TY - JOUR
T1 - Trade-Offs in Biosensor Optimization for Dynamic Pathway Engineering
AU - Verma, Babita K.
AU - Mannan, Ahmad A.
AU - Zhang, Fuzhong
AU - Oyarzún, Diego A.
N1 - Funding Information:
B.K.V. was funded by a Wellcome Trust ISSF3 fund awarded to D.A.O. A.A.M. acknowledges funding from BBSRC Research Grant BB/M017982/1.
Publisher Copyright:
© 2021 American Chemical Society
PY - 2022/1/21
Y1 - 2022/1/21
N2 - Recent progress in synthetic biology allows the construction of dynamic control circuits for metabolic engineering. This technology promises to overcome many challenges encountered in traditional pathway engineering, thanks to its ability to self-regulate gene expression in response to bioreactor perturbations. The central components in these control circuits are metabolite biosensors that read out pathway signals and actuate enzyme expression. However, the construction of metabolite biosensors is a major bottleneck for strain design, and a key challenge is to understand the relation between biosensor dose-response curves and pathway performance. Here we employ multiobjective optimization to quantify performance trade-offs that arise in the design of metabolite biosensors. Our approach reveals strategies for tuning dose-response curves along an optimal trade-off between production flux and the cost of an increased expression burden on the host. We explore properties of control architectures built in the literature and identify their advantages and caveats in terms of performance and robustness to growth conditions and leaky promoters. We demonstrate the optimality of a control circuit for glucaric acid production in Escherichia coli, which has been shown to increase the titer by 2.5-fold as compared to static designs. Our results lay the groundwork for the automated design of control circuits for pathway engineering, with applications in the food, energy, and pharmaceutical sectors.
AB - Recent progress in synthetic biology allows the construction of dynamic control circuits for metabolic engineering. This technology promises to overcome many challenges encountered in traditional pathway engineering, thanks to its ability to self-regulate gene expression in response to bioreactor perturbations. The central components in these control circuits are metabolite biosensors that read out pathway signals and actuate enzyme expression. However, the construction of metabolite biosensors is a major bottleneck for strain design, and a key challenge is to understand the relation between biosensor dose-response curves and pathway performance. Here we employ multiobjective optimization to quantify performance trade-offs that arise in the design of metabolite biosensors. Our approach reveals strategies for tuning dose-response curves along an optimal trade-off between production flux and the cost of an increased expression burden on the host. We explore properties of control architectures built in the literature and identify their advantages and caveats in terms of performance and robustness to growth conditions and leaky promoters. We demonstrate the optimality of a control circuit for glucaric acid production in Escherichia coli, which has been shown to increase the titer by 2.5-fold as compared to static designs. Our results lay the groundwork for the automated design of control circuits for pathway engineering, with applications in the food, energy, and pharmaceutical sectors.
KW - biosensor optimization
KW - dynamic pathway control
KW - metabolic engineering
KW - metabolite biosensor
KW - model-based design
KW - pathway optimization
UR - http://www.scopus.com/inward/record.url?scp=85122757300&partnerID=8YFLogxK
U2 - 10.1021/acssynbio.1c00391
DO - 10.1021/acssynbio.1c00391
M3 - Article
C2 - 34968029
AN - SCOPUS:85122757300
SN - 2161-5063
VL - 11
SP - 228
EP - 240
JO - ACS Synthetic Biology
JF - ACS Synthetic Biology
IS - 1
ER -