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从不吸烟者的妇女健康倡议中观察到的肺癌基因组图谱。

The genomic landscape of lung cancer in never-smokers from the Women's Health Initiative.

机构信息

Human Biology Division.

Clinical Research Division, and.

出版信息

JCI Insight. 2024 Jul 25;9(17):e174643. doi: 10.1172/jci.insight.174643.

Abstract

Over 200,000 individuals are diagnosed with lung cancer in the United States every year, with a growing proportion of cases, especially lung adenocarcinoma, occurring in individuals who have never smoked. Women over the age of 50 comprise the largest affected demographic. To understand the genomic drivers of lung adenocarcinoma and therapeutic response in this population, we performed whole genome and/or whole exome sequencing on 73 matched lung tumor/normal pairs from postmenopausal women who participated in the Women's Health Initiative. Somatic copy number alterations showed little variation by smoking status, suggesting that aneuploidy may be a general characteristic of lung cancer regardless of smoke exposure. Similarly, clock-like and APOBEC mutation signatures were prevalent but did not differ in tumors from smokers and never-smokers. However, mutations in both EGFR and KRAS showed unique allelic differences determined by smoking status that are known to alter tumor response to targeted therapy. Mutations in the MYC-network member MGA were more prevalent in tumors from smokers. Fusion events in ALK, RET, and ROS1 were absent, likely due to age-related differences in fusion prevalence. Our work underscores the profound effect of smoking status, age, and sex on the tumor mutational landscape and identifies areas of unmet medical need.

摘要

每年,美国有超过 20 万人被诊断出患有肺癌,其中越来越多的病例,尤其是肺腺癌,发生在从未吸烟的人群中。50 岁以上的女性是受影响最大的人群。为了了解这一人群中肺腺癌的基因组驱动因素和治疗反应,我们对参加妇女健康倡议的绝经后妇女的 73 对配对肺肿瘤/正常组织进行了全基因组和/或全外显子组测序。体细胞拷贝数改变与吸烟状况几乎没有差异,这表明非整倍体可能是肺癌的一般特征,而与吸烟暴露无关。同样,时钟样和 APOBEC 突变特征普遍存在,但在吸烟者和不吸烟者的肿瘤中没有差异。然而,EGFR 和 KRAS 中的突变都表现出由吸烟状态决定的独特等位基因差异,已知这些差异会改变肿瘤对靶向治疗的反应。MYC 网络成员 MGA 的突变在吸烟者的肿瘤中更为普遍。ALK、RET 和 ROS1 的融合事件不存在,这可能是由于年龄相关的融合流行率差异所致。我们的工作强调了吸烟状态、年龄和性别对肿瘤突变景观的深远影响,并确定了未满足的医疗需求领域。

https://cdn.ncbi.nlm.nih.gov/pmc/blobs/6333/11385083/2c2d308cdefa/jciinsight-9-174643-g245.jpg

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