CTL公司*
生物
MHC I级
贪婪
主要组织相容性复合体
CD8型
MHC限制
否定选择
细胞毒性T细胞
背景(考古学)
人类白细胞抗原
人口
细胞生物学
抗原
遗传学
基因
体外
古生物学
人口学
基因组
社会学
作者
Michael H. Newberg,Douglas H. Smith,Steffen Haertel,Donna R. Vining,Elizabeth Lacy,Víctor H. Engelhard
出处
期刊:Journal of Immunology
[The American Association of Immunologists]
日期:1996-04-01
卷期号:156 (7): 2473-2480
被引量:93
标识
DOI:10.4049/jimmunol.156.7.2473
摘要
Abstract The importance of the species of different domains of class I MHC molecules in peripheral T cell recognition and positive and negative selection was evaluated in a single system. In transgenic mice expressing AAD (containing the alpha1+alpha2 domains of HLA-A2.1 and the alpha3 domain of H-2Dd), the CTL response to influenza peptide M1(58-66) in the context of the alpha1+alpha2 domains of HLA-A2.1 was as strong as the influenza-specific H-2Db-restricted response. However, this strong response was only discernible if the target cell MHC molecule also contained a murine alpha3 domain. In contrast, the response in HLA-A2.1 transgenic mice was about 30-fold weaker, and these CTL were indifferent to the origin of the target molecule alpha3 domain. Further analysis suggested that the major impact of the murine alpha3 domain of the transgene product was to enhance positive selection of a low affinity population of AAD-restricted T cells, presumably through species-specific interaction with CD8. Surprisingly, the response to non-self human class I MHC determinants was not augmented in AAD mice, indicating that the T cells selected are narrowly focused on AAD-related structures. Further analysis indicated that the alphal+alpha2 domains as well as the alpha3 domain influenced the magnitude of the response to non-self human class I MHC determinants, and this effect was mapped to alpha2. We suggest that the alpha2 domains of murine class I molecules contain conserved structural elements that augment the avidity of T cell-class I interactions, and this is particularly important in the recognition of non-self MHC molecules.
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