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Published August 2014 | Submitted + Supplemental Material
Journal Article Open

Negative autoregulation matches production and demand in synthetic transcriptional networks

Abstract

We propose a negative feedback architecture that regulates activity of artificial genes, or "genelets", to meet their output downstream demand, achieving robustness with respect to uncertain open-loop output production rates. In particular, we consider the case where the outputs of two genelets interact to form a single assembled product. We show with analysis and experiments that negative autoregulation matches the production and demand of the outputs: the magnitude of the regulatory signal is proportional to the "error" between the circuit output concentration and its actual demand. This two-device system is experimentally implemented using in vitro transcriptional networks, where reactions are systematically designed by optimizing nucleic acid sequences with publicly available software packages. We build a predictive ordinary differential equation (ODE) model that captures the dynamics of the system and can be used to numerically assess the scalability of this architecture to larger sets of interconnected genes. Finally, with numerical simulations we contrast our negative autoregulation scheme with a cross-activation architecture, which is less scalable and results in slower response times.

Additional Information

© 2014 American Chemical Society. Received: October 4, 2013; Published: February 26, 2014. The authors thank Jongmin Kim, Paul W. K. Rothemund, Franco Blanchini, and Erik Winfree for their feedback. In particular, we thank Erik Winfree for sharing laboratory facilities. This work has been supported by the National Science Foundation through grants CCF-0832824 ("The Molecular Programming Project") and CMMI-1266402, and by the Institute for Collaborative Biotechnologies through grant W911NF-09-0001 from the U.S. Army Research Office.

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Submitted - 000430.full.pdf

Supplemental Material - sb400157z_si_001.pdf

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August 23, 2023
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