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Bayesian model selection techniques as decision support for shaping a statistical analysis plan of a clinical trial: An example from a vertigo phase III study with longitudinal count data as primary endpoint

机译:贝叶斯模型选择技术作为制定临床试验统计分析计划的决策依据:以纵向计数数据为主要终点的眩晕III期研究的一个例子

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Background A statistical analysis plan (SAP) is a critical link between how a clinical trial is conducted and the clinical study report. To secure objective study results, regulatory bodies expect that the SAP will meet requirements in pre-specifying inferential analyses and other important statistical techniques. To write a good SAP for model-based sensitivity and ancillary analyses involves non-trivial decisions on and justification of many aspects of the chosen setting. In particular, trials with longitudinal count data as primary endpoints pose challenges for model choice and model validation. In the random effects setting, frequentist strategies for model assessment and model diagnosis are complex and not easily implemented and have several limitations. Therefore, it is of interest to explore Bayesian alternatives which provide the needed decision support to finalize a SAP. Methods We focus on generalized linear mixed models (GLMMs) for the analysis of longitudinal count data. A series of distributions with over- and under-dispersion is considered. Additionally, the structure of the variance components is modified. We perform a simulation study to investigate the discriminatory power of Bayesian tools for model criticism in different scenarios derived from the model setting. We apply the findings to the data from an open clinical trial on vertigo attacks. These data are seen as pilot data for an ongoing phase III trial. To fit GLMMs we use a novel Bayesian computational approach based on integrated nested Laplace approximations (INLAs). The INLA methodology enables the direct computation of leave-one-out predictive distributions. These distributions are crucial for Bayesian model assessment. We evaluate competing GLMMs for longitudinal count data according to the deviance information criterion (DIC) or probability integral transform (PIT), and by using proper scoring rules (e.g. the logarithmic score). Results The instruments under study provide excellent tools for preparing decisions within the SAP in a transparent way when structuring the primary analysis, sensitivity or ancillary analyses, and specific analyses for secondary endpoints. The mean logarithmic score and DIC discriminate well between different model scenarios. It becomes obvious that the naive choice of a conventional random effects Poisson model is often inappropriate for real-life count data. The findings are used to specify an appropriate mixed model employed in the sensitivity analyses of an ongoing phase III trial. Conclusions The proposed Bayesian methods are not only appealing for inference but notably provide a sophisticated insight into different aspects of model performance, such as forecast verification or calibration checks, and can be applied within the model selection process. The mean of the logarithmic score is a robust tool for model ranking and is not sensitive to sample size. Therefore, these Bayesian model selection techniques offer helpful decision support for shaping sensitivity and ancillary analyses in a statistical analysis plan of a clinical trial with longitudinal count data as the primary endpoint.
机译:背景技术统计分析计划(SAP)是进行临床试验的方式与临床研究报告之间的关键链接。为了确保获得客观的研究结果,监管机构希望SAP能够满足预先指定推理分析和其他重要统计技术的要求。要为基于模型的敏感性和辅助分析编写好的SAP,需要对所选设置的许多方面做出非平凡的决策并证明其合理性。特别是,以纵向计数数据为主要终点的试验对模型选择和模型验证提出了挑战。在随机效应设置中,用于模型评估和模型诊断的频繁策略非常复杂且难以实施,并且存在一些局限性。因此,有必要探索贝叶斯替代方案,这些替代方案为最终确定SAP提供所需的决策支持。方法我们集中于广义线性混合模型(GLMM)来分析纵向计数数据。考虑了具有过度分散和欠分散的一系列分布。另外,对方差分量的结构进行了修改。我们进行了一项仿真研究,以研究在从模型设置派生的不同情况下,贝叶斯工具对模型批评的区分能力。我们将这些发现应用于关于眩晕发作的开放临床试验的数据。这些数据被视为正在进行的III期试验的试验数据。为了适合GLMM,我们使用了基于集成嵌套拉普拉斯近似(INLA)的新颖贝叶斯计算方法。 INLA方法可以直接计算留一法式的预测分布。这些分布对于贝叶斯模型评估至关重要。我们根据偏差信息标准(DIC)或概率积分变换(PIT)并使用适当的评分规则(例如对数得分)来评估纵向计数数据的竞争GLMM。结果在构建主要分析,敏感性或辅助分析以及次要终点的特定分析时,所研究的仪器为以透明方式在SAP内制定决策提供了出色的工具。平均对数得分和DIC可以很好地区分不同模型场景。显而易见的是,常规随机效应泊松模型的天真选择通常不适用于现实生活中的计数数据。这些发现用于指定正在进行的III期试验的敏感性分析中采用的适当混合模型。结论提出的贝叶斯方法不仅吸引了推理,而且还提供了对模型性能不同方面(例如预测验证或校准检查)的深入了解,并且可以在模型选择过程中应用。对数得分的平均值是用于模型排名的可靠工具,并且对样本量不敏感。因此,这些贝叶斯模型选择技术为以纵向计数数据为主要终点的临床试验统计分析计划中的成形敏感性和辅助分析提供了有用的决策支持。

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