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Computational identification of natural peptides based on analysis of molecular evolution

机译:基于分子进化分析的天然肽的计算鉴定

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Motivation: Many secretory peptides are synthesized as inactive precursors that must undergo post-translational processing to become biologically active peptides. Attempts to predict natural peptides are limited by the low performance of proteolytic site predictors and by the high combinatorial complexity of pairing such sites. To overcome these limitations, we analyzed the site-wise evolutionary mutation rates of peptide hormone precursors, calculated using the Rate4Site algorithm. Results: Our analysis revealed that within their precursors, peptide residues are significantly more conserved than the pro-peptide residues. This disparity enables the prediction of peptides with a precision of similar to 60% at a recall of 40% [receiver-operating characteristic curve (ROC) AUC 0.79]. Subsequently, combining the Rate4Site score with additional features and training a Random Forest classifier enable the prediction of natural peptides hidden within secreted human proteins at a precision of similar to 90% at a recall of 50% (ROC AUC 0.96). The high performance of our method allows it to be applied to full secretomes and to predict naturally occurring active peptides. Our prediction on Homo sapiens revealed several putative peptides in the human secretome that are currently unannotated. Furthermore, the unique expression of some of these peptides implies a potential hormone function, including peptides that are highly expressed in endocrine glands
机译:动机:许多分泌肽被合成为非活性前体,必须经过翻译后加工才能成为具有生物活性的肽。预测天然肽的尝试受到蛋白水解位点预测子的低性能和配对这些位点的高组合复杂性的限制。为了克服这些限制,我们分析了使用Rate4Site算法计算的肽激素前体的位点进化突变率。结果:我们的分析表明,在其前体中,肽残基比前肽残基保守得多。这种差异使得在预测召回率为40%时,可以以接近60%的精度预测肽[接收器工作特征曲线(ROC)AUC 0.79]。随后,将Rate4Site得分与其他功能结合起来,并训练随机森林分类器,可以预测隐藏在分泌的人类蛋白质中的天然肽,其精确度接近90%,召回率为50%(ROC AUC 0.96)。我们方法的高性能使其可以应用于完整的分泌蛋白组并预测天然存在的活性肽。我们对智人的预测揭示了人类分泌组中目前尚无注释的几种推定肽。此外,其中某些肽的独特表达意味着潜在的激素功能,包括在内分泌腺中高表达的肽

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