Understanding how microbes interact with each other is key to revealing the underlying role that microorganisms play in the host or environment and to identifying microorganisms as an agent that can potentially alter the host or environment. For example, understanding how the microbial interactions associate with parasitic infection can help resolve potential drug or diagnostic test for parasitic infection. To unravel the microbial interactions, existing tools often rely on graphical models to infer the conditional dependence of microbial abundances to represent their interactions. However, current methods do not simultaneously account for the discreteness, compositionality, and heterogeneity inherent to microbiome data. Thus, we build a new approach called "compositional graphical lasso" upon existing tools by incorporating the above characteristics into the graphical model explicitly. We illustrate the advantage of compositional graphical lasso over current methods under a variety of simulation scenarios and on a benchmark study, the Tara Oceans Project. Moreover, we present our results from the analysis of a dataset from the Zebrafish Parasite Infection Study. Our approach identifies changes in interaction degree between infected and uninfected individuals for three taxa, Photobacterium, Gemmobacter, and Paucibacter, which are inversely predicted by other methods. Further investigation of these method-specific taxa interaction changes reveals their biological plausibility. In particular, we speculate on the potential pathobiotic roles of Photobacterium and Gemmobacter in the zebrafish gut, and the potential probiotic role of Paucibacter. Collectively, our analyses demonstrate that compositional graphical lasso provides a powerful means of accurately resolving interactions between microbiota and can thus drive novel biological discovery.
翻译:了解微生物与寄生虫感染的微生物相互作用如何是揭示微生物在宿主或环境中所起的潜在作用的关键。例如,了解微生物相互作用如何有助于解决潜在的药物或寄生虫感染的诊断性测试。为了解析微生物相互作用,现有工具往往依靠图形模型推断微生物丰度有条件依赖性来代表它们之间的相互作用。然而,目前的方法并不同时考虑到微生物数据所固有的离散性、组成性性和异质性。因此,我们在现有工具上建立了一个称为“组合结构图形色素作用”的新方法,将上述特性明确纳入图示模型。我们展示了在各种模拟情景和基准研究、Tara海洋工程项目下,组成图形色素相对于当前方法的优势。此外,我们介绍了我们从对Zebraish 隐性传染病研究中数据集的分析结果。我们的方法确定了受感染者和未受感染者之间相互作用的程度的变化。我们的方法通过三个税性、 直观的奥氏性、 地物理学、 地基化学特性分析, 以及其它的预估性研究方法, 展示了这些生物学方法的预估测方法。