Corbet Sylvie, Nielsen Henrik Vedel, Vinner Lasse, Lauemoller Sanne, Therrien Dominic, Tang Sheila, Kronborg Gitte, Mathiesen Lars, Chaplin Paul, Brunak Søren, Buus Søren, Fomsgaard Anders
Department of Virology, Statens Serum Institut, 5 Artillerivej, DK-2300 Copenhagen S, Denmark.
Institute for Medical Microbiology and Immunology, University of Copenhagen, Denmark.
J Gen Virol. 2003 Sep;84(Pt 9):2409-2421. doi: 10.1099/vir.0.19152-0.
MHC-I-restricted cytotoxic responses are considered a critical component of protective immunity against viruses, including human immunodeficiency virus type 1 (HIV-1). CTLs directed against accessory and early regulatory HIV-1 proteins might be particularly effective; however, CTL epitopes in these proteins are rarely found. Novel artificial neural networks (ANNs) were used to quantitatively predict HLA-A2-binding CTL epitope peptides from publicly available full-length HIV-1 protein sequences. Epitopes were selected based on their novelty, predicted HLA-A2-binding affinity and conservation among HIV-1 strains. HLA-A2 binding was validated experimentally and binders were tested for their ability to induce CTL and IFN-gamma responses. About 69 % were immunogenic in HLA-A2 transgenic mice and 61 % were recognized by CD8(+) T-cells from 17 HLA-A2 HIV-1-positive patients. Thus, 31 novel conserved CTL epitopes were identified in eight HIV-1 proteins, including the first HLA-A2 minimal epitopes ever reported in the accessory and regulatory proteins Vif, Vpu and Rev. Interestingly, intermediate-binding peptides of low or no immunogenicity (i.e. subdominant epitopes) were found to be antigenic and more conserved. Such epitope peptides were anchor-optimized to improve immunogenicity and further increase the number of potential vaccine epitopes. About 67 % of anchor-optimized vaccine epitopes induced immune responses against the corresponding non-immunogenic naturally occurring epitopes. This study demonstrates the potency of ANNs for identifying putative virus CTL epitopes, and the new HIV-1 CTL epitopes identified should have significant implications for HIV-1 vaccine development. As a novel vaccine approach, it is proposed to increase the coverage of HIV variants by including multiple anchor-optimized variants of the more conserved subdominant epitopes.
MHC-I 限制的细胞毒性反应被认为是针对包括 1 型人类免疫缺陷病毒(HIV-1)在内的病毒的保护性免疫的关键组成部分。针对 HIV-1 辅助蛋白和早期调节蛋白的细胞毒性 T 淋巴细胞(CTL)可能特别有效;然而,这些蛋白中的 CTL 表位很少被发现。新型人工神经网络(ANN)被用于从公开可用的全长 HIV-1 蛋白序列中定量预测 HLA-A2 结合的 CTL 表位肽。根据其新颖性、预测的 HLA-A2 结合亲和力以及在 HIV-1 毒株中的保守性来选择表位。通过实验验证了 HLA-A2 结合,并测试了结合物诱导 CTL 和 IFN-γ 反应的能力。约 69%在 HLA-A2 转基因小鼠中具有免疫原性,61%被 17 名 HLA-A2 HIV-1 阳性患者的 CD8(+)T 细胞识别。因此,在 8 种 HIV-1 蛋白中鉴定出 31 个新的保守 CTL 表位,包括在辅助和调节蛋白 Vif、Vpu 和 Rev 中首次报道的 HLA-A2 最小表位。有趣的是,发现低免疫原性或无免疫原性的中间结合肽(即亚显性表位)具有抗原性且更保守。对这类表位肽进行锚定优化以提高免疫原性,并进一步增加潜在疫苗表位的数量。约 67%的锚定优化疫苗表位诱导了针对相应非免疫原性天然存在表位的免疫反应。这项研究证明了人工神经网络在识别假定病毒 CTL 表位方面的效力,所鉴定的新 HIV-1 CTL 表位应该对 HIV-1 疫苗开发具有重要意义。作为一种新型疫苗方法,建议通过纳入更保守的亚显性表位的多个锚定优化变体来增加 HIV 变体的覆盖范围。