人类白细胞抗原
主要组织相容性复合体
MHC I级
计算机科学
排名(信息检索)
表位
计算生物学
生物
免疫学
免疫系统
机器学习
人工智能
抗原
作者
Jared J. Gartner,Maria R. Parkhurst,Alena Gros,Eric Tran,Mohammad Jafferji,Amy R. Copeland,Ken‐ichi Hanada,Nikolaos Zacharakis,Almin Lalani,Sri Krishna,Abraham Sachs,Todd D. Prickett,Yong F. Li,Maria Florentin,Scott Kivitz,Samuel C. Chatmon,Steven A. Rosenberg,Paul F. Robbins
出处
期刊:Nature cancer
[Nature Portfolio]
日期:2021-05-03
卷期号:2 (5): 563-574
被引量:62
标识
DOI:10.1038/s43018-021-00197-6
摘要
Tumor neoepitopes presented by major histocompatibility complex (MHC) class I are recognized by tumor-infiltrating lymphocytes (TIL) and are targeted by adoptive T-cell therapies. Identifying which mutant neoepitopes from tumor cells are capable of recognition by T cells can assist in the development of tumor-specific, cell-based therapies and can shed light on antitumor responses. Here, we generate a ranking algorithm for class I candidate neoepitopes by using next-generation sequencing data and a dataset of 185 neoepitopes that are recognized by HLA class I–restricted TIL from individuals with metastatic cancer. Random forest model analysis showed that the inclusion of multiple factors impacting epitope presentation and recognition increased output sensitivity and specificity compared to the use of predicted HLA binding alone. The ranking score output provides a set of class I candidate neoantigens that may serve as therapeutic targets and provides a tool to facilitate in vitro and in vivo studies aimed at the development of more effective immunotherapies. Robbins and colleagues develop and test a machine learning neoantigen ranking model using experimentally validated neoantigens from human tumors, providing a resource of targetable neoantigens for future immunotherapies.
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