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首页> 外文期刊>Philosophical Transactions of the Royal Society of London, Series B. Biological Sciences >Hierarchy and levels: analysing networks to study mechanisms in molecular biology
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Hierarchy and levels: analysing networks to study mechanisms in molecular biology

机译:层次结构和水平:分析网络研究机制的分析

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Network representations are flat while mechanisms are organized into a hierarchy of levels, suggesting that the two are fundamentally opposed. I challenge this opposition by focusing on two aspects of the ways in which large-scale networks constructed from high-throughput data are analysed in systems biology: identifying clusters of nodes that operate as modules or mechanisms and using bio-ontologies such as gene ontology (GO) to annotate nodes with information about where entities appear in cells and the biological functions in which they participate. Of particular importance, GO organizes biological knowledge about cell components and functions hierarchically. I illustrate how this supports mechanistic interpretation of networks with two examples of network studies, one using epistatic interactions among genes to identify mechanisms and their parts and the other using deep learning to predict phenotypes. As illustrated in these examples, when network research draws upon hierarchical information such as provided by GO, the results not only can be interpreted mechanistically but provide new mechanistic knowledge.
机译:网络表示是平的,而机制被组织成水平的层次,这表明两者从根本上反对。我通过专注于在系统生物学中分析了从高吞吐量数据构建的大规模网络的两个方面来挑战这一反对:识别作为模块或机制的节点的集群,并使用诸如基因本体等生物本体( Go)以注释节点,其中包含有关实体在细胞中出现的信息以及它们参与的生物学功能的信息。特别重要,可以在分层上组织关于细胞成分和功能的生物学知识。我说明了这种支持网络研究的机械解释如何,其中一个网络研究的例子,一个使用基因之间的背景相互作用,以识别机制及其部分,并使用深度学习来预测表型。如在这些示例中所示,当网络研究在诸如通过GO提供的分层信息时,不仅可以机械地解释的结果,而且提供新的机制知识。

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