Aging-related genes are potential prognostic biomarkers for patients with gliomas

胶质瘤 肿瘤科 基因 医学 内科学 生物 癌症研究 遗传学
作者
Gelei Xiao,Xiang Yang Zhang,Xun Zhang,Yuanbing Chen,Zhiwei Xia,Hui Cao,Jun Huang,Quan Cheng
出处
期刊:Aging [Impact Journals LLC]
卷期号:13 (9): 13239-13263 被引量:17
标识
DOI:10.18632/aging.203008
摘要

Aging has a significant role in the proliferation and development of cancers. This study explored the expression profiles, prognostic value, and potential roles of aging-related genes in gliomas. We designed risk score and cluster models based on aging-related genes and glioma cases using LASSO Cox regression analysis, consensus clustering analysis and univariate cox regression analyses. High risk score was related to malignant clinical features and poor prognosis based on 10 datasets, 2953 cases altogether. Genetic alterations analysis revealed that high risk scores were associated with genomic aberrations of aging-related oncogenes. GSVA analysis exhibited the potential function of the aging-related genes. More immune cell infiltration was found in high-risk group cases, and glioma patients in high-risk group may be more responsive to immunotherapy. Knock-down of CTSC, an aging-related gene, can inhibit cell cycle progression, colony formation, cell proliferation and increase cell senescence in glioma cell lines in vitro. Indeed, high expression of CTSC was associated with poor prognosis in glioma cases. In conclusion, this study revealed that aging-related genes have prognostic potential for glioma patients and further identified potential mechanisms for aging-related genes in tumorigenesis and progression in gliomas.

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