Department of Molecular Neuropathology, Beijing Neurosurgical Institute, Capital Medical University, Beijing, China.
Department of Neurosurgery, Beijing Tiantan Hospital, Capital Medical University, Beijing, China.
Mol Oncol. 2020 Sep;14(9):2081-2095. doi: 10.1002/1878-0261.12707. Epub 2020 Jun 5.
Transcriptomic data derived from bulk sequencing have been applied to delineate the tumor microenvironment (TME) and define immune subtypes in various cancers, which may facilitate the design of immunotherapy treatment strategies. We herein gathered published gene expression data from diffuse lower-grade glioma (LGG) patients to identify immune subtypes. Based on the immune gene profiles of 402 LGG patients from The Cancer Genome Atlas, we performed consensus clustering to determine robust clusters of patients, and evaluated their reproducibility in three Chinese Glioma Genome Atlas cohorts. We further integrated immunogenomics methods to characterize the immune environment of each subtype. Our analysis identified and validated three immune subtypes-Im1, Im2, and Im3-characterized by differences in lymphocyte signatures, somatic DNA alterations, and clinical outcomes. Im1 had a higher infiltration of CD8+ T cells, Th17, and mast cells. Im2 was defined by elevated cytolytic activity, exhausted CD8+ T cells, macrophages, higher levels of aneuploidy, and tumor mutation burden, and these patients had worst outcome. Im3 displayed more prominent T helper cell and APC coinhibition signatures, with elevated pDCs and macrophages. Each subtype was associated with distinct somatic alterations. Moreover, we applied graph structure learning-based dimensionality reduction to the immune landscape and revealed significant intracluster heterogeneity with Im2 subtype. Finally, we developed and validated an immune signature with better performance of prognosis prediction. Our results demonstrated the immunological heterogeneity within diffuse LGG and provided valuable stratification for the design of future immunotherapy.
基于来自弥漫性低级别神经胶质瘤(LGG)患者的已发表基因表达数据,我们确定了免疫亚型。根据来自癌症基因组图谱(TCGA)的 402 名 LGG 患者的免疫基因图谱,我们进行了共识聚类以确定稳健的患者聚类,并在三个中国神经胶质瘤基因组图谱队列中评估了其重现性。我们进一步整合了免疫基因组学方法来描述每个亚型的免疫环境。我们的分析确定并验证了三种免疫亚型——Im1、Im2 和 Im3,其特征是淋巴细胞特征、体细胞 DNA 改变和临床结局的差异。Im1 具有更高的 CD8+T 细胞、Th17 和肥大细胞浸润。Im2 的特征是细胞毒性活性增强、耗竭的 CD8+T 细胞、巨噬细胞、非整倍体水平升高和肿瘤突变负担增加,这些患者的预后最差。Im3 显示出更明显的辅助性 T 细胞和 APC 共抑制特征,同时伴有 pDC 和巨噬细胞的增加。每个亚型都与不同的体细胞改变相关。此外,我们应用基于图结构学习的降维方法对免疫景观进行了分析,并揭示了 Im2 亚型的显著聚类内异质性。最后,我们开发并验证了一种具有更好预后预测性能的免疫特征。我们的研究结果表明弥漫性 LGG 内存在免疫异质性,并为未来免疫治疗的设计提供了有价值的分层。