Yanagawa T
Environ Health Perspect. 1979 Oct;32:143-56. doi: 10.1289/ehp.7932143.
Identification of confounding factors, evaluation of their influence on cause-effect associations, and the introduction of appropriate ways to account for these factors are important considerations in designing case-control studies. This paper presents designs useful for these purposes, after first providing a statistical definition of a confounding factor. Differences in the ability to identify and evaluate confounding factors and estimate disease risk between designs employing stratification (matching) and designs randomly sampling cases and controls are noted. Linear logistic models for the analysis of data from such designs are described and are shown to liberalize design requirements and to increase relative risk estimation efficiency. The methods are applied to data from a multiple factor investigation of lung cancer patients and controls.
识别混杂因素、评估其对因果关联的影响以及引入适当的方法来处理这些因素,是设计病例对照研究时的重要考量。本文在首先给出混杂因素的统计学定义之后,介绍了适用于这些目的的设计。文中指出了采用分层(匹配)设计与随机抽样病例和对照的设计在识别和评估混杂因素以及估计疾病风险能力上的差异。描述了用于分析此类设计数据的线性逻辑模型,该模型放宽了设计要求并提高了相对风险估计效率。这些方法应用于肺癌患者和对照的多因素调查数据。