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Prediction of MHC class I binding peptides, using SVMHC

机译:使用SVMHC预测MHC I类结合肽

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Background T-cells are key players in regulating a specific immune response. Activation of cytotoxic T-cells requires recognition of specific peptides bound to Major Histocompatibility Complex (MHC) class I molecules. MHC-peptide complexes are potential tools for diagnosis and treatment of pathogens and cancer, as well as for the development of peptide vaccines. Only one in 100 to 200 potential binders actually binds to a certain MHC molecule, therefore a good prediction method for MHC class I binding peptides can reduce the number of candidate binders that need to be synthesized and tested. Results Here, we present a novel approach, SVMHC, based on support vector machines to predict the binding of peptides to MHC class I molecules. This method seems to perform slightly better than two profile based methods, SYFPEITHI and HLA_BIND. The implementation of SVMHC is quite simple and does not involve any manual steps, therefore as more data become available it is trivial to provide prediction for more MHC types. SVMHC currently contains prediction for 26 MHC class I types from the MHCPEP database or alternatively 6 MHC class I types from the higher quality SYFPEITHI database. The prediction models for these MHC types are implemented in a public web service available at http://www.sbc.su.se/svmhc/ . Conclusions Prediction of MHC class I binding peptides using Support Vector Machines, shows high performance and is easy to apply to a large number of MHC class I types. As more peptide data are put into MHC databases, SVMHC can easily be updated to give prediction for additional MHC class I types. We suggest that the number of binding peptides needed for SVM training is at least 20 sequences.
机译:背景T细胞是调节特定免疫反应的关键因素。细胞毒性T细胞的激活需要识别与主要组织相容性复合物(MHC)I类分子结合的特定肽。 MHC-肽复合物是用于诊断和治疗病原体和癌症以及开发肽疫苗的潜在工具。实际上,每100到200个潜在的结合剂中只有一个结合到某个MHC分子,因此,良好的MHC I类结合肽预测方法可以减少需要合成和测试的候选结合剂的数量。结果在这里,我们基于支持向量机提出了一种新的方法SVMHC,以预测肽与MHC I类分子的结合。该方法的性能似乎比两种基于概要文件的方法SYFPEITHI和HLA_BIND略好。 SVMHC的实现非常简单,不涉及任何手动步骤,因此,随着可用数据的增加,为更多MHC类型提供预测变得微不足道了。 SVMHC当前包含来自MHCPEP数据库的26种MHC I类类型的预测,或者包含来自高质量SYFPEITHI数据库的6种MHC I类类型的预测。这些MHC类型的预测模型是在http://www.sbc.su.se/svmhc/上提供的公共Web服务中实现的。结论使用支持向量机对I类MHC结合肽的预测显示出高性能,并且易于应用于多种I类MHC。随着将更多的肽数据输入MHC数据库,可以轻松更新SVMHC以预测其他I类MHC类型。我们建议SVM训练所需的结合肽数量至少为20个序列。

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