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首页> 外文期刊>Journal of biopharmaceutical statistics >A HIERARCHICAL BINOMIAL-POISSON MODEL FOR THE ANALYSIS OF A CROSSOVER DESIGN FOR CORRELATED BINARY DATA WHEN THE NUMBER OF TRIALS IS DOSE-DEPENDENT
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A HIERARCHICAL BINOMIAL-POISSON MODEL FOR THE ANALYSIS OF A CROSSOVER DESIGN FOR CORRELATED BINARY DATA WHEN THE NUMBER OF TRIALS IS DOSE-DEPENDENT

机译:用于分析相关二元数据的交叉设计的分层二重奏泊松模型,当试验的数量依赖时

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摘要

The differential reinforcement of a low-rate 72-seconds schedule (DRL-72) is a standard behavioral test procedure for screening a potential antidepressant compound. The data analyzed in the article are binary outcomes from a crossover design for such an experiment. Recently, Shkedy et al. (2004) proposed to estimate the treatments effect using either generalized linear mixed models (GLMM) or generalized estimating equations (GEE) for clustered binary data. The models proposed by Shkedy et al. (2004) assumed the number of responses at each binomial observation is fixed. This might be an unrealistic assumption for a behavioral experiment such as the DRL-72 because the number of responses (the number of trials in each binomial observation) is expected to be influenced by the administered dose level. In this article, we extend the model proposed by Shkedy et al. (2004) and propose a hierarchical Bayesian binomial-Poisson model, which assumes the number of responses to be a Poisson random variable. The results obtained from the GLMM and the binomial-Poisson models are comparable. However, the latter model allows estimating the correlation between the number of successes and number of trials.
机译:低速率72秒调度(DRL-72)的差异增强是用于筛选电势抗抑郁化合物的标准行为测试程序。在物品中分析的数据是来自交叉设计的二进制结果,用于这种实验。最近,Shkedy等人。 (2004)建议使用广义线性混合模型(GLMM)或广义估计方程(GEE)来估算治疗效果,用于聚类二进制数据。 Shkedy等人提出的模型。 (2004)假设每个二项式观察的响应次数是固定的。这可能是一种不切实际的假设对行为实验,例如DRL-72,因为预期应对响应的数量(每个二项式观察中的试验数量)受到施用剂量水平的影响。在本文中,我们扩展了Shkedy等人提出的模型。 (2004)并提出了一个分层贝叶斯二项式 - 泊松模型,它假设是泊松随机变量的响应的数量。从GLMM获得的结果和二项式 - 泊松模型是可比的。然而,后一种模型允许估计成功数量与试验数量之间的相关性。

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