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SecretP: a new method for predicting mammalian secreted proteins.

机译:SecretO:一种预测哺乳动物分泌蛋白的新方法。

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In contrast to a large number of classically secreted proteins (CSPs) and non-secreted proteins (NSPs), only a few proteins have been experimentally proved to enter non-classical secretory pathways. So it is difficult to identify non-classically secreted proteins (NCSPs), and no methods are available for distinguishing the three types of proteins simultaneously. In order to solve this problem, a data mining has been taken firstly, and mammalian proteins exported via ER-Golgi-independent pathways are collected through extensive literature searches. In this paper, a support vector machine (SVM)-based ternary classifier named SecretP is proposed to predict mammalian secreted proteins by using pseudo-amino acid composition (PseAA) and five additional features. When distinguishing the three types of proteins, SecretP yielded an accuracy of 88.79%. Evaluating the performance of our method by an independent test set of 92 human proteins, 76 of them are correctly predicted as NCSPs. When performed on another public independent data set, the prediction result of SecretP is comparable to those of other existing computational methods. Therefore, SecretP can be a useful supplementary tool for future secretome studies. The web server SecretP and all supplementary tables listed in this paper are freely available at http://cic.scu.edu.cn/bioinformatics/secretp/index.htm.
机译:与大量的经典分泌蛋白(CSP)和非分泌蛋白(NSP)相比,实验证明只有少数几种蛋白可以进入非经典分泌途径。因此,很难鉴定非经典分泌的蛋白质(NCSP),并且没有可用于同时区分三种蛋白质的方法。为了解决这个问题,首先进行了数据挖掘,并通过广泛的文献搜索收集了通过ER-高尔基独立途径输出的哺乳动物蛋白。本文提出了一种基于支持向量机(SVM)的三元分类器SecretP,该伪分类器通过使用伪氨基酸成分(PseAA)和五个附加功能来预测哺乳动物分泌的蛋白质。区分三种蛋白质时,SecretP的准确度为88.79%。通过92个人类蛋白质的独立测试集评估我们方法的性能,其中76个被正确预测为NCSP。当对另一个公共独立数据集执行时,SecretP的预测结果与其他现有计算方法的预测结果可比。因此,SecretP可以作为将来的分泌组研究的有用补充工具。可在http://cic.scu.edu.cn/bioinformatics/secretp/index.htm上免费获得本文中列出的Web服务器SecretP和所有补充表。

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