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JUPred_MLP: Prediction of Phosphorylation Sites Using a Consensus of MLP Classifiers

机译:Jupred_mlp:使用MLP分类器的共识预测磷酸化位点

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Post-translational modification is the attachment of biochemical functional groups after translation from mRNA. Among the different post translational modifications, phosphorylation happens to be one of the most important types which is responsible for important cellular operations. In this research work, we have used multilayer perceptron (MLP) to predict protein residues which are phosphorylated. As features, we have used position-specific scoring matrices (PSSM) generated by PSI-BLAST algorithm for each protein sequence after three runs against 90 % redundancy reduced Uniprot database. For an independent set of 141 proteins, our system was able to provide the best AUC score for 36 proteins, highest for any other predictor. Our system achieved an AUC score of 0.7239 for all the protein sequences combined, which is comparable to the state-of-the art predictors.
机译:翻译后修饰是在MRNA翻译后的生化官能团的附着。在不同的翻译后修改中,磷酸化恰好是最重要的类型之一,这是负责重要的细胞操作的。在本研究工作中,我们使用多层感知者(MLP)预测磷酸化的蛋白质残留物。作为特征,我们已经使用了PSI-BLAST算法生成的特定于特定的评分矩阵(PSSM),在三次运行时对每种蛋白质序列进行了50%冗余减少的UNIPROT数据库。对于一个独立的141个蛋白质,我们的系统能够为36种蛋白质提供最佳的AUC分数,最高的任何其他预测因子。我们的系统对于所有蛋白质序列组合的所有蛋白质序列实现了0.7239的AUC分数,这与最先进的预测器相当。

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