Fiddes Barnaby, Wason James, Sawcer Stephen
Department of Clinical Neurosciences, University of Cambridge, Cambridge Biomedical Campus, Hills Road, Cambridge, CB2 0QQ, UK.
J Neurol. 2014 Oct;261(10):1851-6. doi: 10.1007/s00415-014-7241-y. Epub 2014 Jan 12.
Association studies form the backbone of biomedical research, with almost every effort in the field ultimately boiling down to a comparison between groups, coupled with some form of statistical test intended to determine whether or not any observed difference is more or less than would be expected by chance. Unfortunately, although the paradigm is powerful and frequently effective, it is often forgotten that false positive association can easily arise if there is any bias or systematic difference in the way in which study subjects are selected into the considered groups. To protect against such confounding, researchers generally try to match cases and controls for extraneous variables thought to correlate with the exposures of interest. However, if seemingly homogenously distributed exposures are actually more heterogeneous than appreciated, then matching may be inadequate and false positive results can still arise. In this review, we will illustrate these fundamental issues by considering the previously proposed relationship between month of birth and multiple sclerosis. This much discussed but false positive association serves as a reminder of just how heterogeneous even easily measured environmental risk factors can be, and how easily case control studies can be confounded by seemingly minor differences in ascertainment.
关联研究构成了生物医学研究的核心,该领域的几乎每一项工作最终都归结为组间比较,并辅之以某种形式的统计检验,以确定所观察到的差异是否超出或低于偶然预期。不幸的是,尽管这种范式强大且常常有效,但人们常常忘记,如果在将研究对象选入所考虑的组的方式上存在任何偏差或系统差异,就很容易出现假阳性关联。为了防止这种混杂情况,研究人员通常会尝试使病例和对照在被认为与感兴趣的暴露相关的外部变量上相匹配。然而,如果看似均匀分布的暴露实际上比预期的更具异质性,那么匹配可能就不够充分,假阳性结果仍可能出现。在这篇综述中,我们将通过考虑先前提出的出生月份与多发性硬化症之间的关系来说明这些基本问题。这个备受讨论但却是假阳性的关联提醒我们,即使是很容易测量的环境风险因素也可能是多么的异质性,以及病例对照研究多么容易被看似微小的确定差异所混淆。