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Survival analysis for AdVerse events with VarYing follow-up times (SAVVY)—estimation of adverse event risks

机译:不同随访时间(Savvy)的不良事件的生存分析 - 反驳事件风险

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The SAVVY project aims to improve the analyses of adverse events (AEs), whether prespecified or emerging, 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 are used, which ignore either censoring or CEs. In an empirical study including randomized clinical trials from several sponsor organizations, these potential sources of bias are investigated. The main purpose is to compare the estimators that are typically used to quantify AE risk within trial arms to the non-parametric Aalen-Johansen estimator as the gold-standard for estimating cumulative AE probabilities. A follow-up paper will consider consequences when comparing safety between treatment groups. Estimators are compared with descriptive statistics, graphical displays, and a more formal assessment using a random effects meta-analysis. The influence of different factors on the size of deviations from the gold-standard is investigated in a meta-regression. Comparisons are conducted at the maximum follow-up time and at earlier evaluation times. CEs definition does not only include death before AE but also end of follow-up for AEs due to events related to the disease course or safety of the treatment. Ten sponsor organizations provided 17 clinical trials including 186 types of investigated AEs. The one minus Kaplan-Meier estimator was on average about 1.2-fold larger than the Aalen-Johansen estimator and the probability transform of the incidence density ignoring CEs was even 2-fold larger. 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. The meta-regression showed that the bias depended mainly on the amount of censoring and on the amount of CEs. The choice of the estimator of the cumulative AE probability and the definition of CEs are crucial. We recommend using the Aalen-Johansen estimator with an appropriate definition of CEs whenever the risk for AEs is to be quantified and to change the guidelines accordingly.
机译:Savvy项目旨在通过利用适当处理不同随访时间和竞争事件(CES)的临床试验,改善临床试验中的不良事件(AES)的分析。虽然统计方法已经前进,但在AE分析中,使用的发生率比例,发射密度或非参数Kaplan-Meier估计器,忽略了抗义或CES。在一个实证研究中,包括来自若干赞助商组织的随机临床试验,调查了这些潜在的偏见来源。主要目的是比较通常用于量化试用武器内的AE风险的估算器,以将非参数AALEN-Johansen估计作为估算累积AE概率的金标准。随访纸将在比较治疗组之间的安全性时考虑后果。使用随机效应META分析将估算器与描述性统计数据,图形显示和更正式的评估进行比较。在荟萃回归中研究了不同因素对来自金标准的偏差大小的影响。比较在最大的后续时间和早期的评估时间进行。 CES定义不仅包括在AE之前的死亡,而且由于与疾病课程或治疗安全相关的事件,AE的后续行动结束。十个赞助商组织提供了17项临床试验,包括186种调查AES。一个减去Kaplan-Meier估计的平均大约1.2倍,比Aalen-Johansen估计器大约1.2倍,发射密度忽略CES的概率变换均匀2倍。使用入射比例的平均偏差小于5%。假设使用发病率密度的持续危害几乎没有问题,条件是CES被占。元回归表明,偏差主要依赖于抗污染的量和CE的量。累积AE概率的估算器的选择和CE的定义至关重要。我们建议使用AES风险的AEN-Johansen估算器,并在对AES的风险相应地改变指南时进行适当的CE定义。

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