免疫系统
生物
癌症
肺癌
免疫学
病理
内科学
医学
癌症研究
癌变
作者
Adam Pennycuick,Vitor H. Teixeira,Khalid AbdulJabbar,Shan E Ahmed Raza,Tom Lund,Ayse U. Akarca,Rachel Rosenthal,Lukas Kalinke,Deepak P. Chandrasekharan,Christodoulos P. Pipinikas,Henry Lee-Six,Robert E. Hynds,Kate H.C. Gowers,Jake Y. Henry,Fraser R. Millar,Yeman Brhane Hagos,Céline Denais,Mary Falzon,David A. Moore,Sophia Antoniou
出处
期刊:Cancer Discovery
[American Association for Cancer Research]
日期:2020-07-20
卷期号:10 (10): 1489-1499
被引量:79
标识
DOI:10.1158/2159-8290.cd-19-1366
摘要
Abstract Before squamous cell lung cancer develops, precancerous lesions can be found in the airways. From longitudinal monitoring, we know that only half of such lesions become cancer, whereas a third spontaneously regress. Although recent studies have described the presence of an active immune response in high-grade lesions, the mechanisms underpinning clinical regression of precancerous lesions remain unknown. Here, we show that host immune surveillance is strongly implicated in lesion regression. Using bronchoscopic biopsies from human subjects, we find that regressive carcinoma in situ lesions harbor more infiltrating immune cells than those that progress to cancer. Moreover, molecular profiling of these lesions identifies potential immune escape mechanisms specifically in those that progress to cancer: antigen presentation is impaired by genomic and epigenetic changes, CCL27–CCR10 signaling is upregulated, and the immunomodulator TNFSF9 is downregulated. Changes appear intrinsic to the carcinoma in situ lesions, as the adjacent stroma of progressive and regressive lesions are transcriptomically similar. Significance: Immune evasion is a hallmark of cancer. For the first time, this study identifies mechanisms by which precancerous lesions evade immune detection during the earliest stages of carcinogenesis and forms a basis for new therapeutic strategies that treat or prevent early-stage lung cancer. See related commentary by Krysan et al., p. 1442. This article is highlighted in the In This Issue feature, p. 1426
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