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Meta-prediction of phosphorylation sites with weighted voting and restricted grid search parameter selection

机译:具有加权投票和受限网格搜索参数选择的磷酸化位点的元预测

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摘要

Meta-predictors make predictions by organizing and processing the predictions produced by several other predictors in a defined problem domain. A proficient meta-predictor not only offers better predicting performance than the individual predictors from which it is constructed, but it also relieves experimentally researchers from making difficult judgments when faced with conflicting results made by multiple prediction programs. As increasing numbers of predicting programs are being developed in a large number of fields of life sciences, there is an urgent need for effective meta-prediction strategies to be investigated. We compiled four unbiased phosphorylation site datasets, each for one of the four major serine/threonine (S/T) protein kinase families—CDK, CK2, PKA and PKC. Using these datasets, we examined several meta-predicting strategies with 15 phosphorylation site predictors from six predicting programs: GPS, KinasePhos, NetPhosK, PPSP, PredPhospho and Scansite. Meta-predictors constructed with a generalized weighted voting meta-predicting strategy with parameters determined by restricted grid search possess the best performance, exceeding that of all individual predictors in predicting phosphorylation sites of all four kinase families. Our results demonstrate a useful decision-making tool for analysing the predictions of the various S/T phosphorylation site predictors. An implementation of these meta-predictors is available on the web at: .
机译:元预测器通过在定义的问题域中组织和处理由其他几个预测器产生的预测来进行预测。一个精通的元预测器不仅提供比单个预测器更好的预测性能,而且还使实验研究人员在面对多个预测程序得出的相互矛盾的结果时,可以避免做出困难的判断。随着在许多生命科学领域中开发越来越多的预测程序,迫切需要研究有效的元预测策略。我们编辑了四个无偏磷酸化位点数据集,每个数据集均来自四个主要的丝氨酸/苏氨酸(S / T)蛋白激酶家族之一-CDK,CK2,PKA和PKC。使用这些数据集,我们检查了来自六个预测程序中的15个磷酸化位点预测子的几种元预测策略:GPS,KinasePhos,NetPhosK,PPSP,PredPhospho和Scansite。用广义加权投票元预测策略构建的元预测器具有最佳的性能,在预测所有四个激酶家族的磷酸化位点方面,其性能均优于所有单个预测器。我们的结果证明了一个有用的决策工具,可用于分析各种S / T磷酸化位点预测因子的预测。这些元预测器的实现可在以下网站上找到:。

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