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Reprogramming the Immune Suppressive Tumor Microenvironment in Glioma Enhances the Efficacy of Immune-Mediated Gene Therapy

McClellan, B. L.; Agudelo, J. A. P.; Mujeeb, A. A.; Dabaja, A. A.; Zhu, Z.; Raghuram, S.; Verela, M. L.; Tronrud, C.; Banerjee, K.; Wei, A.; Calatroni, C.; Zhang, L.; Romero, L. C.; Oh, P.; Alghamri, M. S.; Robbins, A.; Perricone, M. D.; Wang, Y.; Shay, B.; Sajjakulnukit, P.; Lyssiotis, C. A.; Welch, J. D.; Schwendeman, A.; Lowenstein, P. R.; Castro, M. G.

2025-11-13 cancer biology
10.1101/2025.11.11.687828 bioRxiv
Show abstract

Gliomas account for ~80% of primary malignant brain tumors. Many CNS WHO grade 2-3 and some grade 4 gliomas harbor mutant isocitrate dehydrogenase 1 (mIDH1), which causes a gain of function mutation (IDH1 R132H) leading to the production of 2-hydroxyglutarate (2HG). Mutant IDH1-induced 2HG, through epigenetic reprogramming elicits an immune-permissive tumor microenvironment (TME). An immunosuppressive mechanism in the glioma TME involves adenosine production via the ectoenzyme CD73. This study investigates mIDH1s influence on CD73 expression and adenosine levels. We demonstrate that mIDH1 glioma cells exhibit reduced CD73 expression, driven by DNA hypermethylation, leading to reduced adenosine levels. Since wtIDH1 gliomas have high CD73 expression, we evaluated CD73 blockade as an immunotherapy target. We show that CD73 inhibition used as monotherapy, did not improve survival in wtIDH1 glioma-bearing mice. However, when combined with immune-stimulatory Ad-TK (adenoviral vectors encoding herpes simplex virus thymidine kinase) and Ad-Flt3L (adenoviral vectors encoding FMS-like tyrosine kinase 3 ligand) gene therapy, CD73 blockade significantly enhanced therapeutic efficacy and increased anti-glioma effector T cell activity. These findings reveal that CD73 inhibition used in combination with immune stimulatory Ad-TK/Ad-Flt3L gene therapy may be an effective treatment for wtIDH1 gliomas, which could be readily translated to the clinical arena.

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