Tian M, Tang M L, Ng H K T, Chan P S
The School of Statistics, Renmin University of China, Beijing 100872, China.
Stat Med. 2008 Jul 30;27(17):3301-24. doi: 10.1002/sim.3158.
In this paper, we investigate various confidence intervals for the risk ratio under inverse sampling (also known as negative binomial sampling). Three existing confidence intervals (namely, the confidence intervals that are based on Fieller's theorem, the delta method and the F-statistic) are reviewed and three new confidence intervals (namely, the score, likelihood ratio and saddlepoint approximation (SA)-based confidence intervals) are developed. Comparative studies among these confidence intervals through Monte Carlo simulations are evaluated in terms of their coverage probabilities and expected interval widths under different settings. Our simulation results suggest that the SA-based confidence interval is generally more appealing. We illustrate these confidence interval construction methods with real data sets from a drug comparison study and a congenital heart disease study.
在本文中,我们研究了逆抽样(也称为负二项式抽样)下风险比的各种置信区间。回顾了三个现有的置信区间(即基于菲勒定理、德尔塔方法和F统计量的置信区间),并开发了三个新的置信区间(即基于得分、似然比和鞍点近似(SA)的置信区间)。通过蒙特卡罗模拟对这些置信区间进行了比较研究,评估了它们在不同设置下的覆盖概率和预期区间宽度。我们的模拟结果表明,基于SA的置信区间通常更具吸引力。我们用药物比较研究和先天性心脏病研究的真实数据集说明了这些置信区间的构建方法。