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Network tuned multiple rank aggregation and applications to gene ranking

机译:网络调谐多个等级聚合和应用程序到基因排名

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With the development of various high throughput technologies and analysis methods, researchers can study different aspects of a biological phenomenon simultaneously or one aspect repeatedly with different experimental techniques and analysis methods.The output from each study is a rank list of components of interest. Aggregation of the rank lists of components, such as proteins, genes and single nucleotide variants (SNV), produced by these experiments has been proven to be helpful in both filteringthe noise and bringing forth a more complete understanding of the biological problems. Current available rank aggregation methods do not consider the network information that has been observed to provide vital contributions in many data integration studies. We developed network tuned rank aggregation methods incorporating network information and demonstrated its superior performance over aggregation methods without network information.The methods are tested on predicting the Gene Ontology function of yeast proteins. We validate the methods using combinations of three gene expression data sets and three protein interaction networks as well as an integrated network by combining the three networks. Results show that the aggregated rank lists are more meaningful if protein interaction network is incorporated. Among the methods compared, CGI_RRA and CGI_Endeavour, which integrate rank lists with networks using CGI [1] followed by rank aggregation using either robust rank aggregation (RRA) [2] or Endeavour [3] perform the best. Finally, we use the methods to locate target genes of transcription factors.
机译:随着各种高通量技术和分析方法的发展,研究人员可以通过不同的实验技术和分析方法反复研究生物现象的不同方面或一方面。每项研究的产量是感兴趣的组件的排名列表。通过这些实验产生的组分等级组分的聚集量,例如蛋白质,基因和单核苷酸变体(SNV),已被证明有助于过滤噪音并提出对生物问题的更完全了解。目前的排名聚合方法不考虑在许多数据集成研究中提供重要贡献的网络信息。我们开发了包含网络信息的网络调谐秩聚合方法,并在没有网络信息的情况下展示了其过度的聚合方法的优越性。测试方法是预测酵母蛋白的基因本体函数。我们通过组合三个网络,使用三种基因表达数据集的组合和三个蛋白质交互网络以及集成网络来验证方法。结果表明,如果掺入蛋白质相互作用网络,聚合等级列表更有意义。在这些方法中,CGI_RRA和CGI_ENDEAVOUR使用CGI [1]将等级列表集成在一起,然后使用强大的等级聚合(RRA)[2]或endeavor [3]执行最佳排名聚合。最后,我们使用方法来定位转录因子的目标基因。

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