Model-guided combinatorial optimization of complex synthetic gene networks


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Date

2016-12

Publication Type

Journal Article

ETH Bibliography

yes

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Abstract

Constructing gene circuits that satisfy quantitative performance criteria has been a long‐standing challenge in synthetic biology. Here, we show a strategy for optimizing a complex three‐gene circuit, a novel proportional miRNA biosensor, using predictive modeling to initiate a search in the phase space of sensor genetic composition. We generate a library of sensor circuits using diverse genetic building blocks in order to access favorable parameter combinations and uncover specific genetic compositions with greatly improved dynamic range. The combination of high‐throughput screening data and the data obtained from detailed mechanistic interrogation of a small number of sensors was used to validate the model. The validated model facilitated further experimentation, including biosensor reprogramming and biosensor integration into larger networks, enabling in principle arbitrary logic with miRNA inputs using normal form circuits. The study reveals how model‐guided generation of genetic diversity followed by screening and model validation can be successfully applied to optimize performance of complex gene networks without extensive prior knowledge.

Publication status

published

Editor

Book title

Volume

12 (12)

Pages / Article No.

899

Publisher

Nature

Event

Edition / version

Methods

Software

Geographic location

Date collected

Date created

Subject

Library screening; MiRNA sensor; Modeling; Synthetic gene circuit

Organisational unit

03860 - Benenson, Yaakov (ehemalig) / Benenson, Yaakov (former) check_circle

Notes

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