Jin Xin, Yan Junfeng, Chen Chuanzhi, Chen Yi, Huang Wen-Kuan
Department of Breast Surgery, Zhuji Affiliated Hospital of Shaoxing University, Zhuji, China.
Department of Surgical Oncology, The First Affiliated Hospital, School of Medicine, Zhejiang University, Hangzhou, China.
Front Cell Dev Biol. 2021 Sep 28;9:721505. doi: 10.3389/fcell.2021.721505. eCollection 2021.
Genetic variants such as copy number variation (CNV), microsatellite instability (MSI), and tumor mutation burden (TMB) have been reported to associate with the immune microenvironment and prognosis of patients with breast cancer. In this study, we performed an integrated analysis of CNV, MSI, and TMB data obtained from The Cancer Genome Atlas, thereby generating two genetic variants-related subgroups. We characterized the differences between the two subgroups in terms of prognosis, MSI burden, TMB, CNV, mutation landscape, and immune landscape. We found that cluster 2 was marked by a worse prognosis and lower TMB. According to these groupings, we identified 130 differentially expressed genes, which were subjected to univariate and least absolute shrinkage and selection operator-penalized multivariate modeling. Consequently, we constructed an 11-gene signature risk model called the genomic variation-related prognostic risk model (GVRM). Using ROC analysis and a calibration plot, we estimated the prognostic prediction of this GVRM. We confirmed the predictive efficiency of this GVRM by validating it in another independent International Cancer Genome Consortium cohort. Our results conclude that an 11-gene signature developed by integrated analysis of CNV, MSI, and TMB has a high potential to predict breast cancer prognosis, which provided a strong rationale for further investigating molecular mechanisms and guiding clinical decision-making in breast cancer.
据报道,诸如拷贝数变异(CNV)、微卫星不稳定性(MSI)和肿瘤突变负荷(TMB)等基因变异与乳腺癌患者的免疫微环境及预后相关。在本研究中,我们对从癌症基因组图谱获取的CNV、MSI和TMB数据进行了综合分析,从而生成了两个与基因变异相关的亚组。我们从预后、MSI负荷、TMB、CNV、突变图谱和免疫图谱方面对这两个亚组之间的差异进行了表征。我们发现第2组的特点是预后较差且TMB较低。根据这些分组,我们鉴定出130个差异表达基因,并对其进行单变量以及最小绝对收缩和选择算子惩罚的多变量建模。因此,我们构建了一个名为基因组变异相关预后风险模型(GVRM)的11基因特征风险模型。使用ROC分析和校准图,我们评估了该GVRM的预后预测能力。通过在另一个独立的国际癌症基因组联盟队列中进行验证,我们证实了该GVRM的预测效率。我们的结果表明,通过对CNV、MSI和TMB进行综合分析开发的11基因特征具有预测乳腺癌预后的巨大潜力,这为进一步研究分子机制和指导乳腺癌临床决策提供了有力依据。