B073:一个泛hla预测新抗原加工和呈现到肿瘤细胞表面

T. Clancy, R. Stratford
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引用次数: 0

摘要

目前,预测新抗原的算法主要基于HLA等位基因之间关键肽结合亲和力差异的知识。尽管HLA结合算法可以很好地预测肽与HLA的结合亲和力,但它们不能预测加工和呈现到细胞表面(即免疫肽穹窿)。事实上,只有15%-20%的“预测”肽结合物被加工或呈现,因此有助于免疫肽穹窿。错误的预测可以用耗时费力的实验来解决,比如质谱(MS)。然而,在计算机预测也可能证明是非常有用的优先治疗相关的免疫原性肽。先前的计算机研究预测自然加工和递呈到细胞表面的肽只集中在抗原加工和递呈途径的众多步骤中的一个(如TAP运输或蛋白酶体切割等)。此外,以前的抗原加工预测工具已经经过训练,因此适用于特定的HLA等位基因,这使得对不太清楚表征的等位基因进行预测具有挑战性。在这里,我们概述了一种基于MS洗脱数据训练的机器学习方法,该方法以泛hla的方式预测新抗原在细胞表面的自然处理和呈现。该预测器在深度学习层中集成了多个免疫参数来预测新抗原,并可用于更准确地预测任何HLA等位基因,无论是在I类还是II类系统中。此外,通过分析先前发表的临床数据,我们说明其应用可显著提高对个性化癌症免疫治疗新抗原靶点的识别。引文格式:Trevor Clancy, Richard Stratford。泛hla预测新抗原加工和呈现到肿瘤细胞表面[摘要]。第四届CRI-CIMT-EATI-AACR国际癌症免疫治疗会议:将科学转化为生存;2018年9月30日至10月3日;纽约,纽约。费城(PA): AACR;癌症免疫学杂志,2019;7(2增刊):摘要nr B073。
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Abstract B073: A pan-HLA predictor of neoantigen processing and presentation to the tumor cell surface
Currently, neoantigens are often predicted using algorithms predominantly based on knowledge of the key peptide binding affinity difference between HLA alleles. Although HLA binding algorithms predict binding affinity of a peptide to HLA reasonably well, they do not predict processing and presentation of to the cell surface (i.e., the immunopeptidome). In fact, only 15%–20% of “predicted” peptide binders are processed or presented, and therefore contribute to the immunopeptidome. Erroneous predictions may be addressed with time-consuming and laborious experiments, such as mass-spectrometry (MS). However, in silico predictions may also prove to be very useful in prioritizing therapeutically relevant immunogenic peptides. Previous in silico studies that predict naturally processed and presented peptides to the cell surface have focused on only one of the many steps in the antigen processing and presentation pathway (such as TAP transport or proteasome cleavage, etc.). Additionally, previous antigen processing prediction tools have been trained and are therefore applicable to specific HLA alleles, making it challenging to make predictions for not so well-characterized alleles. Here, we outline a machine learning approach trained on MS elution data that predicts, in a pan-HLA manner, natural processing and presentation of neoantigens to the cell surface. The predictor is integrated with multiple immune parameters in a deep learning layer to predict neoantigens, and may be used for more accurate neoantigen predictions for any HLA allele, in both the class I and class II systems. Further, by analyzing previously published clinical data we illustrate that its application leads to a significantly improved identification of neoantigen targets for personalized cancer immunotherapy. Citation Format: Trevor Clancy, Richard Stratford. A pan-HLA predictor of neoantigen processing and presentation to the tumor cell surface [abstract]. In: Proceedings of the Fourth CRI-CIMT-EATI-AACR International Cancer Immunotherapy Conference: Translating Science into Survival; Sept 30-Oct 3, 2018; New York, NY. Philadelphia (PA): AACR; Cancer Immunol Res 2019;7(2 Suppl):Abstract nr B073.
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