通过整合多个RNA-seq数据集系统地重建剪接调控模块

Chao Dai, Wenyuan Li, Juan Liu, X. Zhou
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引用次数: 0

摘要

选择性剪接是一种普遍存在的基因调控机制,它极大地增加了蛋白质组的复杂性。本文研究了剪接模块,我们将其定义为由相同剪接因子共同调控的一组盒式外显子。我们设计了一种基于张量的方法来识别在多种条件下频繁出现的共剪接簇,因此很可能代表剪接模块-剪接调节网络中的一个单元。特别是,我们将每个RNA-seq数据集建模为一个共剪接网络,其中节点代表外显子,边缘由外显子包含率谱之间的相关性加权。我们将基于张量的方法应用于来自RNA-seq数据集的19个共剪接网络,并确定了频繁共剪接簇的图谱。通过对四个生物知识数据库的验证,我们证明了这些识别的集群代表了拼接模块。频繁的共剪接簇具有生物学意义的可能性随着其在多个数据集上的重复而增加,这突出了整合方法的重要性。我们还证明了共剪接簇揭示了无法通过共表达簇识别的新功能群,并且相同的外显子可以根据不同的条件和不同的其他共剪接外显子动态参与不同的途径。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Systematic reconstruction of splicing regulatory modules by integrating many RNA-seq datasets
Alternative splicing is a ubiquitous gene regulatory mechanism that dramatically increases the complexity of the proteome. In this paper we study splicing module, which we define as a set of cassette exons co-regulated by the same splicing factors. We have designed a tensor-based approach to identify co-splicing clusters that appear frequently across multiple conditions, thus very likely to represent splicing modules - a unit in the splicing regulatory network. In particular, we model each RNA-seq dataset as a co-splicing network, where the nodes represent exons and the edges are weighted by the correlations between exon inclusion rate profiles. We apply our tensor-based method to the 19 co-splicing networks derived from RNA-seq datasets and identify an atlas of frequent co-splicing clusters. We demonstrate that these identified clusters represent splicing modules by validating against four biological knowledge databases. The likelihood that a frequent co-splicing cluster is biologically meaningful increases with its recurrence across multiple datasets, highlighting the importance of the integrative approach. We also demonstrate that the co-splicing clusters reveal novel functional groups which cannot be identified by co-expression clusters, and that the same exons can dynamically participate in different pathways depending on different conditions and different other exons that are co-spliced.
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