论文标题
不良事件的生存分析,随访时间不同(精明) - 不良事件风险的估计
Survival analysis for AdVerse events with VarYing follow-up times (SAVVY) -- estimation of adverse event risks
论文作者
论文摘要
精明的项目旨在通过适当处理不同的随访时间和竞争事件(CES)来改善临床试验中不良事件数据(AE)数据的分析。尽管统计方法已经提高了,但在AE分析中通常使用了发病率比例,或使用非参数Kaplan-Meier估计器(KME),它们忽略了审查或CES。在一项包括来自几个赞助者组织的随机临床试验的实证研究中,研究了这些潜在的偏见来源。主要目的是将通常用于AE分析中通常使用的估计值与Aalen-Johansen估计器(AJE)作为金标准。在这里,报告了一个样本的发现,而伴随论文在比较治疗组时会考虑后果。将估计器与描述性统计,图形显示和随机效应荟萃分析进行比较。在元回归中研究了不同因素对偏差大小的影响。比较是在最大随访时间和较早的评估时间点进行的。 CES的定义不仅包括AE之前的死亡,而且还包括与疾病病程或治疗有关的事件,AE的随访结束。十个赞助商组织提供了17个试验,包括186种AES。一个负KME平均比AJE大约1.2倍。影响偏见的主要力量是审查的量和CES的数量。结果,使用发病率比例的平均偏差小于5%。假设使用发病率的恒定危害几乎不是一个问题。有必要提高报告AES风险的准则,以便用适当的CES定义的AJE代替KME和发病率比例。
The SAVVY project aims to improve the analyses of adverse event (AE) data in clinical trials through the use of survival techniques appropriately dealing with varying follow-up times and competing events (CEs). Although statistical methodologies have advanced, in AE analyses often the incidence proportion, the incidence density, or a non-parametric Kaplan-Meier estimator (KME) are used, which either ignore censoring or CEs. In an empirical study including randomized clinical trials from several sponsor organisations, these potential sources of bias are investigated. The main aim is to compare the estimators that are typically used in AE analysis to the Aalen-Johansen estimator (AJE) as the gold-standard. Here, one-sample findings are reported, while a companion paper considers consequences when comparing treatment groups. Estimators are compared with descriptive statistics, graphical displays and with a random effects meta-analysis. The influence of different factors on the size of the bias is investigated in a meta-regression. Comparisons are conducted at the maximum follow-up time and at earlier evaluation time points. CEs definition does not only include death before AE but also end of follow-up for AEs due to events possibly related to the disease course or the treatment. Ten sponsor organisations provided 17 trials including 186 types of AEs. The one minus KME was on average about 1.2-fold larger than the AJE. Leading forces influencing bias were the amount of censoring and of CEs. As a consequence, the average bias using the incidence proportion was less than 5%. Assuming constant hazards using incidence densities was hardly an issue provided that CEs were accounted for. There is a need to improve the guidelines of reporting risks of AEs so that the KME and the incidence proportion are replaced by the AJE with an appropriate definition of CEs.