Bayesian generalized method of moments applied to pseudo-observations in survival analysis.

IF 1 3区 数学 Q3 MATHEMATICS, INTERDISCIPLINARY APPLICATIONS
Léa Orsini, Caroline Brard, Emmanuel Lesaffre, Guosheng Yin, David Dejardin, Gwénaël Le Teuff
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引用次数: 0

Abstract

Bayesian inference for survival regression modeling offers numerous advantages, especially for decision-making and external data borrowing, but demands the specification of the baseline hazard function, which may be a challenging task. We propose an alternative approach that does not need the specification of this function. Our approach combines pseudo-observations to convert censored data into longitudinal data with the generalized method of moments (GMM) to estimate the parameters of interest from the survival function directly. GMM may be viewed as an extension of the generalized estimating equations (GEE) currently used for frequentist pseudo-observations analysis and can be extended to the Bayesian framework using a pseudo-likelihood function. We assessed the behavior of the frequentist and Bayesian GMM in the new context of analyzing pseudo-observations. We compared their performances to the Cox, GEE, and Bayesian piecewise exponential models through a simulation study of two-arm randomized clinical trials. Frequentist and Bayesian GMMs gave valid inferences with similar performances compared to the three benchmark methods, except for small sample sizes and high censoring rates. For illustration, three post-hoc efficacy analyses were performed on randomized clinical trials involving patients with Ewing Sarcoma, producing results similar to those of the benchmark methods. Through a simple application of estimating hazard ratios, these findings confirm the effectiveness of this new Bayesian approach based on pseudo-observations and the generalized method of moments. This offers new insights on using pseudo-observations for Bayesian survival analysis.

贝叶斯广义矩法在生存分析伪观测中的应用。
贝叶斯推理用于生存回归建模具有许多优点,特别是在决策和外部数据借用方面,但需要规范基线风险函数,这可能是一项具有挑战性的任务。我们提出了一种替代方法,不需要该函数的规范。我们的方法结合伪观测将截短数据转换为纵向数据,并使用广义矩量法(GMM)直接从生存函数中估计感兴趣的参数。GMM可以看作是目前用于频率伪观测分析的广义估计方程(GEE)的扩展,并且可以使用伪似然函数扩展到贝叶斯框架。我们在分析伪观测的新背景下评估了频率主义者和贝叶斯GMM的行为。通过对两组随机临床试验的模拟研究,我们将其性能与Cox、GEE和Bayesian分段指数模型进行了比较。除了样本量小和审查率高之外,频率主义者和贝叶斯GMMs给出了与三种基准方法相似的有效推断。为了说明,对尤因肉瘤患者的随机临床试验进行了三次事后疗效分析,得出的结果与基准方法相似。通过一个简单的估计风险比的应用,这些发现证实了这种基于伪观测和广义矩法的贝叶斯方法的有效性。这为贝叶斯生存分析的伪观察提供了新的见解。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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来源期刊
Lifetime Data Analysis
Lifetime Data Analysis 数学-数学跨学科应用
CiteScore
2.30
自引率
7.70%
发文量
43
审稿时长
3 months
期刊介绍: The objective of Lifetime Data Analysis is to advance and promote statistical science in the various applied fields that deal with lifetime data, including: Actuarial Science – Economics – Engineering Sciences – Environmental Sciences – Management Science – Medicine – Operations Research – Public Health – Social and Behavioral Sciences.
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