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引用次数: 0
摘要
比例差常用于衡量随机临床试验中二元结局的治疗效果。对预后基线协变量进行调整可提高差异比例估计的精确度并增强统计能力。标准化或 g 计算是估计无条件差异比例时广泛使用的一种协变量调整方法,因为它对模型错误规范具有稳健性。基于大样本理论,人们提出了各种推断方法来量化不确定性和置信区间。然而,这些方法在小样本量和模型误设情况下的表现尚未得到全面评估。我们提出了一种基于稳健三明治估计器估计标准化估计器无条件方差的替代方法,以进一步提高有限样本性能。我们提供了大量模拟,以证明所提方法在样本大小、随机化比率和模型规范等广泛范围内的性能。我们在一个真实数据示例中应用了所提出的方法,以说明其实用性。
Covariate adjustment and estimation of difference in proportions in randomized clinical trials.
Difference in proportions is frequently used to measure treatment effect for binary outcomes in randomized clinical trials. The estimation of difference in proportions can be assisted by adjusting for prognostic baseline covariates to enhance precision and bolster statistical power. Standardization or g-computation is a widely used method for covariate adjustment in estimating unconditional difference in proportions, because of its robustness to model misspecification. Various inference methods have been proposed to quantify the uncertainty and confidence intervals based on large-sample theories. However, their performances under small sample sizes and model misspecification have not been comprehensively evaluated. We propose an alternative approach to estimate the unconditional variance of the standardization estimator based on the robust sandwich estimator to further enhance the finite sample performance. Extensive simulations are provided to demonstrate the performances of the proposed method, spanning a wide range of sample sizes, randomization ratios, and model specification. We apply the proposed method in a real data example to illustrate the practical utility.
期刊介绍:
Pharmaceutical Statistics is an industry-led initiative, tackling real problems in statistical applications. The Journal publishes papers that share experiences in the practical application of statistics within the pharmaceutical industry. It covers all aspects of pharmaceutical statistical applications from discovery, through pre-clinical development, clinical development, post-marketing surveillance, consumer health, production, epidemiology, and health economics.
The Journal is both international and multidisciplinary. It includes high quality practical papers, case studies and review papers.