A Computational Modeling Approach for the Design of Genetic Control Systems that Respond to Transcriptional Activity

Methods Mol Biol. 2024:2774:99-117. doi: 10.1007/978-1-0716-3718-0_8.

Abstract

Recent progress in synthetic biology has enabled the design of complex genetic circuits that interface with innate cellular functions, such as gene transcription, and control user-defined outputs. Implementing these genetic networks in mammalian cells, however, is a cumbersome process that requires several steps of optimization and benefits from the use of predictive modeling. Combining deterministic mathematical models with software-based numerical computing platforms allows researchers to quickly design, evaluate, and optimize multiple circuit topologies to establish experimental constraints that generate the desired control systems. In this chapter, we present a systematic approach based on predictive mathematical modeling to guide the design and construction of gene activity-based sensors. This approach enables user-driven circuit optimization through iterations of sensitivity analyses and parameter scans, providing a universal method to engineer sense and respond cells for diverse applications.

Keywords: Cell therapies; Genetic circuits; Genetic control systems; Mammalian synthetic biology; Sense-and-respond.

MeSH terms

  • Animals
  • Computer Simulation
  • Gene Regulatory Networks*
  • Humans
  • Mammals
  • Research Personnel
  • Software*
  • Synthetic Biology