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基于转录组 RNA 测序和单细胞数据研究骨肉瘤中脂质代谢的机制。

Studying the mechanism underlying lipid metabolism in osteosarcoma based on transcriptomic RNA sequencing and single-cell data.

机构信息

Orthopaedics, The First Affiliated Hospital of Zhengzhou University, Zhengzhou, Henan, China.

出版信息

J Gene Med. 2023 Jun;25(6):e3491. doi: 10.1002/jgm.3491. Epub 2023 Mar 13.

Abstract

BACKGROUND

We aimed to provide a new typing method for osteosarcoma (OS) based on single-cell RNA sequencing (scRNA-seq) and bulk RNA-seq data from the perspective of lipid metabolism and examine its potential mechanisms in the onset and progression of OS.

METHODS

Scores for six lipid metabolic pathways were calculated by single-sample gene set enrichment analysis (ssGSEA) based on a scRNA-seq dataset and three microarray expression profiles. Subsequently, cluster typing was conducted using unsupervised consistency clustering. Furthermore, single-cell clustering and dimensionality-reduction analyses identified cell subtypes. Finally, an analysis of cellular receptors was performed using CellphoneDB to identify cellular communication.

RESULTS

OS was classified into three subtypes based on lipid metabolic pathways. Among them, patients in clust3 showed poor prognoses, whereas those in clust1 and clust2 exhibited good prognoses. In addition, ssGSEA analysis showed that patients in clust3 had lower immune cell scores. Moreover, the Th17 cell differentiation pathway was significantly differentially enriched between clust2 and clust3, with lower enrichment scores for metabolic pathways in the former relative to clust1 and clust2. In total, 24 genes were upregulated between clust1 and clust2, whereas 20 were downregulated in clust3. These observations were validated by single-cell data analysis. Finally, through scRNA-seq data analysis, we identified nine ligand-receptor pairs particularly critical for communication between normal and malignant cells.

CONCLUSIONS

Three clusters were identified and the single-cell analysis revealed that malignant cells dominated lipid metabolism patterns in tumors, thereby influencing the tumor microenvironment.

摘要

背景

本研究旨在从脂质代谢的角度,基于单细胞 RNA 测序(scRNA-seq)和批量 RNA-seq 数据,为骨肉瘤(OS)提供一种新的分型方法,并探讨其在 OS 发生和进展中的潜在机制。

方法

采用单样本基因集富集分析(ssGSEA),根据 scRNA-seq 数据集和三个微阵列表达谱计算六个脂质代谢途径的评分。然后,采用无监督一致性聚类进行聚类分型。此外,单细胞聚类和降维分析鉴定细胞亚型。最后,使用 CellphoneDB 分析细胞受体,以识别细胞通讯。

结果

根据脂质代谢途径,OS 分为 3 个亚型。其中,clust3 患者预后较差,而 clust1 和 clust2 患者预后较好。ssGSEA 分析表明,clust3 患者的免疫细胞评分较低。此外,Th17 细胞分化途径在 clust2 和 clust3 之间明显差异富集,前者的代谢途径富集评分低于 clust1 和 clust2。总的来说,clust1 和 clust2 之间有 24 个基因上调,而 clust3 中有 20 个基因下调。单细胞数据分析验证了这些结果。最后,通过 scRNA-seq 数据分析,我们鉴定了 9 对配体-受体对,这些对在正常和恶性细胞之间的通讯中特别重要。

结论

鉴定出 3 个聚类,单细胞分析表明恶性细胞主导肿瘤中的脂质代谢模式,从而影响肿瘤微环境。

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