Department of Epidemiology, Institute of Social Medicine, Rio de Janeiro State University, Brazil.
BMC Med Res Methodol. 2010 Jul 15;10:66. doi: 10.1186/1471-2288-10-66.
Several papers have discussed which effect measures are appropriate to capture the contrast between exposure groups in cross-sectional studies, and which related multivariate models are suitable. Although some have favored the Prevalence Ratio over the Prevalence Odds Ratio -- thus suggesting the use of log-binomial or robust Poisson instead of the logistic regression models -- this debate is still far from settled and requires close scrutiny.
In order to evaluate how accurately true causal parameters such as Incidence Density Ratio (IDR) or the Cumulative Incidence Ratio (CIR) are effectively estimated, this paper presents a series of scenarios in which a researcher happens to find a preset ratio of prevalences in a given cross-sectional study. Results show that, provided essential and non-waivable conditions for causal inference are met, the CIR is most often inestimable whether through the Prevalence Ratio or the Prevalence Odds Ratio, and that the latter is the measure that consistently yields an appropriate measure of the Incidence Density Ratio.
Multivariate regression models should be avoided when assumptions for causal inference from cross-sectional data do not hold. Nevertheless, if these assumptions are met, it is the logistic regression model that is best suited for this task as it provides a suitable estimate of the Incidence Density Ratio.
已有多篇论文讨论了在横断面研究中,哪种效应测量指标适合捕捉暴露组之间的差异,以及哪种相关的多变量模型是合适的。虽然有人赞成使用患病率比而不是患病比值比——因此建议使用对数二项式或稳健泊松分布而不是逻辑回归模型——但这场争论远未解决,仍需要仔细审查。
为了评估真实的因果参数(如发病率密度比[IDR]或累积发病率比[CIR])的估计精度,本文提出了一系列场景,其中研究人员在给定的横断面研究中碰巧发现了预设的患病率比。结果表明,只要满足因果推断的必要且不可放弃的条件,CIR 通常是不可估计的,无论是通过患病率比还是患病比值比,而后者是一致产生适当的发病率密度比的衡量标准。
当从横断面数据进行因果推断的假设不成立时,应避免使用多变量回归模型。然而,如果这些假设成立,逻辑回归模型最适合这项任务,因为它提供了发病率密度比的适当估计。