Day N E, Byar D P
Biometrics. 1979 Sep;35(3):623-30.
The two approaches in common use for the analysis of case-control studies are cross-classification by confounding variables, and modeling the logarithm of the odds ratio as a function of exposure and confounding variables. We show here that score statistics derived from the likelihood function in the latter approach are identical to the Mantel-Haenszel test statistics appropriate for the former approach. This identity holds in the most general situation considered, testing for marginal homogeneity in mK tables. This equivalence is demonstrated by a permutational argument which leads to a general likelihood expression in which the exposure variable may be a vector of discrete and/or continuous variables and in which more than two comparison groups may be considered. This likelihood can be used in analyzing studies in which there are multiple controls for each case or in which several disease categories are being compared. The possibility of including continuous variables makes this likelihood useful in situations that cannot be treated using the Mantel-Haenszel cross-classification approach.
病例对照研究分析中常用的两种方法是按混杂变量进行交叉分类,以及将比值比的对数建模为暴露和混杂变量的函数。我们在此表明,后一种方法中从似然函数导出的得分统计量与适用于前一种方法的Mantel-Haenszel检验统计量相同。这种一致性在所考虑的最一般情况下成立,即在mK表中检验边际同质性。这种等价性通过一个置换论证得到证明,该论证导致一个一般的似然表达式,其中暴露变量可以是离散和/或连续变量的向量,并且可以考虑两个以上的比较组。这种似然性可用于分析每个病例有多个对照或正在比较几种疾病类别的研究。纳入连续变量的可能性使得这种似然性在无法使用Mantel-Haenszel交叉分类方法处理的情况下很有用。