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Signal peptide prediction based on analysis of experimentally verified cleavage sites

机译:基于对实验验证的切割位点的分析预测信号肽

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摘要

A number of computational tools are available for detecting signal peptides, but their abilities to locate the signal peptide cleavage sites vary significantly and are often less than satisfactory. We characterized a set of 270 secreted recombinant human proteins by automated Edman analysis and used the verified cleavage sites to evaluate the success rate of a number of computational prediction programs. An examination of the frequency of amino acid in the N-terminal region of the data set showed a preference of proline and glutamine but a bias against tyrosine. The data set was compared to the SWISS-PROT database and revealed a high percentage of discrepancies with cleavage site annotations that were computationally generated. The best program for predicting signal sequences was found to be SignalP 2.0-NN with an accuracy of 78.1% for cleavage site recognition. The new data set can be utilized for refining prediction algorithms, and we have built an improved version of profile hidden Markov model for signal peptides based on the new data.
机译:许多计算工具可用于检测信号肽,但是它们定位信号肽切割位点的能力差异很大,并且通常不令人满意。我们通过自动Edman分析表征了一组270种分泌的重组人蛋白质,并使用经过验证的切割位点评估了许多计算预测程序的成功率。对数据集N端区域中氨基酸频率的检查显示脯氨酸和谷氨酰胺偏爱,但对酪氨酸有偏见。将该数据集与SWISS-PROT数据库进行了比较,发现在计算中产生分裂位点注释的差异很大。发现预测信号序列的最佳程序是SignalP 2.0-NN,其裂解位点识别的准确性为78.1%。新数据集可用于完善预测算法,并且我们已基于新数据为信号肽建立了轮廓隐藏Markov模型的改进版本。

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