Metabolic control of TH17 and induced Treg cell balance by an epigenetic mechanism

表观遗传学 FOXP3型 RAR相关孤儿受体γ 细胞生物学 细胞分化 转录因子 生物 化学 生物化学 免疫学 基因 免疫系统
作者
Tao Xu,Kelly M. Stewart,Xiaohu Wang,Kai Liu,Min Xie,Jae Kyu Ryu,Ke Li,Tianhua Ma,Haixia Wang,Lu Ni,Saiyong Zhu,Nan Cao,Dongwei Zhu,Yu Zhang,Katerina Akassoglou,Chen Dong,Edward M. Driggers,Sheng Ding
出处
期刊:Nature [Nature Portfolio]
卷期号:548 (7666): 228-233 被引量:365
标识
DOI:10.1038/nature23475
摘要

Metabolism has been shown to integrate with epigenetics and transcription to modulate cell fate and function. Beyond meeting the bioenergetic and biosynthetic demands of T-cell differentiation, whether metabolism might control T-cell fate by an epigenetic mechanism is unclear. Here, through the discovery and mechanistic characterization of a small molecule, (aminooxy)acetic acid, that reprograms the differentiation of T helper 17 (TH17) cells towards induced regulatory T (iTreg) cells, we show that increased transamination, mainly catalysed by GOT1, leads to increased levels of 2-hydroxyglutarate in differentiating TH17 cells. The accumulation of 2-hydroxyglutarate resulted in hypermethylation of the Foxp3 gene locus and inhibited Foxp3 transcription, which is essential for fate determination towards TH17 cells. Inhibition of the conversion of glutamate to α-ketoglutaric acid prevented the production of 2-hydroxyglutarate, reduced methylation of the Foxp3 gene locus, and increased Foxp3 expression. This consequently blocked the differentiation of TH17 cells by antagonizing the function of transcription factor RORγt and promoted polarization into iTreg cells. Selective inhibition of GOT1 with (aminooxy)acetic acid ameliorated experimental autoimmune encephalomyelitis in a therapeutic mouse model by regulating the balance between TH17 and iTreg cells. Targeting a glutamate-dependent metabolic pathway thus represents a new strategy for developing therapeutic agents against TH17-mediated autoimmune diseases.
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