Cologne John, Langholz Bryan
Department of Statistics, Radiation Effects Research Foundation, 5-2 Hijiyama Park, Minami-ku, Hiroshima 732-0815, Japan.
J Epidemiol. 2003 Jul;13(4):193-202. doi: 10.2188/jea.13.193.
Two methods for selecting controls in nested case-control studies--matching on X and counter matching on X--are compared when interest is in interaction between a risk factor X measured in the full cohort and another risk factor Z measured only in the case-control sample. This is important because matching provides efficiency gains relative to random sampling when X is uncommon and the interaction is positive (greater than multiplicative), whereas counter matching is generally efficient compared to random sampling.
Matching and counter matching were compared to each other and to random sampling of controls for dichotomous X and Z. Comparison was by simulation, using as an example a published study of radiation and other risk factors for breast cancer in the Japanese atomic-bomb survivors, and by asymptotic relative efficiency calculations for a wide range of parameters specifying the prevalence of X and Z as well as the levels of correlation and interaction between them. Focus was on analyses utilizing general models for the joint risk of X and Z.
Counter-matching performed better than matching or random sampling in terms of efficiency for inference about interaction in the case of a rare risk factor X and uncorrelated risk factor Z. Further, more general, efficiency calculations demonstrated that counter-matching is generally efficient relative to matched case-control designs for studying interaction.
Because counter-matched designs may be analyzed using standard statistical methods and allow investigation of confounding of the effect of X, whereas matched designs require a non-standard approach when fitting general risk models and do not allow investigating the adjusted risk of X, it is concluded that counter-matching on X can be a superior alternative to matching on X in nested case-control studies of interaction when X is known at the time of case-control sampling.
在巢式病例对照研究中,当关注全队列中测量的风险因素X与仅在病例对照样本中测量的另一个风险因素Z之间的相互作用时,比较了两种选择对照的方法——按X匹配和按X反向匹配。这很重要,因为当X不常见且相互作用为正向(大于相乘)时,与随机抽样相比,匹配可提高效率,而与随机抽样相比,反向匹配通常效率更高。
将按X匹配和按X反向匹配相互比较,并与对照的随机抽样进行比较,其中X和Z为二分变量。通过模拟进行比较,以日本原子弹幸存者中辐射及其他乳腺癌风险因素的一项已发表研究为例,并通过渐近相对效率计算,针对一系列指定X和Z的患病率以及它们之间的相关性和相互作用水平的参数进行比较。重点是利用X和Z联合风险的一般模型进行分析。
在罕见风险因素X和不相关风险因素Z的情况下,就相互作用推断的效率而言,反向匹配比匹配或随机抽样表现更好。此外,更一般的效率计算表明,相对于匹配病例对照设计,反向匹配在研究相互作用方面通常效率更高。
由于反向匹配设计可使用标准统计方法进行分析,并允许研究X效应的混杂情况,而匹配设计在拟合一般风险模型时需要采用非标准方法,且不允许研究X的调整后风险,因此得出结论,在病例对照抽样时已知X的巢式病例对照研究中,针对X进行反向匹配可能是比针对X进行匹配更好的选择。