首页> 外文会议>Bioinformatics Research and Applications; Lecture Notes in Bioinformatics; 4463 >Predicting Palmitoylation Sites Using a Regularised Bio-basis Function Neural Network
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Predicting Palmitoylation Sites Using a Regularised Bio-basis Function Neural Network

机译:使用规则化的生物基础功能神经网络预测棕榈酰化位点

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摘要

Palmitoylation is one of the most important post-translational modifications involving molecular signalling activities. Two simple methods have been developed very recently for predicting palmitoylation sites, but the sensitivity (the prediction accuracy of palmitoylation sites) of both methods is low ( < 65%). A regularised bio-basis function neural network is implemented in this paper aiming to improve the sensitivity. A set of protein sequences with experimentally determined palmitoylation sites are downloaded from NCBI for the study. The protein-oriented cross-validation strategy is used for proper model construction. The experiments show that the regularised bio-basis function neural network significantly outperforms the two existing methods as well as the support vector machine and the radial basis function neural network. Specifically the sensitivity has been significantly improved with a slightly improved specificity (the prediction accuracy of non-palmitoylation sites).
机译:棕榈酰化是涉及分子信号传导活性的最重要的翻译后修饰之一。最近已经开发了两种简单的方法来预测棕榈酰化位点,但是这两种方法的灵敏度(棕榈酰化位点的预测准确性)都很低(<65%)。为了提高灵敏度,本文设计了一个正则化的生物基础函数神经网络。可从NCBI下载一组具有实验确定的棕榈酰化位点的蛋白质序列进行研究。面向蛋白质的交叉验证策略用于适当的模型构建。实验表明,正则化的生物基函数神经网络明显优于现有的两种方法,以及支持向量机和径向基函数神经网络。具体而言,灵敏度已显着提高,而特异性稍有提高(非棕榈酰化位点的预测准确性)。

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