Greenland S, Thomas D C, Morgenstern H
Am J Epidemiol. 1986 Dec;124(6):869-83. doi: 10.1093/oxfordjournals.aje.a114476.
The extension of case-control methods to the study of common outcomes has led to the development of several design and analysis techniques which do not employ the rare-disease assumption. Unfortunately, the principles underlying valid application of these techniques are more subtle than those first considered by Cornfield in the rare-disease setting, and appear to be easily misunderstood. We especially wish to caution that: The unrestricted inclusion of prevalent cases in the control group (as described by Hogue et al. for estimation of the risk ratio) will not make the odds ratio an unbiased estimate of the risk ratio (or anything else). In their response to our article, following, Hogue et al. describe restrictions on prevalence and duration necessary for the odds ratio from a case-exposure design to unbiasedly estimate the risk ratio in a stable population; these conditions were not mentioned in their original article, and in their new paper Hogue et al. do not provide mathematical proof that the conditions are sufficient to guarantee unbiasedness. Exclusion ("decontamination") of incident cases from the control group (as recommended by Hogue et al. for testing and test-based interval estimation) will result in improperly narrow risk-ratio confidence intervals whether or not the population is stable, and, in unstable populations, will generally lead to an invalid test. Methods that replace the rare-disease assumption with the stable-population assumption (such as case-exposure designs applied to open populations) will not yield unbiased results when the source population is a fixed cohort. (Of course, this will not be an issue for methods that are not based on either assumption, such as the case-base design applied to fixed cohorts, and the matched density design.) As each case-control design has certain practical implications for selection and interviewing, in choosing a design one should carefully consider practical issues (such as vulnerability to recall bias and ease of control selection) in addition to the statistical issues discussed here. In general, however, one should be wary of methods of studying incidence that involve the use of prevalent cases (such as the approach of Hogue et al.): prevalence is influenced by factors related to treatment, recovery, and fatality, and thus any etiologic study employing prevalent cases may be biased by such factors.(ABSTRACT TRUNCATED AT 400 WORDS)
将病例对照方法扩展至常见结局的研究,已催生出多种设计与分析技术,这些技术并不采用罕见病假设。遗憾的是,这些技术有效应用背后的原理,比科恩菲尔德在罕见病情形下最初考虑的原理更为微妙,且似乎极易被误解。我们特别要提醒的是:在对照组中无限制地纳入现患病例(如霍格等人所述用于估计风险比),并不会使比值比成为风险比(或其他任何指标)的无偏估计。在他们对我们文章的回应中,霍格等人描述了病例 - 暴露设计中的比值比要在稳定人群中无偏估计风险比所需的患病率和病程限制条件;这些条件在他们最初的文章中未被提及,且在他们的新论文中,霍格等人也未提供数学证明表明这些条件足以保证无偏性。从对照组中排除新发病例(如霍格等人所建议用于检验和基于检验的区间估计),无论人群是否稳定,都会导致风险比置信区间不恰当地变窄,并且在不稳定人群中,通常会导致检验无效。用稳定人群假设取代罕见病假设的方法(如应用于开放人群的病例 - 暴露设计),当源人群为固定队列时,不会产生无偏结果。(当然,对于不基于任何一种假设的方法,如应用于固定队列的病例库设计和匹配密度设计,这不会是一个问题。)由于每种病例对照设计在选择和访谈方面都有一定的实际影响,在选择设计时,除了这里讨论的统计问题外,还应仔细考虑实际问题(如易受回忆偏倚影响程度和选择对照的难易程度)。然而,一般来说,对于涉及使用现患病例的发病率研究方法(如霍格等人的方法)应持谨慎态度:患病率受与治疗、康复和死亡相关的因素影响,因此任何采用现患病例的病因学研究都可能因这些因素而产生偏倚。(摘要截选至400字)