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Inference of Large-Scale Gene Regulatory Networks Using GA-based Bayesian Network and Biological Knowledge

机译:利用基于遗传算法的贝叶斯网络和生物知识推断大规模基因调控网络

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A fundamental issue in understanding the biological cellular behavior is based on discovering the interactions between genes, which is known as the gene regulatory network. This paper proposes a novel method to model large-scale gene regulatory networks from time series gene expression data. In the first step, a novel Gene Ontology (GO)-based clustering algorithm is applied to classify genes into smaller sets. In the next step, a combination of Genetic Algorithm (GA) and Bayesian Network (BN) is utilized to model causal relationships between genes in each cluster. In order to improve the search, in addition to microarray data, Protein-Protein Interactions are utilized. We have tested our method on 98 yeast genes from cell cycle gene expression data set collected by Spellman. In comparison to KEGG pathway map, this method is capable of finding 45.66% of true interactions between genes.
机译:了解生物细胞行为的一个基本问题是基于发现基因之间的相互作用,这被称为基因调控网络。本文提出了一种从时间序列基因表达数据建模大规模基因调控网络的新方法。第一步,将一种新颖的基于基因本体(GO)的聚类算法应用于将基因分类为较小的集合。在下一步中,遗传算法(GA)和贝叶斯网络(BN)的组合用于对每个簇中基因之间的因果关系建模。为了改善搜索,除微阵列数据外,还利用蛋白质-蛋白质相互作用。我们已经从Spellman收集的细胞周期基因表达数据集中测试了98种酵母基因的方法。与KEGG途径图相比,该方法能够发现基因之间45.66%的真实相互作用。

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