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A New Kernel Based on Weighted Cross-Correlation Coefficient for SVMs and Its Application on Prediction of T-cell Epitopes

机译:一种新的核,基于SVMS加权互相关系数及其在T细胞表位预测中的应用

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T-cell epitopes play vital roles in immune response. Its recognition by T-cell receptors is a precondition for the activation of T-cell clone. This recognition is antigen-specific. Therefore, identifying the pattern of a MHC restricted T-cell epitopes is of great importance for immunotherapy and vaccine design. In this paper, we designed a new kernel based on weighted crosscorrelation coefficients for support vector machine and applied it to the direct prediction of T-cell epitopes. The experiment was carried on an MHC type I restricted T-cell clone LAU203-1.5. The results showed that this approach is efficient and promising.
机译:T细胞表位在免疫应答中起重要作用。其对T细胞受体的识别是激活T细胞克隆的前提。这种识别是抗原特异性的。因此,鉴定MHC受限制的T细胞表位的模式对于免疫疗法和疫苗设计具有重要意义。在本文中,我们设计了一种基于支持向量机的加权跨相关系数的新内核,并将其应用于T细胞表位的直接预测。将实验载于MHC I型限制T细胞克隆LAU203-1.5。结果表明,这种方法是有效和有前途的。

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