Department of Epidemiology, School of Public Health, University of North Carolina at Chapel Hill, Chapel Hill, North Carolina.
Division of Biostatistics, Department of Preventive Medicine, Keck School of Medicine, University of Southern California, Los Angeles, California.
Am J Epidemiol. 2019 Feb 1;188(2):444-450. doi: 10.1093/aje/kwy223.
A standard approach to analysis of case-cohort data involves fitting log-linear models. In this paper, we describe how standard statistical software can be used to fit a broad class of general relative rate models to case-cohort data and derive confidence intervals. We focus on a case-cohort design in which a roster has been assembled and events ascertained but additional information needs to be collected on explanatory variables. The additional information is ascertained just for persons who experience the event of interest and for a sample of the cohort members enumerated at study entry. One appeal of such a case-cohort design is that this sample of the cohort may be used to support analyses of several outcomes. The ability to fit general relative rate models to case-cohort data may allow an investigator to reduce model misspecification in exposure-response analyses, fit models in which some factors have effects that are additive and others multiplicative, and facilitate estimation of relative excess risk due to interaction. We address model fitting for simple random sampling study designs as well as stratified designs. Data on lung cancer among radon-exposed men (Colorado Plateau uranium miners, 1950-1990) are used to illustrate these methods.
一种分析病例-对照数据的标准方法涉及拟合对数线性模型。本文描述了如何使用标准统计软件来拟合广泛的一般相对风险模型,并得到置信区间。我们专注于一种病例-对照设计,其中已经编制了一份名单并确定了事件,但需要收集更多关于解释变量的信息。这些额外的信息是为那些经历了感兴趣的事件的人和在研究开始时列举的队列成员的样本收集的。这种病例-对照设计的一个吸引力在于,队列的这个样本可用于支持对多个结果的分析。将一般相对风险模型拟合到病例-对照数据中,可以使研究人员减少暴露反应分析中的模型误设定,拟合一些因素的效应是相加的,而另一些因素的效应是相乘的模型,并方便估计由于交互作用而导致的相对超额风险。我们讨论了简单随机抽样研究设计和分层设计中的模型拟合。利用暴露于氡的男性肺癌数据(科罗拉多高原铀矿工,1950-1990 年)来说明这些方法。