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首页> 外文期刊>Statistics in medicine >Bootstrap-based methods for estimating standard errors in Cox's regression analyses of clustered event times.
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Bootstrap-based methods for estimating standard errors in Cox's regression analyses of clustered event times.

机译:基于Bootstrap的方法,用于在Cox的聚类事件时间回归分析中估计标准误差。

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We propose two bootstrap-based methods to correct the standard errors (SEs) from Cox's model for within-cluster correlation of right-censored event times. The cluster-bootstrap method resamples, with replacement, only the clusters, whereas the two-step bootstrap method resamples (i) the clusters, and (ii) individuals within each selected cluster, with replacement. In simulations, we evaluate both methods and compare them with the existing robust variance estimator and the shared gamma frailty model, which are available in statistical software packages. We simulate clustered event time data, with latent cluster-level random effects, which are ignored in the conventional Cox's model. For cluster-level covariates, both proposed bootstrap methods yield accurate SEs, and type I error rates, and acceptable coverage rates, regardless of the true random effects distribution, and avoid serious variance under-estimation by conventional Cox-based standard errors. However, the two-step bootstrap method over-estimates the variance for individual-level covariates. We also apply the proposed bootstrap methods to obtain confidence bands around flexible estimates of time-dependent effects in a real-life analysis of cluster event times.
机译:我们提出了两种基于引导程序的方法来纠正Cox模型中针对右删失事件时间的集群内相关性的标准误差(SE)。 cluster-bootstrap方法仅通过替换对群集进行重新采样,而两步引导程序方法(i)对群集进行采样,并且(ii)每个选定群集中的个体通过替换进行重新采样。在仿真中,我们评估这两种方法,并将它们与现有的鲁棒方差估计器和共享伽玛脆弱模型(可在统计软件包中使用)进行比较。我们用潜在的簇级随机效应模拟簇事件时间数据,而传统的Cox模型忽略了这些数据。对于群集级别的协变量,无论采用哪种真正的随机效应分布,两种提议的自举方法均会产生准确的SE,I型错误率和可接受的覆盖率,并且避免了传统基于Cox的标准误差对方差的严重估计。但是,两步引导程序方法高估了各个级别协变量的方差。我们还应用提出的引导程序方法,在对群集事件时间的真实分析中,获得了围绕时间依赖性效应的灵活估计的置信带。

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