To improve precision of estimation and power of testing hypothesis for an unconditional treatment effect in randomized clinical trials with binary outcomes, researchers and regulatory agencies recommend using g-computation as a reliable method of covariate adjustment. However, the practical application of g-computation is hindered by the lack of an explicit robust variance formula that can be used for different unconditional treatment effects of interest. To fill this gap, we provide explicit and robust variance estimators for g-computation estimators and demonstrate through simulations that the variance estimators can be reliably applied in practice.
翻译:为了在附带二进制结果的随机临床试验中提高无条件治疗效果假设的估计精确度和测试能力,研究人员和监管机构建议使用G计算法作为共同变量调整的可靠方法,然而,由于缺乏可用于不同无条件治疗利益效果的明确稳健的差异公式,g计算的实际应用受到阻碍。为了填补这一差距,我们为g计算估计结果的测量者提供明确和有力的差异估计,并通过模拟表明差异估计者可以可靠地实际应用。