PLX075333

GSE109533: Blocking IFNRA1 inhibits Multiple Myeloma-driven regulatory T-cell expansion and immunosuppression

  • Organsim mouse
  • Type RNASEQ
  • Target gene
  • Project ARCHS4

Despite significant advances in the treatment of multiple myeloma (MM), most patients succumb to disease progression. One of the major immunosuppressive mechanisms that is believed to play a role in myeloma progression, is the expansion of regulatory T-cells (Tregs). In this study, we demonstrate that myeloma cells drive Treg expansion and activation by secreting type-1 interferon (IFN). Blocking IFNAR1 (interferon alpha and beta receptor 1) on Tregs significantly decreases both, myeloma-associated Treg immunosupporessive function and myeloma progression. Using syngeneic transplantable murine myeloma models and bone marrow (BM) aspirates of multiple myeloma patients, we found that Tregs were expanded and activated in the BM microenvironment at early stages of myeloma development. Selective depletion of Tregs led to a complete remission and prolonged survival in mice injected with myeloma cells. Further analysis of the interaction between myeloma cells and Tregs using gene sequencing and enrichment analysis uncovered a feedback loop, wherein myeloma-cell-secreted type-1 IFN induced proliferation and expansion of Tregs. By using IFNAR1-blocking antibody treatment and IFNAR1 knockout Tregs, we demonstrated a significant decrease in myeloma-associated Treg proliferation, which was associated with longer survival of myeloma-injected mice. Our results thus suggest that blocking type-1 IFN signaling represents a potential strategy to target immunosuppressive Trage function in MM. SOURCE: Irene Ghobrial (irene_ghobrial@dfci.harvard.edu) - Ghobrial Lab Dana-Farber Cancer Institute

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