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首页> 外文期刊>Journal of computational biology: A journal of computational molecular cell biology >Multi-Species Network Inference Improves Gene Regulatory Network Reconstruction for Early Embryonic Development in Drosophila
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Multi-Species Network Inference Improves Gene Regulatory Network Reconstruction for Early Embryonic Development in Drosophila

机译:多物种网络推论改善果蝇早期胚胎发育的基因调控网络重构。

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Gene regulatory network inference uses genome-wide transcriptome measurements in response to genetic, environmental, or dynamic perturbations to predict causal regulatory influences between genes. We hypothesized that evolution also acts as a suitable network perturbation and that integration of data from multiple closely related species can lead to improved reconstruction of gene regulatory networks. To test this hypothesis, we predicted networks from temporal gene expression data for 3,610 genes measured during early embryonic development in six Drosophila species and compared predicted networks to gold standard networks of ChIP-chip and ChIP-seq interactions for developmental transcription factors in five species. We found that (i) the performance of single-species networks was independent of the species where the gold standard was measured; (ii) differences between predicted networks reflected the known phylogeny and differences in biology between the species; (iii) an integrative consensus network that minimized the total number of edge gains and losses with respect to all single-species networks performed better than any individual network. Our results show that in an evolutionarily conserved system, integration of data from comparable experiments in multiple species improves the inference of gene regulatory networks. They provide a basis for future studies on the numerous multispecies gene expression datasets for other biological processes available in the literature.
机译:基因调控网络推论使用全基因组转录组测量来响应遗传,环境或动态扰动,以预测基因之间的因果调控影响。我们假设进化也可以作为一种合适的网络扰动,并且来自多个密切相关物种的数据整合可以导致基因调控网络的重建。为了验证这一假设,我们从六个果蝇早期胚胎发育过程中测得的3,610个基因的时态基因表达数据预测了网络,并将预测的网络与五个物种中发育转录因子的ChIP芯片和ChIP-seq相互作用的金标准网络进行了比较。我们发现(i)单物种网络的性能与测量金标准的物种无关; (ii)预测网络之间的差异反映了已知的系统发育和物种之间的生物学差异; (iii)使所有单一物种网络的边际收益和损失总数最小化的综合共识网络表现优于任何单个网络。我们的结果表明,在一个进化上保守的系统中,来自多个物种的可比实验的数据集成改善了基因调控网络的推断。它们为文献中可用于其他生物学过程的众多多物种基因表达数据集的未来研究提供了基础。

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