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Predictive regulatory models in Drosophila melanogaster by integrative inference of transcriptional networks

机译:果蝇的预测调控模型通过转录网络的综合推断

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摘要

Gaining insights on gene regulation from large-scale functional data sets is a grand challenge in systems biology. In this article, we develop and apply methods for transcriptional regulatory network inference from diverse functional genomics data sets and demonstrate their value for gene function and gene expression prediction. We formulate the network inference problem in a machine-learning framework and use both supervised and unsupervised methods to predict regulatory edges by integrating transcription factor (TF) binding, evolutionarily conserved sequence motifs, gene expression, and chromatin modification data sets as input features. Applying these methods to Drosophila melanogaster, we predict ∼300,000 regulatory edges in a network of ∼600 TFs and 12,000 target genes. We validate our predictions using known regulatory interactions, gene functional annotations, tissue-specific expression, protein-protein interactions, and three-dimensional maps of chromosome conformation. We use the inferred network to identify putative functions for hundreds of previously uncharacterized genes, including many in nervous system development, which are independently confirmed based on their tissue-specific expression patterns. Last, we use the regulatory network to predict target gene expression levels as a function of TF expression, and find significantly higher predictive power for integrative networks than for motif or ChIP-based networks. Our work reveals the complementarity between physical evidence of regulatory interactions (TF binding, motif conservation) and functional evidence (coordinated expression or chromatin patterns) and demonstrates the power of data integration for network inference and studies of gene regulation at the systems level. © 2012, Published by Cold Spring Harbor Laboratory Press.
机译:从大规模功能数据集获得有关基因调控的见解是系统生物学中的巨大挑战。在本文中,我们开发并应用了从各种功能基因组学数据集中进行转录调控网络推断的方法,并证明了它们对基因功能和基因表达预测的价值。我们在机器学习框架中制定网络推理问题,并通过结合转录因子(TF)结合,进化上保守的序列基序,基因表达和染色质修饰数据集作为输入特征,使用监督和无监督方法来预测监管优势。将这些方法应用于果蝇(Drosophila melanogaster),我们预计在约600个TF和12,000个靶基因的网络中约300,000个调节边缘。我们使用已知的调控相互作用,基因功能注释,组织特异性表达,蛋白质-蛋白质相互作用以及染色体构象的三维图来验证我们的预测。我们使用推断的网络来识别数百个以前未表征的基因的推定功能,包括神经系统发育中的许多基因,这些基因是根据其组织特异性表达模式独立确定的。最后,我们使用调节网络预测作为TF表达函数的目标基因表达水平,并发现与基于基序或基于ChIP的网络相比,整合网络的预测能力明显更高。我们的工作揭示了调节相互作用的物理证据(TF结合,基序保守)与功能证据(协同表达或染色质模式)之间的互补性,并证明了数据集成在网络推断和系统级基因调控研究中的作用。 ©2012,冷泉港实验室出版社出版。

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