Taming metabolic competition via glycolysis inhibition for safe and potent tumor immunotherapy

磷酸戊糖途径 糖酵解 肿瘤微环境 癌症研究 免疫系统 免疫疗法 氧化磷酸化 CD8型 厌氧糖酵解 T细胞 黑色素瘤 生物 化学 药理学 免疫学 生物化学 新陈代谢
作者
Jun Lei,Yi Yang,Zhaoliang Lu,Haiyan Pan,Jialing Fang,Baowei Jing,Yongshun Chen,Lei Yin
出处
期刊:Biochemical Pharmacology [Elsevier BV]
卷期号:202: 115153-115153 被引量:27
标识
DOI:10.1016/j.bcp.2022.115153
摘要

Metabolic competition between tumors and T cells is fierce in the tumor microenvironment (TME). Tumors usually exhaust glucose and accumulate lactic acid in TME. Nutrient deprivation and lactic acid accumulation in TME blunt T cell functions and antitumor immune responses. Here, we reported that glycolysis-related genes were upregulated in melanoma patients with weak immune responses and T cell poorly infiltrated tumors of BRCA and COAD patients. Dimethyl fumarate (DMF), a GAPDH inhibitor, which is FDA proved to treat autoimmune diseases was identified to promote oxidative pentose phosphate pathway through glucose-6-phosphate dehydrogenase (G6PD) but to suppress aerobic glycolysis and oxidative phosphorylation in tumor cells. Additionally, DMF normalized metabolic competition between tumors and T cells, thus potentiate antitumor responses of tumor infiltrating CD8+ T lymphocytes (TILs). Moreover, DMF optimized the efficiency of immune checkpoint therapy and interleukin-2 (IL-2) therapy while eliminating severe toxicity induced by IL-2 therapy. This study indicates a novel clinically feasible therapy strategy aiming shared metabolic pathway of tumors and T cells for effective and less toxic tumor immunotherapy.
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