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Untangling statistical and biological models to understand network inference: the need for a genomics network ontology

机译:解开统计模型和生物学模型以了解网络推论:对基因组网络本体的需求

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摘要

In this paper, we shed light on approaches that are currently used to infer networks from gene expression data with respect to their biological meaning. As we will show, the biological interpretation of these networks depends on the chosen theoretical perspective. For this reason, we distinguish a statistical perspective from a mathematical modeling perspective and elaborate their differences and implications. Our results indicate the imperative need for a genomic network ontology in order to avoid increasing confusion about the biological interpretation of inferred networks, which can be even enhanced by approaches that integrate multiple data sets, respectively, data types.
机译:在本文中,我们阐明了目前用于从基因表达数据推断网络的生物学意义的方法。正如我们将显示的,这些网络的生物学解释取决于所选择的理论视角。因此,我们将统计观点与数学建模观点区分开来,并阐述它们的区别和含义。我们的结果表明,迫切需要一种基因组网络本体,以避免对推断网络的生物学解释产生越来越多的困惑,这甚至可以通过分别集成多个数据集和数据类型的方法来增强。

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