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Sensitivity Analysis of Protein Role Prediction Methods: Which are the Relevant Data?

机译:蛋白质作用预测方法的敏感性分析:相关数据有哪些?

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Genome sequencing has allowed the generation of genomic and high-throughput post-genomic data. The availability of huge amounts of this data has, in turn, led to the development of protein role inference methods. Some of these methods allow the use of heterogeneous data of varying quality which are more or less informative. However, only limited research has been devoted to finding relevant data in terms of the inference of protein roles. In this study, we identified relevant subsets of data for the prediction of protein roles within the framework of a kernel method (KCCA) used to predict the role of a bacterial protein. We carried out a sensitivity analysis based on a fractional factorial design in order to study the influence of different microarray experiments, as well as of bacterial orders (groups of families) used to constructthe phylogenetic profiles, on the prediction of a protein role. The results of this analysis showed to be useful for interpreting biological predictions highlighting specific data that should be investigated. The method is not restricted to KCCA, nor to the organism or to the data we used here.
机译:基因组测序已允许生成基因组和高通量的后基因组数据。反过来,大量此类数据的可用性也导致了蛋白质角色推断方法的发展。这些方法中的一些方法允许使用质量不同的异构数据,这些数据或多或少提供了信息。但是,只有有限的研究致力于根据蛋白质作用的推论找到相关数据。在这项研究中,我们在用于预测细菌蛋白作用的核方法(KCCA)的框架内,确定了用于预测蛋白作用的相关数据子集。我们进行了基于分数阶乘设计的敏感性分析,以研究不同微阵列实验以及用于构建系统发育谱的细菌顺序(家庭群体)对蛋白质作用的预测的影响。该分析的结果表明对于解释突出应研究的具体数据的生物学预测非常有用。该方法不仅限于KCCA,也不限于有机体或此处使用的数据。

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