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Exploring soybean metabolic pathways based on probabilistic graphical model and knowledge-based methods

机译:基于概率图形模型和基于知识的方法探索大豆代谢途径

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Soybean ( Glycine max ) is a major source of vegetable oil and protein for both animal and human consumption. The completion of soybean genome sequence led to a number of transcriptomic studies (RNA-seq), which provide a resource for gene discovery and functional analysis. Several data-driven (e.g., based on gene expression data) and knowledge-based (e.g., predictions of molecular interactions) methods have been proposed and implemented. In order to better understand gene relationships and protein interactions, we applied probabilistic graphical methods, based on Bayesian network and knowledgebase constraints using gene expression data to reconstruct soybean metabolic pathways. The results show that this method can predict new relationships between genes, improving on traditional reference pathway maps. Keywords Soybean Gene expression data RNA-seq Metabolic pathway Bayesian network KEGG database
机译:大豆(Glycine max)是动物和人类食用植物油和蛋白质的主要来源。大豆基因组序列的完成导致了许多转录组研究(RNA-seq),这些研究为基因发现和功能分析提供了资源。已经提出并实现了几种以数据为驱动(例如,基于基因表达数据)和基于知识的(例如,分子相互作用的预测)方法。为了更好地了解基因关系和蛋白质相互作用,我们基于贝叶斯网络和知识库约束,应用概率图形方法,利用基因表达数据重建大豆代谢途径。结果表明,该方法可以预测基因之间的新关系,与传统参考途径图谱相比有所改善。关键词大豆基因表达数据RNA-seq代谢途径贝叶斯网络KEGG数据库

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