Identification of an energy metabolism-related signature associated with clinical prognosis in diffuse glioma

Zhengui Zhou(Capital Medical University), Ruoyu Huang(Beijing Tian Tan Hospital), Ruichao Chai(Beijing Tian Tan Hospital), Xiaohong Zhou, Zhiping Hu, Wenbiao Wang, Baoguo Chen, Lintao Deng, Yuqing Liu(Capital Medical University), Fan Wu(Capital Medical University)
Aging
November 8, 2018
Cited by 84Open Access
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Abstract

Now, numerous exciting findings have been yielded in the field of energy metabolism within glioma cells. In addition to aerobic glycolysis, multiple catabolic pathways are employed for energy production. However, the prognostic significance of energy metabolism in glioma remains obscure. Here, we explored the relationship between energy metabolism gene profile and outcome of diffuse glioma patients using The Cancer Genome Altas (TCGA) and Chinese Glioma Genome Altas (CGGA) datasets. Based on the gene expression profile, consensus clustering identified two robust clusters of glioma patients with distinguished prognostic and molecular features. With the Cox proportional hazards model with elastic net penalty, an energy metabolism-related signature was built to evaluate patients’ prognosis. Kaplan-Meier analysis found that the acquired signature could differentiate the outcome of low and high-risk groups of patients in both cohorts. Moreover, the signature, significantly associated with the clinical and molecular features, could serve as an independent prognostic factor for glioma patients. Gene Ontology (GO) and Gene Set Enrichment Analysis (GSEA) showed that gene sets correlated with high-risk group were involved in immune and inflammatory response, with the low-risk group were mainly related to glutamate receptor signaling pathway. Our results provided new insight into energy metabolism role in diffuse glioma.


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