论文标题
贝叶斯多元逻辑回归,可观察到的异质性下的优势和自卑决策
Bayesian multivariate logistic regression for superiority and inferiority decision-making under observable treatment heterogeneity
论文作者
论文摘要
具有不同特征的人的治疗作用可能有所不同。解决这种治疗异质性对于调查具有特定特征的患者是否可能受益于新治疗方法至关重要。本文在具有多元二元响应和异质治疗效果的随机对照试验的背景下提出了一种新型的贝叶斯方法,用于优势决策。该框架基于三个要素:a)贝叶斯多元逻辑回归分析,并具有Pólya-Gamma的扩展; b)转换程序将获得的回归系数转移到更直观的多元概率量表(即成功概率及其之间的差异); c)与预定的决策错误率的治疗比较的兼容决策程序。包括在非信息性先验分布下进行先验样本量估计的程序。数值评估表明,基于先验样本量估计的决策导致试验人群和亚群的预期错误率。此外,当样本足够大时,可以公正地估计平均和条件治疗效应参数。国际中风试验数据集的插图揭示了中风患者的异质效应的趋势:当分析仅限于平均治疗效果时,这种趋势会一直未被发现。
The effects of treatments may differ between persons with different characteristics. Addressing such treatment heterogeneity is crucial to investigate whether patients with specific characteristics are likely to benefit from a new treatment. The current paper presents a novel Bayesian method for superiority decision-making in the context of randomized controlled trials with multivariate binary responses and heterogeneous treatment effects. The framework is based on three elements: a) Bayesian multivariate logistic regression analysis with a Pólya-Gamma expansion; b) a transformation procedure to transfer obtained regression coefficients to a more intuitive multivariate probability scale (i.e., success probabilities and the differences between them); and c) a compatible decision procedure for treatment comparison with prespecified decision error rates. Procedures for a priori sample size estimation under a non-informative prior distribution are included. A numerical evaluation demonstrated that decisions based on a priori sample size estimation resulted in anticipated error rates among the trial population as well as subpopulations. Further, average and conditional treatment effect parameters could be estimated unbiasedly when the sample was large enough. Illustration with the International Stroke Trial dataset revealed a trend towards heterogeneous effects among stroke patients: Something that would have remained undetected when analyses were limited to average treatment effects.