Immunotherapy for ovarian cancer is improved by tumor targeted delivery of a neoantigen surrogate

biorxiv(2023)

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Abstract
Ovarian cancer is known for its poor neoantigen expression and strong immunosuppression. Here, we utilized an attenuated non-pathogenic bacterium Listeria monocytogenes to deliver a highly immunogenic Tetanus Toxoid protein (Listeria-TT), as a neoantigen surrogate, into tumor cells through infection in a metastatic mouse ovarian cancer model (Id8p53-/-Luc). Gemcitabine (GEM) was added to reduce immune suppression. Listeria-TT+GEM treatments resulted in tumors expressing TT and reactivation of pre-existing CD4 and CD8 memory T cells to TT (generated early in life). These T cells were then attracted to the TT-expressing tumors now producing perforin and granzyme B. This correlated with a strong reduction in the ovarian tumors and metastases, and a significant improvement of the survival time compared to all control groups. Moreover, two treatment cycles with Listeria-TT+GEM doubled the survival time compared to untreated mice. Checkpoint inhibitors have little effect on ovarian cancer partly because of low neoantigen expression. Here we demonstrated that Listeria-TT+GEM+PD1 was significantly more effective (efficacy and survival) than PD1 or Listeria-TT+GEM alone, and that more treatment cycles with Listeria-TT+GEM+PD1 significantly increased the survival time compared to Listeria-TT+GEM alone. In summary, the results of this study suggest that our approach may benefit ovarian cancer patients. ![Figure][1] Graphical abstract ### Competing Interest Statement C.G. is the inventor of the Listeria-Recall Antigen Technology, which was developed in her laboratory, and is described in a patent application 11213577 (granted in the United States, China and Japan). The patent is licensed to Loki Therapeutics. C.G. is a stockholder of Loki Therapeutics and is an employee of Albert Einstein College of Medicine. All other authors declare that they have no competing interests. [1]: pending:yes
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