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评估现有计算模型在预测 CD8+ T 细胞致病性表位和癌症新抗原方面的性能。

Evaluating performance of existing computational models in predicting CD8+ T cell pathogenic epitopes and cancer neoantigens.

机构信息

MRC Human Immunology Unit, Medical Research Council (MRC) Human Immunology Unit, MRC Weatherall Institute of Molecular Medicine (WIMM), John Radcliffe Hospital, University of Oxford, Oxford, United Kingdom.

MRC WIMM Centre for Computational Biology, Medical Research Council (MRC) Weatherall Institute of Molecular Medicine, John Radcliffe Hospital, University of Oxford, Oxford, United Kingdom.

出版信息

Brief Bioinform. 2022 May 13;23(3). doi: 10.1093/bib/bbac141.

Abstract

T cell recognition of a cognate peptide-major histocompatibility complex (pMHC) presented on the surface of infected or malignant cells is of the utmost importance for mediating robust and long-term immune responses. Accurate predictions of cognate pMHC targets for T cell receptors would greatly facilitate identification of vaccine targets for both pathogenic diseases and personalized cancer immunotherapies. Predicting immunogenic peptides therefore has been at the center of intensive research for the past decades but has proven challenging. Although numerous models have been proposed, performance of these models has not been systematically evaluated and their success rate in predicting epitopes in the context of human pathology has not been measured and compared. In this study, we evaluated the performance of several publicly available models, in identifying immunogenic CD8+ T cell targets in the context of pathogens and cancers. We found that for predicting immunogenic peptides from an emerging virus such as severe acute respiratory syndrome coronavirus 2, none of the models perform substantially better than random or offer considerable improvement beyond HLA ligand prediction. We also observed suboptimal performance for predicting cancer neoantigens. Through investigation of potential factors associated with ill performance of models, we highlight several data- and model-associated issues. In particular, we observed that cross-HLA variation in the distribution of immunogenic and non-immunogenic peptides in the training data of the models seems to substantially confound the predictions. We additionally compared key parameters associated with immunogenicity between pathogenic peptides and cancer neoantigens and observed evidence for differences in the thresholds of binding affinity and stability, which suggested the need to modulate different features in identifying immunogenic pathogen versus cancer peptides. Overall, we demonstrate that accurate and reliable predictions of immunogenic CD8+ T cell targets remain unsolved; thus, we hope our work will guide users and model developers regarding potential pitfalls and unsettled questions in existing immunogenicity predictors.

摘要

T 细胞识别在感染或恶性细胞表面呈现的同源肽-主要组织相容性复合物(pMHC)对于介导强大和长期的免疫反应至关重要。准确预测 T 细胞受体的同源 pMHC 靶标将极大地促进对致病性疾病和个性化癌症免疫疗法的疫苗靶标的识别。因此,预测免疫原性肽一直是过去几十年密集研究的中心,但事实证明具有挑战性。尽管已经提出了许多模型,但这些模型的性能尚未得到系统评估,并且尚未测量和比较它们在人类病理背景下预测表位的成功率。在这项研究中,我们评估了几种公开可用模型在识别病原体和癌症背景下免疫原性 CD8+ T 细胞靶标的性能。我们发现,对于预测像严重急性呼吸综合征冠状病毒 2 这样的新兴病毒的免疫原性肽,没有一个模型的表现明显优于随机模型,或者在 HLA 配体预测之外提供相当大的改进。我们还观察到预测癌症新抗原的表现不佳。通过调查与模型性能不佳相关的潜在因素,我们强调了几个与数据和模型相关的问题。特别是,我们观察到模型训练数据中免疫原性和非免疫原性肽的 HLA 交叉变异似乎极大地混淆了预测。我们还比较了致病肽和癌症新抗原之间与免疫原性相关的关键参数,并观察到结合亲和力和稳定性阈值存在差异的证据,这表明需要在识别免疫原性病原体与癌症肽时调节不同的特征。总的来说,我们证明准确可靠地预测免疫原性 CD8+ T 细胞靶标仍然未得到解决;因此,我们希望我们的工作将指导用户和模型开发人员了解现有免疫原性预测器中的潜在陷阱和未解决的问题。

https://cdn.ncbi.nlm.nih.gov/pmc/blobs/91bf/9116217/dc5e61c7cf1d/bbac141f1.jpg

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