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利用人工智能进行新抗原预测。

Leveraging Artificial Intelligence for Neoantigen Prediction.

作者信息

Zeng Jing, Lin Zhengjun, Zhang Xianghong, Zheng Tao, Xu Haodong, Liu Tang

机构信息

Department of Orthopedics, The Second Xiangya Hospital of Central South University, Changsha, People's Republic of China.

Center for Precision Health, School of Biomedical Informatics, The University of Texas Health Science Center at Houston, Houston, Texas.

出版信息

Cancer Res. 2025 Jul 2;85(13):2376-2387. doi: 10.1158/0008-5472.CAN-24-2553.

Abstract

Neoantigens represent a class of antigens within tumor microenvironments that arise from diverse somatic mutations and aberrations specific to tumorigenesis, holding substantial promise for advancing tumor immunotherapy. However, only a subset of neoantigens effectively elicits antitumor immune responses, and the specific neoantigens recognized by individual T-cell receptors (TCR) remain incompletely characterized. Therefore, substantial research has focused on screening immunogenic neoantigens, mainly through their major histocompatibility complex (MHC) presentation and TCR recognition specificity. Given the resource intensiveness and inefficiency of experimental validation, predictive models based on artificial intelligence (AI) have gradually become mainstream methods to discover immunogenic neoantigens. In this article, we provide a comprehensive summary of current AI methodologies for predicting neoantigens, with a particular focus on their capability to model peptide-MHC (pMHC) and pMHC-TCR binding. Furthermore, a thorough benchmarking analysis was conducted to assess the performance of antigen presentation predictors for scoring the immunogenicity of neoantigens. AI models have potential applications in the treatment of clinical diseases although several limitations must first be overcome to realize their full potential. Anticipated advancements in data accessibility, algorithmic refinement, platform enhancement, and comprehensive validation of immune processes are poised to enhance the precision and utility of neoantigen prediction methodologies. This article is part of a special series: Driving Cancer Discoveries with Computational Research, Data Science, and Machine Learning/AI.

摘要

新抗原是肿瘤微环境中的一类抗原,由肿瘤发生过程中特有的各种体细胞突变和畸变产生,为推进肿瘤免疫治疗带来了巨大希望。然而,只有一部分新抗原能有效引发抗肿瘤免疫反应,而个体T细胞受体(TCR)识别的特定新抗原仍未得到充分表征。因此,大量研究集中在筛选免疫原性新抗原上,主要通过其主要组织相容性复合体(MHC)呈递和TCR识别特异性来进行。鉴于实验验证资源密集且效率低下,基于人工智能(AI)的预测模型逐渐成为发现免疫原性新抗原的主流方法。在本文中,我们全面总结了当前用于预测新抗原的人工智能方法,特别关注其对肽-MHC(pMHC)和pMHC-TCR结合进行建模的能力。此外,还进行了全面的基准分析,以评估抗原呈递预测器对新抗原免疫原性评分的性能。尽管要充分发挥其潜力还必须首先克服一些限制,但人工智能模型在临床疾病治疗中具有潜在应用价值。预计在数据可及性、算法优化、平台改进以及免疫过程的全面验证方面取得的进展,将提高新抗原预测方法的准确性和实用性。本文是一个特别系列的一部分:通过计算研究、数据科学和机器学习/人工智能推动癌症发现。

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