Magnesium Sensing Via LFA-1 Regulates CD8+ T Cell Effector Function
Cell(2022)SCI 1区
Univ Basel | Univ Hosp Basel | Univ Lausanne | Univ Appl Sci Northwestern Switzerland | Univ Texas MD Anderson Canc Ctr | Univ & Univ Hosp Basel | Univ Geneva | Hornet Therapeut Ltd | Swiss Grp Clin Canc Res
Abstract
The relevance of extracellular magnesium in cellular immunity remains largely unknown. Here, we show that the co-stimulatory cell-surface molecule LFA-1 requires magnesium to adopt its active conformation on CD8+ T cells, thereby augmenting calcium flux, signal transduction, metabolic reprogramming, immune synapse formation, and, as a consequence, specific cytotoxicity. Accordingly, magnesium-sufficiency sensed via LFA-1 translated to the superior performance of pathogen- and tumor-specific T cells, enhanced effectiveness of bi-specific T cell engaging antibodies, and improved CAR T cell function. Clinically, low serum magnesium levels were associated with more rapid disease progression and shorter overall survival in CAR T cell and immune checkpoint antibody-treated patients. LFA-1 thus directly incorporates information on the composition of the microenvironment as a determinant of outside-in signaling activity. These findings conceptually link co-stimulation and nutrient sensing and point to the magnesium-LFA-1 axis as a therapeutically amenable biologic system.
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Key words
immune control,memory CD8 T cells,microenvironment,magnesium,Mg2+,co-stimulation/LFA-1,integration of microenvironment and T cell function,tumor-specific T cells,CAR T cells,T cell engaging antibodies
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