Biostatistics Research Branch, Division of Clinical Research, National Institute of Allergy and Infectious Diseases, Rockville, MD, USA.
Department of Statistics, Virginia Polytechnic Institute and State University, Blacksburg, VA, USA.
Stat Methods Med Res. 2021 Feb;30(2):563-579. doi: 10.1177/0962280220968178. Epub 2020 Nov 4.
In matched case-crossover studies, any stratum effect is removed by conditioning on the fixed number of case-control sets in the stratum, and hence, the conditional logistic regression model is not able to detect any effects associated with matching covariates. However, some matching covariates such as time and location often modify the effect of covariates, making the estimations obtained by conditional logistic regression incorrect. Therefore, in this paper, we propose a flexible derivative time-varying coefficient model to evaluate effect modification by time and location, in order to make correct statistical inference, when the number of locations is small. Our proposed model is developed under the Bayesian hierarchical model framework and allows us to simultaneously detect relationships between the predictor and binary outcome and between the predictor and time. Inference is proposed based on the derivative function of the estimated function to determine whether there is an effect modification due to time and/or location, for a small number of locations among the participants. We demonstrate the accuracy of the estimation using a simulation study and an epidemiological example of a 1-4 bidirectional case-crossover study of childhood aseptic meningitis with drinking water turbidity.
在匹配病例对照研究中,通过在层中 Conditioning 固定数量的病例对照集来消除任何层效应,因此,条件逻辑回归模型无法检测到与匹配协变量相关的任何效应。然而,一些匹配协变量,如时间和地点,通常会改变协变量的效应,使得条件逻辑回归得到的估计值不正确。因此,在本文中,我们提出了一种灵活的导数时变系数模型,以评估时间和地点的效应修饰,以便在位置数量较少时进行正确的统计推断。我们提出的模型是在贝叶斯层次模型框架下开发的,允许我们同时检测预测因子与二元结果之间以及预测因子与时间之间的关系。基于估计函数的导数函数提出了推断,以确定参与者中少数位置是否存在由于时间和/或位置引起的效应修饰。我们使用仿真研究和饮用水浑浊度对儿童无菌性脑膜炎的 1-4 双向病例对照研究的流行病学实例来证明估计的准确性。