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Detection of regulatory circuits by integrating the cellular networks of protein–protein interactions and transcription regulation

机译:通过整合蛋白质相互作用的细胞网络和转录调控来检测调控回路

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The post‐genomic era is marked by huge amounts of data generated by large‐scale functional genomic and proteomic experiments. A major challenge is to integrate the various types of genome‐scale information in order to reveal the intra‐ and inter‐ relationships between genes and proteins that constitute a living cell. Here we present a novel application of classical graph algorithms to integrate the cellular networks of protein–protein interactions and transcription regulation. We demonstrate how integration of these two networks enables the discovery of simple as well as complex regulatory circuits that involve both protein–protein and protein–DNA interactions. These circuits may serve for positive or negative feedback mechanisms. By applying our approach to data from the yeast Saccharomyces cerevisiae, we were able to identify known simple and complex regulatory circuits and to discover many putative circuits, whose biological relevance has been assessed using various types of experimental data. The newly identified relations provide new insight into the processes that take place in the cell, insight that could not be gained by analyzing each type of data independently. The computational scheme that we propose may be used to integrate additional functional genomic and proteomic data and to reveal other types of relations, in yeast as well as in higher organisms.
机译:后基因组时代的标志是大规模的功能基因组和蛋白质组学实验产生的大量数据。一个主要的挑战是整合各种类型的基因组规模信息,以揭示构成活细胞的基因与蛋白质之间的内部和相互关系。在这里,我们介绍了经典图算法的新应用,以整合蛋白质间相互作用和转录调控的细胞网络。我们展示了这两个网络的整合如何使发现涉及蛋白质-蛋白质和蛋白质-DNA相互作用的简单和复杂的调节回路成为可能。这些电路可用于正反馈或负反馈机制。通过将我们的方法应用于来自酿酒酵母的数据,我们能够鉴定出已知的简单和复杂的调节回路,并发现了许多推定的回路,其生物学相关性已使用各种类型的实验数据进行了评估。新近确定的关系为单元格中发生的过程提供了新的见解,而通过独立分析每种类型的数据无法获得这些见解。我们提出的计算方案可用于整合其他功能基因组和蛋白质组数据,并揭示酵母以及高级生物中的其他类型的关系。

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