Department of Biostatistics, Singapore Clinical Research Institute, Singapore.
Am J Epidemiol. 2010 Aug 1;172(3):334-43. doi: 10.1093/aje/kwq099. Epub 2010 Jul 6.
The incidence rate difference (IRD) is a parameter of interest in many medical studies. For example, in vaccine studies, it is interpreted as the vaccine-attributable reduction in disease incidence. This is an important parameter, because it shows the public health impact of an intervention. The IRD is difficult to estimate for various reasons, especially when there are quantitative covariates or the duration of follow-up is variable. In this paper, the authors propose an approach based on weighted least-squares regression for estimating the IRD. It is very easy to implement because it boils down to performing ordinary least-squares regression analysis of transformed variables. Furthermore, if the outcome events are repeatable, the authors propose that data on all events be analyzed instead of first events only. Four versions of the Huber-White robust standard error are considered for statistical inference. Simulation studies are used to examine the performance of the proposed method. In a variety of scenarios simulated, the method provides an unbiased estimate for the IRD, and the empirical coverage proportion of the 95% confidence interval is very close to the nominal level. The method is illustrated with data from a vaccine trial carried out in the Gambia in 2001-2004.
发病率差(IRD)是许多医学研究中感兴趣的参数。例如,在疫苗研究中,它被解释为疾病发病率的疫苗归因减少。这是一个重要的参数,因为它显示了干预措施对公共卫生的影响。由于各种原因,IRD 很难估计,特别是当存在定量协变量或随访时间可变时。在本文中,作者提出了一种基于加权最小二乘回归的估计 IRD 的方法。它非常易于实施,因为它归结为对变换变量进行普通最小二乘回归分析。此外,如果结局事件是可重复的,作者建议分析所有事件的数据,而不是仅分析首次事件的数据。考虑了四种 Huber-White 稳健标准误差版本进行统计推断。模拟研究用于检验所提出方法的性能。在所模拟的各种情况下,该方法为 IRD 提供了无偏估计,95%置信区间的经验覆盖比例非常接近名义水平。该方法通过 2001-2004 年在冈比亚进行的疫苗试验的数据进行说明。