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Analysis of protein-protein interaction networks using random walks

机译:使用随机游走分析蛋白质-蛋白质相互作用网络

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Genome wide protein networks have become reality in recent years due to high throughput methods for detecting protein interactions. Recent studies show that a networked representation of proteins provides a more accurate model of biological systems and processes compared to conventional pair-wise analyses. Complementary to the availability of protein networks, various graph analysis techniques have been proposed to mine these networks for pathway discovery, function assignment, and prediction of complex membership. In this paper, we propose using random walks on graphs for the complex/pathway membership problem. We evaluate the proposed technique on three different probabilistic yeast networks using a benchmark dataset of 27 complexes from the MIPS complex catalog database and 10 pathways from the KEGG pathway database. Furthermore, we compare the proposed technique to two other existing techniques both in terms of accuracy and running time performance, thus addressing the scalability issue of such analysis techniques for the first time. Our experiments show that the random walk technique achieves similar or better accuracy with more than 1,000 times speed-up compared to the best competing technique.
机译:由于检测蛋白质相互作用的高通量方法,近年来全基因组蛋白质网络已成为现实。最近的研究表明,与传统的成对分析相比,蛋白质的网络化表示提供了更准确的生物学系统和过程模型。为了补充蛋白质网络的可用性,已提出了各种图形分析技术来挖掘这些网络,以进行途径发现,功能分配和复杂成员的预测。在本文中,我们建议使用图上的随机游走来解决复杂/路径隶属关系问题。我们使用来自MIPS复杂目录数据库的27个复合物的基准数据集和来自KEGG途径数据库的10个途径的基准数据集,评估了三种不同概率酵母网络上的拟议技术。此外,在准确性和运行时间性能方面,我们将提出的技术与其他两种现有技术进行了比较,从而首次解决了此类分析技术的可伸缩性问题。我们的实验表明,与最佳竞争技术相比,随机游走技术可达到类似或更高的精度,并且提速超过1000倍。

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