免疫疗法
肿瘤微环境
癌症研究
免疫系统
癌症免疫疗法
免疫荧光
表型
肺癌
生物
计算生物学
免疫学
医学
癌
免疫检查点
多元统计
癌症
肺
生物标志物
癌症治疗
细胞
单克隆抗体
基因表达谱
作者
James Monkman,Aaron Kilgallon,Clara Lawler,Rafael Tubelleza,Thazin Nwe Aung,Jonathan Warrell,Ioannis Vathiotis,Ioannis P. Trontzas,Niki Gavrielatou,Nay Chan,Rotem Czertok,Shai Bookstein,Ken O’Byrne,Ettai Markovits,David L. Rimm,Arutha Kulasinghe
标识
DOI:10.1038/s41467-026-68633-8
摘要
Immune checkpoint inhibitors (ICI) have improved clinical outcomes for some patients with advanced NSCLC, however a substantial proportion of patients remain treatment resistant. Here we analyze the NSCLC tumor microenvironment (TME) using multiplexed immunofluorescence (mIF) of biopsies taken from patients prior to ICI treatment. We apply a deep-learning model to classify the cellular phenotypes and probe functional and metabolic states of both tumor and immune cells, aiming to reveal predictive features of response to ICI. Tissue neighborhoods are generated to allow geometric profiling of spatial densities and interactions at a range of scales. Multivariate modelling of ICI response yields a model that predicts progression-free survival (PFS) over 24 months (AUC = 0.8). The selected features in the model imply a role for cell-cell proximities within discrete metabolic contexts. These tissue insights may supplement our understanding of the current paradigms around classical immunology in the NSCLC TME and its influence on immunotherapy outcomes.
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