This paper develops a method based on model-X knockoffs to find conditional associations that are consistent across diverse environments, controlling the false discovery rate. The motivation for this problem is that large data sets may contain numerous associations that are statistically significant and yet misleading, as they are induced by confounders or sampling imperfections. However, associations consistently replicated under different conditions may be more interesting. In fact, consistency sometimes provably leads to valid causal inferences even if conditional associations do not. While the proposed method is flexible and can be deployed in a wide range of applications, this paper highlights its relevance to genome-wide association studies, in which consistency across populations with diverse ancestries mitigates confounding due to unmeasured variants. The effectiveness of this approach is demonstrated by simulations and applications to the UK Biobank data.
翻译:本文以模型-X取舍为基础,制定了一种方法,以找到在不同环境中一致的有条件联系,控制虚假发现率。这个问题的动机是,大型数据集可能包含许多具有统计意义但具有误导性的协会,因为这些协会是由困惑者或抽样不完善引起的。然而,在不同条件下,这些协会的一贯复制可能更加有趣。事实上,即使有条件联系不成功,有时一致性有时也会导致有效的因果推论。虽然拟议的方法灵活,可以广泛应用,但本文件强调其与基因组全协会研究的相关性,在这种研究中,与不同物种的人群之间的一致性会减轻因无法计量的变异而令人困惑的情况。这一方法的有效性通过模拟和对英国生物库数据的应用而得到证明。