The human microbiome can contribute to pathogeneses of many complex diseases by mediating disease-leading causal pathways. However, standard mediation analysis methods are not adequate to analyze the microbiome as a mediator due to the excessive number of zero-valued sequencing reads in the data that is compounded by its compositional structure. The two main challenges raised by the zero-inflated data structure are: (a) disentangling the mediation effect induced by the point mass at zero; and (b) identifying the observed zero-valued data points that are actually not zero (i.e., false zeros). We develop a novel marginal mediation analysis method under the potential-outcomes framework to fill this gap and show the marginal model can also account for the compositional structure. The mediation effect can be decomposed into two components that are inherent to the two-part nature of zero-inflated distributions. With probabilistic models to account for observing zeros, we also address the challenge with false zeros. A comprehensive simulation study and the application in a real microbiome study showcase our approach in comparison with existing approaches.
翻译:然而,标准的调解分析方法不足以分析微生物作为调解者的作用,因为其零值排序数量过多,而其组成结构又使数据结构更为复杂。零膨胀的数据结构提出的两个主要挑战是:(a) 分解零度质量造成的调解效应;和(b) 确定观察到的零值数据点,但实际上不是零(即虚零)。我们根据潜在结果框架开发了一种新的边际调解分析方法,以填补这一空白,并展示边际模式也可以考虑到构成结构。调解效果可以分解为两个组成部分,这两个组成部分是零膨胀分布的两部分所固有的。我们用概率模型来考虑观察零,我们也用假零来应对这个挑战。全面模拟研究以及实际微生物研究的应用展示了我们与现有方法相比较的方法。