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Towards Evaluation of Inferred Gene Network

机译:旨在评估推断基因网络

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摘要

Gene network is a representation for gene interactions. A gene collaborates with other genes in order to function. Past researches have successfully inferred gene network from gene expression microarray data. Gene expression microarray data represent different levels of gene expressions for organisms during biological activity such as cell cycle. A framework for gene network inference is to normalize gene expression data, discretize data, learn gene network and evaluate gene interactions. This framework was used to learn the gene network for two S.cerevisiae gene expression datasets (Spellman Cell cycle and Gasch Yeast Stress). Gene interaction inference was also done on data contained in 8 major clusters found by Spellman. The inferred networks were compared to gene interaction data curated by Biogrid. Results from the comparison shows that some of the inferred gene interactions agree with data contained in Biogrid and by referring to curated genetic interactions in Biogrid, we can understand the significance of computationally inferred gene interactions.
机译:基因网络是基因相互作用的表示。基因与其他基因合作以便起作用。过去的研究已经成功推断了来自基因表达微阵列数据的基因网络。基因表达微阵列数据代表生物活性期间的生物体的不同水平的基因表达水平,例如细胞周期。基因网络推论的框架是归一化基因表达数据,离散数据,学习基因网络并评估基因相互作用。该框架用于学习两种S.Cerevisiae基因表达数据集(Spellman细胞周期和喘气酵母应力)的基因网络。基因交互推断也是由Spellman发现的8个主要集群中所含的数据。将推断的网络与BioGrid策划的基因交互数据进行比较。比较结果表明,一些推断的基因相互作用与生物格栅中含有的数据一致,并通过参考生物格栅中的愈合遗传相互作用,我们可以理解计算推断推断的基因相互作用的重要性。

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