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使用综合生物信息学分析鉴定与胶质母细胞瘤临床预后相关的代谢相关风险特征

Identification of a Metabolism-Related Risk Signature Associated With Clinical Prognosis in Glioblastoma Using Integrated Bioinformatic Analysis.

作者信息

He Zheng, Wang Chengcheng, Xue Hao, Zhao Rongrong, Li Gang

机构信息

Department of Neurosurgery, Qilu Hospital, Cheeloo College of Medicine, Shandong University, Jinan, China.

Shandong Key Laboratory of Brain Function Remodeling, Jinan, China.

出版信息

Front Oncol. 2020 Sep 3;10:1631. doi: 10.3389/fonc.2020.01631. eCollection 2020.

Abstract

Altered metabolism of glucose, lipid and glutamine is a prominent hallmark of cancer cells. Currently, cell heterogeneity is believed to be the main cause of poor prognosis of glioblastoma (GBM) and is closely related to relapse caused by therapy resistance. However, the comprehensive model of genes related to glucose-, lipid- and glutamine-metabolism associated with the prognosis of GBM remains unclear, and the metabolic heterogeneity of GBM still needs to be further explored. Based on the expression profiles of 1,395 metabolism-related genes in three datasets of TCGA/CGGA/GSE, consistent cluster analysis revealed that GBM had three different metabolic status and prognostic clusters. Combining univariate Cox regression analysis and LASSO-penalized Cox regression machine learning methods, we identified a 17-metabolism-related genes risk signature associated with GBM prognosis. Kaplan-Meier analysis found that obtained signature could differentiate the prognosis of high- and low-risk patients in three datasets. Moreover, the multivariate Cox regression analysis and receiver operating characteristic curves indicated that the signature was an independent prognostic factor for GBM and had a strong predictive power. The above results were further validated in the CGGA and GSE13041 datasets, and consistent results were obtained. Gene set enrichment analysis (GSEA) suggested glycolysis gluconeogenesis and oxidative phosphorylation were significantly enriched in high- and low-risk GBM. Lastly Connectivity Map screened 54 potential compounds specific to different subgroups of GBM patients. Our study identified a novel metabolism-related gene signature, in addition the existence of three different metabolic status and two opposite biological processes in GBM were recognized, which revealed the metabolic heterogeneity of GBM. Robust metabolic subtypes and powerful risk prognostic models contributed a new perspective to the metabolic exploration of GBM.

摘要

葡萄糖、脂质和谷氨酰胺代谢改变是癌细胞的一个显著特征。目前,细胞异质性被认为是胶质母细胞瘤(GBM)预后不良的主要原因,并且与治疗耐药导致的复发密切相关。然而,与GBM预后相关的葡萄糖、脂质和谷氨酰胺代谢相关基因的综合模型仍不清楚,GBM的代谢异质性仍需进一步探索。基于TCGA/CGGA/GSE三个数据集中1395个代谢相关基因的表达谱,一致性聚类分析显示GBM有三种不同的代谢状态和预后聚类。结合单变量Cox回归分析和LASSO惩罚Cox回归机器学习方法,我们鉴定出一个与GBM预后相关的17个代谢相关基因的风险特征。Kaplan-Meier分析发现,所获得的特征可以区分三个数据集中高风险和低风险患者的预后。此外,多变量Cox回归分析和受试者工作特征曲线表明,该特征是GBM的一个独立预后因素,具有很强的预测能力。上述结果在CGGA和GSE13041数据集中得到进一步验证,并获得了一致的结果。基因集富集分析(GSEA)表明糖酵解糖异生和氧化磷酸化在高风险和低风险GBM中显著富集。最后,连接图谱筛选出54种针对GBM患者不同亚组的潜在化合物。我们的研究鉴定出一种新的代谢相关基因特征,此外还认识到GBM中存在三种不同的代谢状态和两个相反的生物学过程,这揭示了GBM的代谢异质性。稳健的代谢亚型和强大的风险预后模型为GBM的代谢探索提供了一个新的视角。

https://cdn.ncbi.nlm.nih.gov/pmc/blobs/d254/7523182/b236922af98b/fonc-10-01631-g0001.jpg

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