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Empirical Bayes models of Poisson clinical trials and sample size determination.

机译:泊松临床试验的经验贝叶斯模型和样本量确定。

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Bayesian methods are often used to reduce the sample sizes and/or increase the power of clinical trials. The right choice of the prior distribution is a critical step in Bayesian modeling. If the prior not completely specified, historical data may be used to estimate it. In the empirical Bayesian analysis, the resulting prior can be used to produce the posterior distribution. In this paper, we describe a Bayesian Poisson model with a conjugate Gamma prior. The parameters of Gamma distribution are estimated in the empirical Bayesian framework under two estimation schemes. The straightforward numerical search for the maximum likelihood (ML) solution using the marginal negative binomial distribution is unfeasible occasionally. We propose a simplification to the maximization procedure. The Markov Chain Monte Carlo method is used to create a set of Poisson parameters from the historical count data. These Poisson parameters are used to uniquely define the Gamma likelihood function. Easily computable approximation formulae may be used to find the ML estimations for the parameters of gamma distribution. For the sample size calculations, the ML solution is replaced by its upper confidence limit to reflect an incomplete exchangeability of historical trials as opposed to current studies. The exchangeability is measured by the confidence interval for the historical rate of the events. With this prior, the formula for the sample size calculation is completely defined.
机译:贝叶斯方法通常用于减小样本量和/或增加临床试验的功效。在贝叶斯建模中,正确选择先验分布是至关重要的一步。如果没有完全指定先验,则可以使用历史数据对其进行估计。在经验贝叶斯分析中,所得先验可用于产生后验分布。在本文中,我们描述了先验具有共轭Gamma的贝叶斯泊松模型。 Gamma分布的参数是在经验贝叶斯框架下采用两种估算方案估算的。有时使用边际负二项式分布进行最大似然(ML)解的直接数值搜索是不可行的。我们建议简化最大化过程。马尔可夫链蒙特卡罗方法用于根据历史计数数据创建一组泊松参数。这些泊松参数用于唯一定义Gamma似然函数。可以使用容易计算的近似公式来找到伽马分布参数的ML估计。对于样本量计算,ML解决方案被其置信度上限所代替,以反映历史试验与当前研究相对不完全可交换。可交换性通过事件历史速率的置信区间来度量。有了这个先验,就可以完全确定用于样本量计算的公式。

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