Network-based analysis of time series RNA-seq gene expression data by integrating the interactome and gene ontology information

Yuji Zhang
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Abstract

Monitoring the changes in gene expression patterns over time provides the distinct possibility of unraveling the mechanistic drivers characterizing cellular responses. Such time series gene expression data allow us to broadly “watch” the dynamics of the system. However, one challenge in the analysis of time series data is to establish and characterize the interplay between genes that are activated, deactivated or sustained in the context of a biological process or functional category. To address such challenges, novel algorithms are required to improve the interpretation of these data by integrating multi-source prior functional evidence. In this paper, we introduced a novel network-based approach to extract functional knowledge from time-dependent biological processes at a system level using time series mRNA deep sequencing data. First, a list of differentially expressed genes (DEGs) at each time point was identified. Second, GO terms that are enriched in each DEG list were identified. Third, the significance of interactions between DEGs in these GO terms at consecutive time points was measured. Finally, the significant interactions between DEGs in different GO terms were used to construct the interaction networks among GO terms between two consecutive time points, called GO networks. The proposed method was applied to investigate 1α, 25(OH)2D3-altered mechanisms in zebrafish embryo development. GO networks were constructed over 4 consecutive time points. Results suggest that biological processes such as cartilage development and one-carbon compound metabolic process are temporally regulated by 1α,25(OH)2D3. Such discoveries could not have been identified with canonical gene set enrichment analyses. These results demonstrate that the proposed approach can provide insight on the molecular mechanisms taking place in vertebrate embryo development upon treatment with 1α,25(OH)2D3. Our approach enables the monitoring of biological processes that can serve as a basis for generating new testable hypotheses. Such network-based integration approach can be easily extended to any temporal- or condition-dependent genomic data analyses.
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整合相互作用组和基因本体信息的基于网络的时间序列RNA-seq基因表达数据分析
监测基因表达模式随时间的变化,为揭示细胞反应的机制驱动提供了独特的可能性。这样的时间序列基因表达数据使我们能够广泛地“观察”系统的动态。然而,时间序列数据分析的一个挑战是建立和描述在生物过程或功能类别的背景下激活、失活或维持的基因之间的相互作用。为了应对这些挑战,需要新的算法来通过整合多源先验功能证据来改进对这些数据的解释。在本文中,我们介绍了一种新的基于网络的方法,利用时间序列mRNA深度测序数据从系统层面的时间依赖性生物过程中提取功能知识。首先,确定了每个时间点的差异表达基因(deg)列表。其次,确定了每个DEG列表中富集的GO术语。第三,测量了这些GO项中deg在连续时间点上相互作用的显著性。最后,利用不同氧化石墨烯项中deg之间的显著相互作用,构建两个连续时间点上氧化石墨烯项之间的相互作用网络,称为氧化石墨烯网络。应用该方法研究了1α, 25(OH) 2d3在斑马鱼胚胎发育中的改变机制。GO网络在4个连续时间点上构建。结果表明,软骨发育和单碳化合物代谢过程等生物过程暂时受到1α,25(OH)2D3的调节。这样的发现无法通过典型基因集富集分析确定。这些结果表明,所提出的方法可以深入了解1α,25(OH)2D3处理后脊椎动物胚胎发育的分子机制。我们的方法能够监测生物过程,这可以作为产生新的可测试假设的基础。这种基于网络的整合方法可以很容易地扩展到任何时间或条件依赖的基因组数据分析。
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