Langholz B, Clayton D
Department of Preventive Medicine, University of Southern California School of Medicine, Los Angeles 90033-9987.
Environ Health Perspect. 1994 Nov;102 Suppl 8(Suppl 8):47-51. doi: 10.1289/ehp.94102s847.
A stratified version of nested case-control sampling which we call "countermatching" is presented. This design uses data available for all cohort members to obtain a sample for collecting additional information in a case-control substudy. Hitherto the only stratified sampling design for such studies has involved matching of controls to cases with respect to confounding variables. However, in some situations, rather than sampling to make controls as similar as possible to cases, we might wish to make them as different as possible. This is achieved by the counter-matched design. Statistical analysis of counter-matched studies is straightforward using existing computer software. We investigate the use of the design when a surrogate measure of exposure is available for the full cohort, but accurate exposure data is to be collected only in a nested case-control study, and when exposure data are available for the whole cohort but data concerning important confounders are not. Asymptotic relative efficiency calculations indicate that a substantial efficiency gain relative to simple random sampling of controls can be expected in these situations. We also illustrate how the design might be implemented in practice.
本文提出了一种分层嵌套病例对照抽样方法,我们称之为“反向匹配”。该设计利用所有队列成员的可用数据,获取一个样本,以便在病例对照子研究中收集更多信息。迄今为止,此类研究中唯一的分层抽样设计是根据混杂变量将对照与病例进行匹配。然而,在某些情况下,我们可能希望对照与病例尽可能不同,而不是通过抽样使对照尽可能与病例相似。这可通过反向匹配设计实现。使用现有的计算机软件,对反向匹配研究进行统计分析很简单。我们研究了在以下两种情况下该设计的应用:一是整个队列有暴露的替代测量指标,但仅在嵌套病例对照研究中收集准确的暴露数据;二是整个队列有暴露数据,但没有关于重要混杂因素的数据。渐近相对效率计算表明,在这些情况下,相对于简单随机抽样对照,预期可大幅提高效率。我们还说明了该设计在实际中如何实施。