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整合批量RNA测序和单细胞RNA测序数据以揭示骨肉瘤的免疫微环境和代谢模式。

Combining bulk RNA-sequencing and single-cell RNA-sequencing data to reveal the immune microenvironment and metabolic pattern of osteosarcoma.

作者信息

Huang Ruichao, Wang Xiaohu, Yin Xiangyun, Zhou Yaqi, Sun Jiansheng, Yin Zhongxiu, Zhu Zhi

机构信息

Department of Orthopedics, Zhengzhou Central Hospital affiliated to Zhengzhou University, Zhengzhou, China.

Advanced Medical Research Center of Zhengzhou University, Zhengzhou Central Hospital affiliated to Zhengzhou University, Zhengzhou, China.

出版信息

Front Genet. 2022 Oct 19;13:976990. doi: 10.3389/fgene.2022.976990. eCollection 2022.

Abstract

Osteosarcoma (OS) is a kind of solid tumor with high heterogeneity at tumor microenvironment (TME), genome and transcriptome level. In view of the regulatory effect of metabolism on TME, this study was based on four metabolic models to explore the intertumoral heterogeneity of OS at the RNA sequencing (RNA-seq) level and the intratumoral heterogeneity of OS at the bulk RNA-seq and single cell RNA-seq (scRNA-seq) level. The GSVA package was used for single-sample gene set enrichment analysis (ssGSEA) analysis to obtain a glycolysis, pentose phosphate pathway (PPP), fatty acid oxidation (FAO) and glutaminolysis gene sets score. ConsensusClusterPlus was employed to cluster OS samples downloaded from the Target database. The scRNA-seq and bulk RNA-seq data of immune cells from GSE162454 dataset were analyzed to identify the subsets and types of immune cells in OS. Malignant cells and non-malignant cells were distinguished by large-scale chromosomal copy number variation. The correlations of metabolic molecular subtypes and immune cell types with four metabolic patterns, hypoxia and angiogenesis were determined by Pearson correlation analysis. Two metabolism-related molecular subtypes of OS, cluster 1 and cluster 2, were identified. Cluster 2 was associated with poor prognosis of OS, active glycolysis, FAO, glutaminolysis, and bad TME. The identified 28608 immune cells were divided into 15 separate clusters covering 6 types of immune cells. The enrichment scores of 5 kinds of immune cells in cluster-1 and cluster-2 were significantly different. And five kinds of immune cells were significantly correlated with four metabolic modes, hypoxia and angiogenesis. Of the 28,608 immune cells, 7617 were malignant cells. The four metabolic patterns of malignant cells were significantly positively correlated with hypoxia and negatively correlated with angiogenesis. We used RNA-seq to reveal two molecular subtypes of OS with prognosis, metabolic pattern and TME, and determined the composition and metabolic heterogeneity of immune cells in OS tumor by bulk RNA-seq and single-cell RNA-seq.

摘要

骨肉瘤(OS)是一种在肿瘤微环境(TME)、基因组和转录组水平具有高度异质性的实体瘤。鉴于代谢对TME的调节作用,本研究基于四种代谢模型,在RNA测序(RNA-seq)水平探索OS的肿瘤间异质性,在批量RNA-seq和单细胞RNA-seq(scRNA-seq)水平探索OS的肿瘤内异质性。使用GSVA软件包进行单样本基因集富集分析(ssGSEA),以获得糖酵解、磷酸戊糖途径(PPP)、脂肪酸氧化(FAO)和谷氨酰胺分解基因集评分。采用ConsensusClusterPlus对从Target数据库下载的OS样本进行聚类。分析来自GSE162454数据集的免疫细胞的scRNA-seq和批量RNA-seq数据,以识别OS中免疫细胞的亚群和类型。通过大规模染色体拷贝数变异区分恶性细胞和非恶性细胞。通过Pearson相关分析确定代谢分子亚型和免疫细胞类型与四种代谢模式、缺氧和血管生成的相关性。确定了OS的两种与代谢相关的分子亚型,即聚类1和聚类2。聚类2与OS的不良预后、活跃的糖酵解、FAO、谷氨酰胺分解以及不良的TME相关。鉴定出的28608个免疫细胞被分为15个独立的聚类,涵盖6种免疫细胞类型。聚类1和聚类2中5种免疫细胞的富集评分有显著差异。并且5种免疫细胞与四种代谢模式、缺氧和血管生成显著相关。在28608个免疫细胞中,7617个是恶性细胞。恶性细胞的四种代谢模式与缺氧显著正相关,与血管生成显著负相关。我们使用RNA-seq揭示了具有预后、代谢模式和TME的OS的两种分子亚型,并通过批量RNA-seq和单细胞RNA-seq确定了OS肿瘤中免疫细胞的组成和代谢异质性。

https://cdn.ncbi.nlm.nih.gov/pmc/blobs/c145/9626532/6abde9d213f4/fgene-13-976990-g001.jpg

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