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首页> 外文期刊>Frontiers in Physiology >Multi-Level Integration of Environmentally Perturbed Internal Phenotypes Reveals Key Points of Connectivity between Them
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Multi-Level Integration of Environmentally Perturbed Internal Phenotypes Reveals Key Points of Connectivity between Them

机译:环境受干扰的内部表型的多层次整合揭示了它们之间连通性的关键点

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The genotype and external phenotype of organisms are linked by so-called internal phenotypes which are influenced by environmental conditions. In this study, we used five existing -omics datasets representing five different layers of internal phenotypes, which were simultaneously measured in dietarily perturbed mice. We performed 10 pair-wise correlation analyses verified with a null model built from randomized data. Subsequently, the inferred networks were merged and literature mined for co-occurrences of identified linked nodes. Densely connected internal phenotypes emerged. Forty-five nodes have links with all other data-types and we denote them “connectivity hubs.” In literature, we found proof of 6% of the 577 connections, suggesting a biological meaning for the observed correlations. The observed connectivities between metabolite and cytokines hubs showed higher numbers of literature hits as compared to the number of literature hits on the connectivities between the microbiota and gene expression internal phenotypes. We conclude that multi-level integrated networks may help to generate hypotheses and to design experiments aiming to further close the gap between genotype and phenotype. We describe and/or hypothesize on the biological relevance of four identified multi-level connectivity hubs.
机译:生物的基因型和外部表型由受环境条件影响的所谓内部表型联系在一起。在这项研究中,我们使用了五个现有的组学数据集,分别代表五种不同的内部表型层次,这些数据是在饮食受到干扰的小鼠中同时测量的。我们执行了10次成对的相关分析,并使用从随机数据中构建的空模型进行了验证。随后,将推断的网络合并,并挖掘文献以发现已确定的链接节点。出现了紧密连接的内部表型。四十五个节点与所有其他数据类型都有链接,我们将其称为“连接中心”。在文献中,我们发现577个连接中有6%的证据,这表明所观察到的相关性具有生物学意义。与微生物群和基因表达内部表型之间的连接性方面的文献点击数相比,观察到的代谢物和细胞因子枢纽之间的连接性更高。我们得出的结论是,多层集成网络可能有助于产生假设并设计旨在进一步缩小基因型和表型之间差距的实验。我们描述和/或假设了四个已确定的多层连接中心的生物学相关性。

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