Sharpnack Michael F, Cho Ju Hwan, Johnson Travis S, Otterson Gregory A, Shields Peter G, Huang Kun, Carbone David P, He Kai
The Ohio State University Comprehensive Cancer Center, Columbus, OH 43210, United States.
Indiana University School of Medicine, Indianapolis, IN 46202, United States.
Lung Cancer. 2020 Aug;146:36-41. doi: 10.1016/j.lungcan.2020.05.021. Epub 2020 May 21.
Recent clinical studies have identified tumor mutation burden (TMB) as a promising therapeutic biomarker of anti-tumor immune checkpoint blockade. However, given the relatively slow turnaround time and high expense in measuring TMB, tobacco smoking history (TSH) is an attractive replacement biomarker. The carcinogenic effects of tobacco smoking may be modified by the protective effects of genome stability genes. This study aims to test the associations between tobacco smoking, genome stability gene inactivation, and TMB.
Publicly available TSH and DNA somatic alteration data from NSCLC were downloaded from The Cancer Genome Atlas. Correlations and enrichments were calculated with Spearman and Fisher's exact test methods, respectively. Multivariate modeling of TMB was performed with penalized linear regression.
85% of never smokers in adenocarcinomas (LUAD) had low TMB, but a positive TSH was not predictive of hypermutancy. The limited utility of TSH in predicting TMB was reproduced on an independent LUAD dataset. To expand our search for predictors of TMB, we further investigated the contributions of genome stability related genes (GSGs) to TMB. 242/461 (52%) and 300/465 (65%) patients with LUAD and squamous carcinomas (LUSC), respectively, showed evidence of loss of function in at least one of the 182 GSGs. 182 GSGs from 16 pathways were assessed for associations with TMB high tumor status using Fisher's exact test. We performed univariate gene and pathway enrichments in TMB high tumors and found roles forPOLE, REV3L, and FANCE genes, as well as several key GSG pathways.
This study comprehensively tested the association between GSG, tobacco smoking, and TMB in NSCLC. In LUAD, never-smoking status was predictive of low TMB, but overall TSH was not an adequate surrogate biomarker for TMB in NSCLC. Furthermore, we identified an association between GSG inactivation and TMB.
近期临床研究已将肿瘤突变负荷(TMB)确定为抗肿瘤免疫检查点阻断的一种有前景的治疗生物标志物。然而,鉴于测量TMB的周转时间相对较长且费用高昂,吸烟史(TSH)是一种有吸引力的替代生物标志物。吸烟的致癌作用可能会被基因组稳定性基因的保护作用所改变。本研究旨在测试吸烟、基因组稳定性基因失活与TMB之间的关联。
从癌症基因组图谱下载了公开可用的非小细胞肺癌(NSCLC)的TSH和DNA体细胞改变数据。分别使用Spearman检验和Fisher精确检验方法计算相关性和富集情况。采用惩罚线性回归对TMB进行多变量建模。
腺癌(LUAD)中85%的从不吸烟者TMB较低,但阳性TSH并不能预测高突变性。TSH在预测TMB方面的有限效用在一个独立的LUAD数据集中得到了重现。为了扩大对TMB预测指标的搜索范围,我们进一步研究了基因组稳定性相关基因(GSGs)对TMB的贡献。分别有242/461(52%)和300/465(65%)的LUAD和肺鳞癌(LUSC)患者显示出在182个GSGs中至少有一个存在功能丧失的证据。使用Fisher精确检验评估了来自16条通路的182个GSGs与TMB高肿瘤状态之间的关联。我们在TMB高的肿瘤中进行了单变量基因和通路富集分析,发现POLE、REV3L和FANCE基因以及几个关键的GSG通路发挥了作用。
本研究全面测试了NSCLC中GSG、吸烟与TMB之间的关联。在LUAD中,从不吸烟状态可预测低TMB,但总体而言,TSH并非NSCLC中TMB的充分替代生物标志物。此外,我们发现了GSG失活与TMB之间的关联。