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SVD-phy: improved prediction of protein functional associations through singular value decomposition of phylogenetic profiles

机译:SVD-phy:通过系统发育谱的奇异值分解,改善蛋白质功能关联的预测

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摘要

A successful approach for predicting functional associations between non-homologous genes is to compare their phylogenetic distributions. We have devised a phylogenetic profiling algorithm, SVD-Phy, which uses truncated singular value decomposition to address the problem of uninformative profiles giving rise to false positive predictions. Benchmarking the algorithm against the KEGG pathway database, we found that it has substantially improved performance over existing phylogenetic profiling methods.
机译:预测非同源基因之间功能关联的成功方法是比较它们的系统发育分布。我们设计了一种系统发育分析算法SVD-Phy,该算法使用截断的奇异值分解来解决无信息的轮廓问题,从而导致假阳性预测。对照KEGG通路数据库对算法进行基准测试,我们发现它比现有的系统发育分析方法具有显着提高的性能。

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