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SVM-based prediction of linear B-cell epitopes using Bayes Feature Extraction

机译:使用贝叶斯特征提取的基于SVM的线性B细胞表位预测

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BackgoundThe identification of B-cell epitopes on antigens has been a subject of intense research as the knowledge of these markers has great implications for the development of peptide-based diagnostics, therapeutics and vaccines. As experimental approaches are often laborious and time consuming, in silico methods for prediction of these immunogenic regions are critical. Such efforts, however, have been significantly hindered by high variability in the length and composition of the epitope sequences, making na?ve modeling methods difficult to apply.ResultsWe analyzed two benchmark datasets and found that linear B-cell epitopes possess distinctive residue conservation and position-specific residue propensities which could be exploited for epitope discrimination in silico. We developed a support vector machines (SVM) prediction model employing Bayes Feature Extraction to predict linear B-cell epitopes of diverse lengths (12- to 20-mers). The best SVM classifier achieved an accuracy of 74.50% and AROC of 0.84 on an independent test set and was shown to outperform existing linear B-cell epitope prediction algorithms. In addition, we applied our model to a dataset of antigenic proteins with experimentally-verified epitopes and found it to be generally effective for discriminating the epitopes from non-epitopes.ConclusionWe developed a SVM prediction model utilizing Bayes Feature Extraction and showed that it was effective in discriminating epitopes from non-epitopes in benchmark datasets and annotated antigenic proteins. A web server for predicting linear B-cell epitopes was developed and is available, together with supplementary materials, at http://www.immunopred.org/bayesb/index.html.
机译:背景技术鉴定抗原上的B细胞表位一直是深入研究的主题,因为这些标记的知识对基于肽的诊断,治疗和疫苗的开发具有重大意义。由于实验方法通常是费力且费时的,因此用于预测这些免疫原性区域的计算机方法至关重要。然而,由于表位序列的长度和组成的高度可变性极大地阻碍了这些努力,从而使朴素的建模方法难以应用。结果我们分析了两个基准数据集,发现线性B细胞表位具有独特的残基保守性和特定位置的残基倾向可用于计算机识别表位。我们使用贝叶斯特征提取开发了支持向量机(SVM)预测模型,以预测不同长度(12至20个聚体)的线性B细胞表位。最好的SVM分类器在独立测试集上的准确度达到74.50%,A ROC 达到0.84,并且表现优于现有的线性B细胞表位预测算法。此外,我们将该模型应用于经过实验验证的抗原决定簇的抗原蛋白数据集,发现它通常可以有效地区分非表位的抗原决定簇。结论我们利用贝叶斯特征提取开发了一个SVM预测模型,并证明了它的有效性区分基准数据集中非表位的表位和带注释的抗原蛋白。开发了一种用于预测线性B细胞表位的Web服务器,并与补充材料一起在http://www.immunopred.org/bayesb/index.html上提供。

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