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Using String Kernel to Predict Binding Peptides for MHC Class II Molecules

机译:使用串核预测MHC II类分子的结合肽

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Peptides that bind to Major Histocompatibility Complex (MHC) molecules can be presented to T-cell receptor and trigger immune response. Identification of specific binding peptides is critical for immunology research and vaccine design. A variety of methods such as HMM and ANN have been applied to predict peptides that can bind to MHC class I molecules and therefore the number of candidate binders for experimental assay can be largely reduced. However, it is a more complex process to predict peptides that bind to MHC class II molecules. In this paper, we present a SVM-based method for the prediction of MHC class II binding peptides by using string kernel. The proposed method adopts a special string kernel to compute the similarity between biological sequences with various lengths and experimental results show that our method outperforms other reported approaches. The proposed method does not require that sequences be aligned to the same length, and hence is easily employed for other prediction tasks.
机译:与主要组织相容性复合物(MHC)分子结合的肽可以呈现给T细胞受体并引发免疫应答。特异性结合肽的鉴定对于免疫学研究和疫苗设计至关重要。已经施加了各种方法,例如HMM和ANN,以预测可以与MHC I类分子结合的肽,因此可以大大降低实验测定的候选粘合剂的数量。然而,预测与MHC II类分子结合的肽是更复杂的方法。在本文中,我们介绍了一种基于SVM的方法,用于通过使用串核来预测MHC类II结合肽。所提出的方法采用特殊的弦核来计算具有各种长度和实验结果的生物序列之间的相似性,表明我们的方法优于其他报告的方法。所提出的方法不需要该序列与相同的长度对齐,因此易于用于其他预测任务。

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