Pan-cancer characterization of metabolism-related biomarkers identifies potential therapeutic targets

糖酵解 代谢组学 氧化磷酸化 生物 代谢途径 计算生物学 小RNA 重编程 生物标志物 转录因子 厌氧糖酵解 癌症研究 DNA甲基化 癌症 医学 生物标志物发现 生物信息学 基因 癌变 转录组 肿瘤微环境 疾病 新陈代谢 遗传学 生物化学 基因表达
作者
Guoshu Bi,Yunyi Bian,Jiaqi Liang,Jiacheng Yin,Runmei Li,Mengnan Zhao,Yiwei Huang,Tao Lu,Cheng Zhan,Hong Fan,Qun Wang
出处
期刊:Journal of Translational Medicine [Springer Nature]
卷期号:19 (1) 被引量:7
标识
DOI:10.1186/s12967-021-02889-0
摘要

Abstract Background Generally, cancer cells undergo metabolic reprogramming to adapt to energetic and biosynthetic requirements that support their uncontrolled proliferation. However, the mutual relationship between two critical metabolic pathways, glycolysis and oxidative phosphorylation (OXPHOS), remains poorly defined. Methods We developed a “double-score” system to quantify glycolysis and OXPHOS in 9668 patients across 33 tumor types from The Cancer Genome Atlas and classified them into four metabolic subtypes. Multi-omics bioinformatical analyses was conducted to detect metabolism-related molecular features. Results Compared with patients with low glycolysis and high OXPHOS (LGHO), those with high glycolysis and low OXPHOS (HGLO) were consistently associated with worse prognosis. We identified common dysregulated molecular features between different metabolic subgroups across multiple cancers, including gene, miRNA, transcription factor, methylation, and somatic alteration, as well as investigated their mutual interfering relationships. Conclusion Overall, this work provides a comprehensive atlas of metabolic heterogeneity on a pan-cancer scale and identified several potential drivers of metabolic rewiring, suggesting corresponding prognostic and therapeutic utility.

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