We performed stratified meta-analyses by clinical area, rate of CRs (CRs/events of interest), and follow-up time. Results Of 2,192 identified abstracts, we included 77 studies in the systematic review and meta-analyzed 55. The pooled RR demonstrated the KaplanMeier estimate was 1.41 [95% confidence interval (CI): 1.36, 1.47] times higher than the CIF. Overestimation was highest among studies with high rates of CRs [RR??.36 (95% CI: 1.79, 3.12)], studies related to hepatology [RR??.60 (95% CI: 2.12, 3.19)], and obstetrics and gynecology [RR??.84 (95% CI: 1.52, 2.23)]. Conclusion The KaplanMeier method overestimated the cumulative incidence across 10 clinical areas. Using CRs methods will ensure accurate results inform clinical and policy decisions.
机译:摘要目的Kaplanmeier存活分析高估竞争风险(CRS)设置的累积发病率。过度估计的程度(或其临床意义)已经质疑,并且CRS方法很少使用。该元分析将Kaplanmeier方法与CRS方法进行了比较了累积发射功能(CIF)。研究设计和设置我们搜索了Medline,Embase,Biosis预览,科学网(19922016),以及使用Kaplanmeier方法和CIF估算累积发病率的研究。对于具有足够数据的研究,我们计算汇集的风险比(RRS)比较Kaplanmeier和CIF估计使用划分率和莱尔德随机效应模型。我们通过临床区域进行分层的荟萃分析,CRS(感兴趣的CRS /事件)和随访时间。结果2,192所识别的摘要,我们在系统审查中包括77项研究和荟萃分析55.汇集的RR显示Kaplanmeier估计为1.41 [95%置信区间(CI):1.36,1.47]倍。在CRS高率的研究中高估是最高的[RR吗??。36(95%CI:1.79,3.12)],与肝脏有关的研究[RR吗??。60(95%CI:2.12,3.19)]和产科和妇科[RR吗??。84(95%CI:1.52,2.23)]。结论Kaplanmeier方法高估了10个临床区域的累积发病率。使用CRS方法将确保准确的结果为临床和政策决策提供信息。

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