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Prediction of neurotoxins based on their function and source

机译:根据神经毒素的功能和来源预测神经毒素

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摘要

We have developed a method NTXpred for predicting neurotoxins and classifying them based on their function and origin. The dataset used in this study consists of 582 non-redundant, experimentally annotated neurotoxins obtained from Swiss-Prot. A number of modules have been developed for predicting neurotoxins using residue composition based on feed-forwarded neural network (FNN), recurrent neural network (RNN), support vector machine (SVM) and achieved maximum accuracy of 84.19, 92.75, 97.72 respectively. In addition, SVM modules have been developed for classifying neurotoxins based on their source (e.g., eubacteria, cnidarians, molluscs, arthropods have been and chordate) using amino acid composition and dipeptide composition and achieved maximum overall accuracy of 78.94 and 88.07 respectively. The overall accuracy increased to 92.10, when the evolutionary information obtained from PSIBLAST was combined with SVM module of source classification. We have also developed SVM modules for classifying neurotoxins based on functions using amino acid, dipeptide composition and achieved overall accuracy of 83.11, 91.10 respectively. The overall accuracy of function classification improved to 95.11, when PSIBLAST output was combined with SVM module. All the modules developed in this study were evaluated using five-fold cross-validation technique. The NTXpred is available at www.imtech.res.in/raghava/ntxpred/ and mirror site at http://bioinformatics.uams.edu/mirror/ntxpred.
机译:我们开发了一种NTXpred方法,用于预测神经毒素并根据其功能和来源对其进行分类。本研究中使用的数据集包括 582 种从 Swiss-Prot 获得的非冗余、实验注释的神经毒素。基于前馈神经网络(FNN)、循环神经网络(RNN)、支持向量机(SVM)开发了多个使用残基组成的神经毒素预测模块,最高准确率分别达到84.19%、92.75%、97.72%。此外,还开发了SVM模块,用于根据神经毒素的来源(例如真细菌、刺胞动物、软体动物、节肢动物和脊索动物)使用氨基酸组成和二肽组成进行分类,并分别达到了78.94%和88.07%的最大总体准确率。将PSIBLAST获取的进化信息与源分类的SVM模块相结合,整体准确率提高到92.10%。我们还开发了SVM模块,用于根据氨基酸、二肽组成的功能对神经毒素进行分类,总体准确率分别为83.11%和91.10%。当PSIBLAST输出与SVM模块相结合时,功能分类的整体准确率提高到95.11%。本研究中开发的所有模块均使用五重交叉验证技术进行评估。NTXpred 可在 www.imtech.res.in/raghava/ntxpred/ 和镜像站点 http://bioinformatics.uams.edu/mirror/ntxpred 获得。

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