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Inference of active transcriptional networks by integration of gene expression kinetics modeling and multisource data.

机译:通过整合基因表达动力学建模和多源数据来推断活性转录网络。

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Inference of gene expression networks has become one of the primary challenges in computational biology. Analysis of microarray experiments using appropriate mathematical models can reveal interactions among protein regulators and target genes. This paper presents a combined approach to the inference of gene expression networks from time series measurements, ChIP-on-chip experiments, analyses of promoter sequences, and protein-protein interaction data. A recursive model of gene expression allowing for identification of active gene expression control networks with up to two regulators of one target gene is presented. The model was used to inspect all possible regulator-target gene combinations and predict those that are active during the underlying biological process. The procedure was applied to the inference of part of a regulatory network of the S. cerevisiae cell cycle, formed by 37 target genes and 128 transcription factors. A set of the most probable networks was suggested and analyzed.
机译:基因表达网络的推理已成为计算生物学的主要挑战之一。使用适当的数学模型对微阵列实验进行分析可以揭示蛋白质调节剂与靶基因之间的相互作用。本文提供了一种从时间序列测量,芯片上芯片实验,启动子序列分析和蛋白质-蛋白质相互作用数据推断基因表达网络的组合方法。提出了一种基因表达的递归模型,该模型允许识别具有一个靶基因的两个调节子的活性基因表达控制网络。该模型用于检查所有可能的调节子-靶基因组合,并预测在基础生物学过程中活跃的那些组合。该程序被用于推断由37个靶基因和128个转录因子组成的酿酒酵母细胞周期调控网络的一部分。提出并分析了一组最可能的网络。

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