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Integration of Epigenetic Data in Bayesian Network Modeling of Gene Regulatory Network

机译:基因调控网络的贝叶斯网络建模中表观遗传数据的整合

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The reverse engineering of gene regulatory network (GRN) is an important problem in systems biology. While gene expression data provide a main source of insights, other types of data are needed to elucidate the structure and dynamics of gene regulation. Epigenetic data (e.g., his-tone modification) show promise to provide more insights into gene regulation and on epigenetic implication in biological pathways. In this paper, we investigate how epigenetic data are incorporated into reconstruction of GRN. We encode the histone modification data as prior for Bayesian network inference of GRN. Bayesian framework provides a natural and mathematically tractable way of integrating various data and knowledge through its prior. Applying to the gene expression data of yeast cell cycle, we demonstrate that integration of epigenetic data improves the accuracy of GRN inference significantly. Furthermore, fusion of gene expression and epigenetic data shed light on the interactions between genetic and epigenetic regulations of gene expression.
机译:基因调控网络(GRN)的逆向工程是系统生物学中的重要问题。虽然基因表达数据提供了重要的见解,但还需要其他类型的数据来阐明基因调控的结构和动力学。表观遗传学数据(例如,组蛋白修饰)表明有望为基因调控和生物学途径中的表观遗传学含义提供更多的见解。在本文中,我们研究了表观遗传数据如何整合到GRN的重建中。我们将组蛋白修饰数据编码为GRN的贝叶斯网络推断的先验。贝叶斯框架提供了一种自然且数学上易于处理的方式,可以通过其先验方式整合各种数据和知识。将其应用于酵母细胞周期的基因表达数据,我们证明表观遗传数据的整合显着提高了GRN推断的准确性。此外,基因表达和表观遗传数据的融合揭示了基因表达的遗传和表观遗传规则之间的相互作用。

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