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Pointwise confidence intervals for a survival distribution with small samples or heavy censoring

机译:小样本或严格审查的生存分布的逐点置信区间

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摘要

We propose a beta product confidence procedure (BPCP) that is a non-parametric confidence procedure for the survival curve at a fixed time for right-censored data assuming independent censoring. In such situations, the Kaplan–Meier estimator is typically used with an asymptotic confidence interval (CI) that can have coverage problems when the number of observed failures is not large, and/or when testing the latter parts of the curve where there are few remaining subjects at risk. The BPCP guarantees central coverage (i.e. ensures that both one-sided error rates are no more than half of the total nominal rate) when there is no censoring (in which case it reduces to the Clopper–Pearson interval) or when there is progressive type II censoring (i.e. when censoring only occurs immediately after failures on fixed proportions of the remaining individuals). For general independent censoring, simulations show that the BPCP maintains central coverage in many situations where competing methods can have very substantial error rate inflation for the lower limit. The BPCP gives asymptotically correct coverage and is asymptotically equivalent to the CI on the Kaplan–Meier estimator using Greenwood’s variance. The BPCP may be inverted to create confidence procedures for a quantile of the underlying survival distribution. Because the BPCP is easy to implement, offers protection in settings when other methods fail, and essentially matches other methods when they succeed, it should be the method of choice.
机译:我们提出一个beta产品置信度程序(BPCP),对于假设独立检查的右删失数据,它是固定时间生存曲线的非参数置信度过程。在这种情况下,Kaplan–Meier估计器通常与渐近置信区间(CI)一起使用,当观察到的故障数量不大时,和/或在测试曲线的后半部分时,该区间可能存在覆盖问题。其余受试者处于危险之中。当没有检查(在这种情况下,减少到Clopper-Pearson间隔)或存在渐进类型时,BPCP保证集中覆盖(即,确保单侧错误率均不超过总标称率的一半)。 II审查(即,仅在对固定比例的其余个人失败之后立即进行审查)。对于一般的独立审查,模拟显示,在许多情况下,BPCP会保持中心覆盖,在这种情况下,竞争方法可能会为下限带来非常大的错误率膨胀。 BPCP给出渐近正确的覆盖范围,并且渐近等效于使用格林伍德方差的Kaplan-Meier估计器上的CI。可以将BPCP倒置以创建置信程序,以计算基本生存分布的分位数。因为BPCP易于实现,在其他方法失败时在设置中提供保护,并且在其他方​​法成功时实质上与其他方法匹配,因此它应该是首选方法。

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