Agent-based modeling of cellular dynamics in adoptive cell therapy

Yujia Wang, Stefano Casarin, May Daher, Vakul Mohanty, Merve Dede, Mayra Shanley, Rafet Başar, Katayoun Rezvani, Ken Chen

Research output: Working paperPreprint

Abstract

Adoptive cell therapies (ACT) leverage tumor-immune interactions to cure cancer. Despite promising phase I/II clinical trials of chimeric-antigen-receptor natural killer (CAR-NK) cell therapies, molecular mechanisms and cellular properties required to achieve clinical benefits in broad cancer spectra remain underexplored. While in vitro and in vivo experiments are required in this endeavor, they are typically expensive, laborious, and limited to targeted investigations. Here, we present ABMACT (Agent-Based Model for Adoptive Cell Therapy), an in silico approach employing agent-based models (ABM) to simulate the continuous course and dynamics of an evolving tumor-immune ecosystem, consisting of heterogeneous "virtual cells" created based on knowledge and omics data observed in experiments and patients. Applying ABMACT in multiple therapeutic context indicates that to achieve optimal ACT efficacy, it is key to enhance immune cellular proliferation, cytotoxicity, and serial killing capacity. With ABMACT, in silico trials can be performed systematically to inform ACT product development and predict optimal treatment strategies.

Original languageEnglish (US)
DOIs
StateUnpublished - Feb 21 2025

Publication series

NamebioRxiv
PublisherCold Spring Harbor Laboratory Press
ISSN (Print)2692-8205

Divisions

  • Abdominal Transplant

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