Type 2 diabetes (T2D) arises when pancreatic β cells fail to produce sufficient insulin to control blood glucose appropriately. Aberrant nutrient sensing by O-GlcNAcylation and mTORC1 is linked to T2D and the failure of insulin-producing β cells. However, the nature of their crosstalk in β cells remains unexplored. Recently, O-GlcNAcylation, a posttranslation modification controlled by enzymes O-GlcNAc transferase/O-GlcNAcase (OGT/OGA), emerged as a pivotal regulator for β cell health; deficiency in either enzyme causes β cell failure. The present study investigates the previously unidentified connection between nutrient sensor OGT and mTORC1 crosstalk to regulate β cell mass and function in vivo. We show reduced OGT and mTORC1 activity in islets of a preclinical β cell dysfunction model and islets from humans with obesity. Using loss or gain of function of OGT, we identified that O-GlcNAcylation positively regulated mTORC1 signaling in β cells. O-GlcNAcylation negatively modulated autophagy, as the removal of OGT increased autophagy, while the deletion of OGA decreased it. Increasing mTORC1 signaling, via deletion of TSC2, alleviated the diabetic phenotypes by increasing β cell mass but not β cell function in OGT-deficient mice. Downstream phospho-protein signaling analyses revealed diverging effects on MKK4 and calmodulin signaling between islets with OGT, TSC2, or combined deletion. These data provide evidence of OGT’s significance as an upstream regulator of mTORC1 and autophagy, crucial for the regulation of β cell function and glucose homeostasis.
Seokwon Jo, Nicholas Esch, Anh Nguyen, Alicia Wong, Ramkumar Mohan, Clara Kim, Manuel Blandino-Rosano, Ernesto Bernal-Mizrachi, Emilyn U. Alejandro
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