Wang Zhenxun, Lin Lifeng, Hodges James S, Chu Haitao
Division of Biostatistics, School of Public Health, University of Minnesota, Minneapolis, Minnesota, USA.
Department of Statistics, Florida State University, Tallahassee, Florida, USA.
Stat Med. 2020 Sep 30;39(22):2883-2900. doi: 10.1002/sim.8580. Epub 2020 Jun 3.
Bayesian analyses with the arm-based (AB) network meta-analysis (NMA) model require researchers to specify a prior distribution for the covariance matrix of the treatment-specific event rates in a transformed scale, for example, the treatment-specific log-odds when a logit transformation is used. The commonly used conjugate prior for the covariance matrix, the inverse-Wishart (IW) distribution, has several limitations. For example, although the IW distribution is often described as noninformative or weakly informative, it may in fact provide strong information when some variance components are small (eg, when the standard deviation of study-specific log-odds of a treatment is smaller than 1/2), as is common in NMAs with binary outcomes. In addition, the IW prior generally leads to underestimation of correlations between treatment-specific log-odds, which are critical for borrowing strength across treatment arms to estimate treatment effects efficiently and to reduce potential bias. Alternatively, several separation strategies (ie, separate priors on variances and correlations) can be considered. To study the IW prior's impact on NMA results and compare it with separation strategies, we did simulation studies under different missing-treatment mechanisms. A separation strategy with appropriate priors for the correlation matrix and variances performs better than the IW prior, and should be recommended as the default vague prior in the AB NMA approach. Finally, we reanalyzed three case studies and illustrated the importance, when performing AB-NMA, of sensitivity analyses with different prior specifications on variances.
使用基于臂的(AB)网络荟萃分析(NMA)模型进行贝叶斯分析时,研究人员需要为转换尺度下特定治疗事件率的协方差矩阵指定一个先验分布,例如,使用logit转换时的特定治疗对数优势。协方差矩阵常用的共轭先验——逆Wishart(IW)分布有几个局限性。例如,尽管IW分布通常被描述为非信息性或弱信息性,但当一些方差分量较小时(例如,当一种治疗的研究特定对数优势的标准差小于1/2时),它实际上可能会提供强信息,这在二元结局的NMA中很常见。此外,IW先验通常会导致对特定治疗对数优势之间相关性的低估,而这些相关性对于跨治疗组借用强度以有效估计治疗效果和减少潜在偏差至关重要。或者,可以考虑几种分离策略(即对方差和相关性采用单独的先验)。为了研究IW先验对NMA结果的影响并将其与分离策略进行比较,我们在不同的缺失治疗机制下进行了模拟研究。一种对相关矩阵和方差采用适当先验的分离策略比IW先验表现更好,应被推荐为AB NMA方法中的默认模糊先验。最后,我们重新分析了三个案例研究,并说明了在进行AB - NMA时,对方差采用不同先验规范进行敏感性分析的重要性。