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Prediction of conotoxin superfamilies by the Naive Bayes classifier

机译:朴素贝叶斯分类器对芋螺毒素超家族的预测

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Conotoxins are a group of high specialized and functionally diverse peptides. Because the conotoxins are selectivity for membrane receptors and ion channels, so they can make valuable biological probes and drug targets. Successful prediction of the conotoxin superfamily peptide has important biological meaning in the pharmacology of the neurotoxins. In this work, based on the concept that the function of toxin protein is determined by its protein sequence, the Naive Bayes classifier and feature selection method are proposed to predict the conotoxin superfamilies. The obtained results of the jackknife test indicated that the overall prediction accuracy is 84.92% for the dataset with 305 conotoxins. This algorithm was also used to predict the dataset with 116 conotoxins and 60 non-conotoxins, the higher predictive rates than some previous studies are obtained in our study.
机译:芋螺毒素是一组高度专业化且功能多样的肽。由于芋螺毒素对膜受体和离子通道具有选择性,因此它们可以成为有价值的生物探针和药物靶标。芋螺毒素超家族肽的成功预测在神经毒素的药理学中具有重要的生物学意义。在这项工作中,基于毒素蛋白的功能取决于其蛋白序列的概念,提出了朴素贝叶斯分类器和特征选择方法来预测毒素的超家族。折刀试验的所得结果表明,含有305种毒素的数据集的总体预测准确度为84.92%。该算法还用于预测116种毒素和60种非毒素的数据集,其预测率高于我们的研究中的某些先前研究。

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