Department of Medical Oncology, The First Affiliated Hospital, College of Medicine, Zhejiang University, Hangzhou, China.
Department of Colorectal Surgery, The First Affiliated Hospital, College of Medicine, Zhejiang University, Hangzhou, China.
J Immunother Cancer. 2020 Oct;8(2). doi: 10.1136/jitc-2020-001437.
Microsatellite instability in colon cancer implies favorable therapeutic outcomes after checkpoint blockade immunotherapy. However, the molecular nature of microsatellite instability is not well elucidated.
We examined the immune microenvironment of colon cancer using assessments of the bulk transcriptome and the single-cell transcriptome focusing on molecular nature of microsatellite stability (MSS) and microsatellite instability (MSI) in colorectal cancer from a public database. The association of the mutation pattern and microsatellite status was analyzed by a random forest algorithm in The Cancer Genome Atlas (TCGA) and validated by our in-house dataset (39 tumor mutational burden (TMB)-low MSS colon cancer, 10 TMB-high MSS colon cancer, 15 MSI colon cancer). A prognostic model was constructed to predict the survival potential and stratify microsatellite status by a neural network.
Despite the hostile CD8 cytotoxic T lymphocyte (CTL)/Th1 microenvironment in MSI colon cancer, a high percentage of exhausted CD8 T cells and upregulated expression of immune checkpoints were identified in MSI colon cancer at the single-cell level, indicating the potential neutralizing effect of cytotoxic T-cell activity by exhausted T-cell status. A more homogeneous highly expressed pattern of PD1 was observed in CD8 T cells from MSI colon cancer; however, a small subgroup of CD8 T cells with high expression of checkpoint molecules was identified in MSS patients. A random forest algorithm predicted important mutations that were associated with MSI status in the TCGA colon cancer cohort, and our in-house cohort validated higher frequencies of , , , and mutations in MSI colon cancer. A robust microsatellite status-related gene signature was built to predict the prognosis and differentiate between MSI and MSS tumors. A neural network using the expression profile of the microsatellite status-related gene signature was constructed. A receiver operating characteristic curve was used to evaluate the accuracy rate of neural network, reaching 100%.
Our analysis unraveled the difference in the molecular nature and genomic variance in MSI and MSS colon cancer. The microsatellite status-related gene signature is better at predicting the prognosis of patients with colon cancer and response to the combination of immune checkpoint inhibitor-based immunotherapy and anti-VEGF therapy.
结肠癌中的微卫星不稳定性提示在接受检查点阻断免疫治疗后具有良好的治疗效果。然而,微卫星不稳定性的分子性质尚未得到很好的阐明。
我们使用来自公共数据库的结肠癌的批量转录组和单细胞转录组评估,研究了结肠癌的免疫微环境,重点研究了结直肠癌中微卫星稳定性(MSS)和微卫星不稳定性(MSI)的分子性质。我们通过随机森林算法在癌症基因组图谱(TCGA)中分析了突变模式和微卫星状态的相关性,并通过我们的内部数据集(39 例肿瘤突变负荷(TMB)低 MSS 结肠癌、10 例 TMB 高 MSS 结肠癌、15 例 MSI 结肠癌)进行了验证。我们构建了一个神经网络预测模型,通过神经网络预测生存潜力并对微卫星状态进行分层。
尽管 MSI 结肠癌存在具有敌意的 CD8 细胞毒性 T 淋巴细胞(CTL)/Th1 微环境,但在单细胞水平上,MSI 结肠癌中仍鉴定出高比例的耗竭 CD8 T 细胞和上调的免疫检查点表达,表明耗竭 T 细胞状态对细胞毒性 T 细胞活性具有潜在的中和作用。MSI 结肠癌 CD8 T 细胞中观察到 PD1 表达更均匀、表达水平更高的模式;然而,在 MSS 患者中也鉴定出一小部分 CD8 T 细胞具有高水平的检查点分子表达。随机森林算法预测了与 TCGA 结肠癌队列中 MSI 状态相关的重要突变,我们的内部队列验证了 MSI 结肠癌中更高频率的、、、和突变。构建了一个稳健的与微卫星状态相关的基因特征来预测预后并区分 MSI 和 MSS 肿瘤。使用微卫星状态相关基因特征的表达谱构建了神经网络。使用接收者操作特征曲线评估神经网络的准确率,达到 100%。
我们的分析揭示了 MSI 和 MSS 结肠癌在分子性质和基因组变异方面的差异。微卫星状态相关基因特征更能预测结肠癌患者的预后以及对免疫检查点抑制剂联合免疫治疗和抗 VEGF 治疗的反应。