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基于肽库位置扫描的MHC I类结合肽自动预测

An automated prediction of MHC class I-binding peptides based on positional scanning with peptide libraries.

作者信息

Udaka K, Wiesmüller K H, Kienle S, Jung G, Tamamura H, Yamagishi H, Okumura K, Walden P, Suto T, Kawasaki T

机构信息

Department of Biophysics, Kyoto University, Sakyo, Japan.

出版信息

Immunogenetics. 2000 Aug;51(10):816-28. doi: 10.1007/s002510000217.

Abstract

Specificities of three mouse major histocompatibility complex (MHC) class I molecules, Kb, Db, and Ld, were analyzed by positional scanning using combinatorial peptide libraries. The result of the analysis was used to create a scoring program to predict MHC-binding peptides in proteins. The capacity of the scoring was then challenged with a number of peptides by comparing the prediction with the experimental binding. The score and the experimental binding exhibited a linear correlation but with substantial deviations of data points. Statistically, for approximately 80% of randomly chosen peptides, MHC-binding capacity could be predicted within one log concentration of peptides for a half-maximal binding. Known cytotoxic T-lymphocyte epitope peptides could be predicted, with a few exceptions. In addition, frequent findings of MHC-binding peptides with incomplete or no anchor amino acid(s) suggested a substantial bias introduced by natural antigen processing in peptide selection by MHC class I molecules.

摘要

使用组合肽库通过位置扫描分析了三种小鼠主要组织相容性复合体(MHC)I类分子Kb、Db和Ld的特异性。分析结果用于创建一个评分程序,以预测蛋白质中的MHC结合肽。然后通过将预测结果与实验结合情况进行比较,用多种肽对评分能力进行了验证。评分与实验结合呈现线性相关,但数据点存在较大偏差。从统计学角度来看,对于大约80%随机选择的肽,在肽的浓度达到半数最大结合的一个对数范围内,MHC结合能力可以被预测。已知的细胞毒性T淋巴细胞表位肽大多可以被预测,但有少数例外。此外,经常发现具有不完全或没有锚定氨基酸的MHC结合肽,这表明MHC I类分子在肽选择过程中天然抗原加工引入了显著偏差。

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