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PEPN-GRN: A Petri net-based approach for the inference of gene regulatory networks from noisy gene expression data

机译:Pepn-Grn:来自嘈杂基因表达数据基因监管网络推断的Petri网络方法

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The inference of gene regulatory networks (GRNs) from expression data is a challenging problem in systems biology. The stochasticity or fluctuations in the biochemical processes that regulate the transcription process poses as one of the major challenges. In this paper, we propose a novel GRN inference approach, named the Probabilistic Extended Petri Net for Gene Regulatory Network (PEPN-GRN), for the inference of gene regulatory networks from noisy expression data. The proposed inference approach makes use of transition of discrete gene expression levels across adjacent time points as different evidence types that relate to the production or decay of genes. The paper examines three variants of the PEPN-GRN method, which mainly differ by the way the scores of network edges are computed using evidence types. The proposed method is evaluated on the benchmark DREAM4 in silico data sets and a real time series data set of E. coli from the DREAM5 challenge. The PEPN-GRN_v3 variant (the third variant of the PEPN-GRN approach) sought to learn the weights of evidence types in accordance with their contribution to the activation and inhibition gene regulation process. The learned weights help understand the time-shifted and inverted time-shifted relationship between regulator and target gene. Thus, PEPN-GRN_v3, along with the inference of network edges, also provides a functional understanding of the gene regulation process.
机译:来自表达数据的基因调节网络(GRNS)的推断是系统生物学中的一个具有挑战性的问题。调节转录过程的生化过程中的随机性或波动作为主要挑战之一。在本文中,我们提出了一种新颖的GRN推断方法,命名为基因调节网络(PEPN-GRN)的概率扩展Petri网,用于从嘈杂的表达数据中推断基因调节网络。所提出的推断方法利用与与基因的生产或腐烂相关的不同证据类型的相邻时间点的离散基因表达水平的转变。本文研究了Pepn-Grn方法的三种变体,主要是使用证据类型计算网络边缘的分数的方式。所提出的方法在Silico数据集的基准梦想4中进行评估,以及来自Dream5挑战的大肠杆菌的实时序列数据集。 Pepn-Grn_v3变体(Pepn-Grn方法的第三种变体)试图根据其对激活和抑制基因调控过程的贡献来学习证据类型的重量。学习权重有助于了解调节剂和靶基因之间的时移和倒置的时移关系。因此,Pepn-Grn_v3以及网络边缘的推断还提供了对基因调节过程的功能理解。

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