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使用MHC结合裂隙环境的新表示方法改进泛特异性MHC I类肽结合预测。

Improved pan-specific MHC class I peptide-binding predictions using a novel representation of the MHC-binding cleft environment.

作者信息

Carrasco Pro S, Zimic M, Nielsen M

机构信息

Laboratorio de Bioinformática y Biología Molecular, Laboratorios de Investigación y Desarrollo, Facultad de Ciencias y Filosofía, Universidad Peruana Cayetano Heredia, Lima, Peru.

出版信息

Tissue Antigens. 2014 Feb;83(2):94-100. doi: 10.1111/tan.12292.

Abstract

Major histocompatibility complex (MHC) molecules play a key role in cell-mediated immune responses presenting bounded peptides for recognition by the immune system cells. Several in silico methods have been developed to predict the binding affinity of a given peptide to a specific MHC molecule. One of the current state-of-the-art methods for MHC class I is NetMHCpan, which has a core ingredient for the representation of the MHC class I molecule using a pseudo-sequence representation of the binding cleft amino acid environment. New and large MHC-peptide-binding data sets are constantly being made available, and also new structures of MHC class I molecules with a bound peptide have been published. In order to test if the NetMHCpan method can be improved by integrating this novel information, we created new pseudo-sequence definitions for the MHC-binding cleft environment from sequence and structural analyses of different MHC data sets including human leukocyte antigen (HLA), non-human primates (chimpanzee, macaque and gorilla) and other animal alleles (cattle, mouse and swine). From these constructs, we showed that by focusing on MHC sequence positions found to be polymorphic across the MHC molecules used to train the method, the NetMHCpan method achieved a significant increase in the predictive performance, in particular, of non-human MHCs. This study hence showed that an improved performance of MHC-binding methods can be achieved not only by the accumulation of more MHC-peptide-binding data but also by a refined definition of the MHC-binding environment including information from non-human species.

摘要

主要组织相容性复合体(MHC)分子在细胞介导的免疫反应中起着关键作用,它呈递结合的肽段以供免疫系统细胞识别。已经开发了几种计算机方法来预测给定肽段与特定MHC分子的结合亲和力。目前用于I类MHC的最先进方法之一是NetMHCpan,它的一个核心要素是使用结合裂隙氨基酸环境的伪序列表示来呈现I类MHC分子。新的大型MHC-肽结合数据集不断涌现,同时也发表了带有结合肽段的I类MHC分子的新结构。为了测试NetMHCpan方法是否可以通过整合这些新信息得到改进,我们通过对不同MHC数据集(包括人类白细胞抗原(HLA)、非人类灵长类动物(黑猩猩、猕猴和大猩猩)以及其他动物等位基因(牛、小鼠和猪))进行序列和结构分析,为MHC结合裂隙环境创建了新的伪序列定义。从这些构建中,我们表明,通过关注在用于训练该方法的MHC分子中发现的多态性MHC序列位置,NetMHCpan方法在预测性能上有了显著提高,特别是对于非人类MHC。因此,这项研究表明,不仅通过积累更多的MHC-肽结合数据,而且通过包括来自非人类物种信息的MHC结合环境的精确界定,可以实现MHC结合方法性能的提升。

https://cdn.ncbi.nlm.nih.gov/pmc/blobs/b208/3925504/dce0bf4726aa/nihms-551103-f0001.jpg

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