Sears Timothy J, Pagadala Meghana S, Castro Andrea, Lee Ko-Han, Kong JungHo, Tanaka Kairi, Lippman Scott M, Zanetti Maurizio, Carter Hannah
Bioinformatics and Systems Biology Program, University of California San Diego, La Jolla, California.
Biomedical Sciences Program, University of California San Diego, La Jolla, California.
Cancer Immunol Res. 2024 Dec 3;12(12):1780-1795. doi: 10.1158/2326-6066.CIR-24-0164.
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 MHC class-I (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 benefits (discovery: median overall survival of 63.6 vs. 34.5 months; P = 0.0074; validation: median overall survival of 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-reliant but not MHC I-reliant responses. This study highlights the value of interpretable machine learning models in elucidating the biological basis of therapy responses.
免疫检查点阻断(ICB)彻底改变了癌症治疗方式;然而,决定患者反应的机制仍知之甚少。在此,我们使用机器学习从种系和体细胞生物标志物预测ICB反应,并对学习到的模型进行解释,以揭示驱动卓越疗效的潜在机制。即使存在MHC-I类(MHC-I)缺陷,T滤泡辅助细胞浸润较高的患者仍有反应。进一步研究发现,当反应依赖于MHC-I与MHC-II新抗原时,肿瘤中的ICB反应有所不同。尽管反应率相似,但依赖MHC II的反应与显著更长的持久临床获益相关(发现:中位总生存期为63.6个月对34.5个月;P = 0.0074;验证:中位总生存期为37.5个月对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是依赖MHC II而非依赖MHC I反应中的潜在靶点。本研究强调了可解释机器学习模型在阐明治疗反应生物学基础方面的价值。