Open access
Date
2023-12-07Type
- Journal Article
Abstract
Background: Synthetic biologists use and combine diverse biological parts to build systems such as genetic circuits that perform desirable functions in, for example, biomedical or industrial applications. Computer-aided design methods have been developed to help choose appropriate network structures and biological parts for a given design objective. However, they almost always model the behavior of the network in an average cell, despite pervasive cell-to-cell variability. Results: Here, we present a computational framework and an efficient algorithm to guide the design of synthetic biological circuits while accounting for cell-to-cell variability explicitly. Our design method integrates a Non-linear Mixed-Effects (NLME) framework into a Markov Chain Monte-Carlo (MCMC) algorithm for design based on ordinary differential equation (ODE) models. The analysis of a recently developed transcriptional controller demonstrates first insights into design guidelines when trying to achieve reliable performance under cell-to-cell variability. Conclusion: We anticipate that our method not only facilitates the rational design of synthetic networks under cell-to-cell variability, but also enables novel applications by supporting design objectives that specify the desired behavior of cell populations. Show more
Permanent link
https://doi.org/10.3929/ethz-b-000647562Publication status
publishedExternal links
Journal / series
BMC BioinformaticsVolume
Pages / Article No.
Publisher
BioMed CentralSubject
Cell-to-cell variability; Synthetic biology; Computer-aided designOrganisational unit
03699 - Stelling, Jörg / Stelling, Jörg
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