Department of Biostatistics, EBPI, University of Zurich, Zurich, Switzerland.
Department of Mathematics, University of Oslo, Oslo, Norway.
Biom J. 2021 Dec;63(8):1555-1574. doi: 10.1002/bimj.202000193. Epub 2021 Aug 10.
In recent years, Bayesian meta-analysis expressed by a normal-normal hierarchical model (NNHM) has been widely used for combining evidence from multiple studies. Data provided for the NNHM are frequently based on a small number of studies and on uncertain within-study standard deviation values. Despite the widespread use of Bayesian NNHM, it has always been unclear to what extent the posterior inference is impacted by the heterogeneity prior (sensitivity ) and by the uncertainty in the within-study standard deviation values (identification ). Thus, to answer this question, we developed a unified method to simultaneously quantify both sensitivity and identification ( - ) for all model parameters in a Bayesian NNHM, based on derivatives of the Bhattacharyya coefficient with respect to relative latent model complexity (RLMC) perturbations. Three case studies exemplify the applicability of the method proposed: historical data for a conventional therapy, data from which one large study is first included and then excluded, and two subgroup meta-analyses specified by their randomization status. We analyzed six scenarios, crossing three RLMC targets with two heterogeneity priors (half-normal, half-Cauchy). The results show that - explicitly reveals which parameters are affected by the heterogeneity prior and by the uncertainty in the within-study standard deviation values. In addition, we compare the impact of both heterogeneity priors and quantify how - values are affected by omitting one large study and by the randomization status. Finally, the range of applicability of - is extended to Bayesian NtHM. A dedicated R package facilitates automatic - quantification in applied Bayesian meta-analyses.
近年来,基于正态-正态层级模型(NNHM)的贝叶斯荟萃分析已被广泛应用于合并多项研究的证据。NNHM 中提供的数据通常基于少数几项研究,且研究内标准差的数值存在不确定性。尽管贝叶斯 NNHM 已被广泛应用,但对于后验推断受异质性先验(敏感性)和研究内标准差不确定性(识别)影响的程度,一直没有明确的认识。因此,为了回答这个问题,我们基于贝塔系数(Bhattacharyya coefficient)相对于相对潜在模型复杂度(relative latent model complexity,RLMC)扰动的导数,开发了一种统一的方法,用于同时定量估计贝叶斯 NNHM 中所有模型参数的敏感性和识别()。三个案例研究说明了该方法的适用性:常规治疗的历史数据、首先纳入然后排除一项大型研究的数据,以及按随机分组状态指定的两个亚组荟萃分析。我们分析了六种情况,跨越了三个 RLMC 目标和两个异质性先验(正态半、柯西半)。结果表明,明确揭示了哪些参数受异质性先验和研究内标准差不确定性的影响。此外,我们比较了两种异质性先验的影响,并量化了排除一项大型研究和随机分组状态如何影响。最后,将的适用性范围扩展到了贝叶斯 NtHM。一个专用的 R 包便于在应用贝叶斯荟萃分析中自动进行定量分析。