Integrated germline and somatic features reveal divergent immune pathways driving response to immune checkpoint blockade

IF 8.1 1区 医学 Q1 IMMUNOLOGY
Timothy J. Sears, Meghana S. Pagadala, Andrea Castro, Ko-Han Lee, JungHo Kong, Kairi Tanaka, Scott M. Lippman, Maurizio Zanetti, Hannah Carter
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引用次数: 0

Abstract

Immune Checkpoint Blockade (ICB) has revolutionized cancer treatment, however the mechanisms determining patient response remain poorly understood. Here, we used machine learning to predict ICB response from germline and somatic biomarkers and interpreted the learned model to uncover putative mechanisms driving superior outcomes. Patients with higher infiltration of T follicular helper cells had responses even in the presence of defects in the class-I Major Histocompatibility Complex (MHC-I). Further investigation uncovered different ICB responses in tumors when responses were reliant on MHC-I versus MHC-II neoantigens. Despite similar response rates, MHC-II reliant responses were associated with significantly longer durable clinical benefit (Discovery: Median OS=63.6 vs. 34.5 months P=0.0074; Validation: Median OS=37.5 vs. 33.1 months, P=0.040). Characteristics of the tumor immune microenvironment reflected MHC neoantigen reliance, and analysis of immune checkpoints revealed LAG3 as a potential target in MHC-II but not MHC-I reliant responses. This study highlights the value of interpretable machine learning models in elucidating the biological basis of therapy responses.
种系和体细胞综合特征揭示了驱动免疫检查点阻断反应的不同免疫途径
免疫检查点阻断疗法(ICB)给癌症治疗带来了革命性的变化,但人们对决定患者反应的机制仍然知之甚少。在这里,我们利用机器学习从种系和体细胞生物标志物中预测ICB反应,并对所学模型进行解释,以揭示驱动卓越疗效的假定机制。即使存在 I 类主要组织相容性复合物(MHC-I)缺陷,T 滤泡辅助细胞浸润较高的患者也能产生反应。进一步的研究发现,当肿瘤中的 ICB 反应依赖于 MHC-I 和 MHC-II 新抗原时,两者的反应有所不同。尽管反应率相似,但依赖 MHC-II 的反应与明显更长的持久临床获益相关(发现:中位 OS=63.6 个月 vs. 34.5 个月 P=0.0074;Validation:中位OS=37.5个月 vs. 33.1个月,P=0.040)。肿瘤免疫微环境的特征反映了对MHC新抗原的依赖性,免疫检查点分析显示LAG3是MHC-II而非MHC-I依赖性反应的潜在靶点。这项研究强调了可解释的机器学习模型在阐明治疗反应的生物学基础方面的价值。
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来源期刊
Cancer immunology research
Cancer immunology research ONCOLOGY-IMMUNOLOGY
CiteScore
15.60
自引率
1.00%
发文量
260
期刊介绍: Cancer Immunology Research publishes exceptional original articles showcasing significant breakthroughs across the spectrum of cancer immunology. From fundamental inquiries into host-tumor interactions to developmental therapeutics, early translational studies, and comprehensive analyses of late-stage clinical trials, the journal provides a comprehensive view of the discipline. In addition to original research, the journal features reviews and opinion pieces of broad significance, fostering cross-disciplinary collaboration within the cancer research community. Serving as a premier resource for immunology knowledge in cancer research, the journal drives deeper insights into the host-tumor relationship, potent cancer treatments, and enhanced clinical outcomes. Key areas of interest include endogenous antitumor immunity, tumor-promoting inflammation, cancer antigens, vaccines, antibodies, cellular therapy, cytokines, immune regulation, immune suppression, immunomodulatory effects of cancer treatment, emerging technologies, and insightful clinical investigations with immunological implications.
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