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MICRAT: a novel algorithm for inferring gene regulatory networks using time series gene expression data

机译:MICRAT:使用时间序列基因表达数据推断基因调控网络的新算法

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摘要

BackgroundReconstruction of gene regulatory networks (GRNs), also known as reverse engineering of GRNs, aims to infer the potential regulation relationships between genes. With the development of biotechnology, such as gene chip microarray and RNA-sequencing, the high-throughput data generated provide us with more opportunities to infer the gene-gene interaction relationships using gene expression data and hence understand the underlying mechanism of biological processes. Gene regulatory networks are known to exhibit a multiplicity of interaction mechanisms which include functional and non-functional, and linear and non-linear relationships. Meanwhile, the regulatory interactions between genes and gene products are not spontaneous since various processes involved in producing fully functional and measurable concentrations of transcriptional factors/proteins lead to a delay in gene regulation. Many different approaches for reconstructing GRNs have been proposed, but the existing GRN inference approaches such as probabilistic Boolean networks and dynamic Bayesian networks have various limitations and relatively low accuracy. Inferring GRNs from time series microarray data or RNA-sequencing data remains a very challenging inverse problem due to its nonlinearity, high dimensionality, sparse and noisy data, and significant computational cost, which motivates us to develop more effective inference methods.
机译:背景技术基因调控网络(GRN)的重建也称为GRN的逆向工程,旨在推断基因之间的潜在调控关系。随着基因芯片微阵列和RNA测序等生物技术的发展,生成的高通量数据为我们提供了更多利用基因表达数据推断基因与基因相互作用关系的机会,从而了解了生物学过程的潜在机制。已知基因调节网络表现出多种相互作用机制,包括功能和非功能以及线性和非线性关系。同时,基因和基因产物之间的调节相互作用不是自发的,因为涉及产生完全功能和可测量浓度的转录因子/蛋白质的各种过程导致基因调节的延迟。已经提出了许多不同的重建GRN的方法,但是现有的GRN推理方法(如概率布尔网络和动态贝叶斯网络)具有各种局限性和相对较低的准确性。从时间序列微阵列数据或RNA序列数据推断GRN仍然是一个非常具有挑战性的逆问题,因为其非线性,高维,稀疏和嘈杂的数据以及巨大的计算成本,这促使我们开发更有效的推断方法。

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