Genetic circuit characterization and debugging using RNA-seq.

Mol Syst Biol
Authors
Keywords
Abstract

Genetic circuits implement computational operations within a cell. Debugging them is difficult because their function is defined by multiple states (e.g., combinations of inputs) that vary in time. Here, we develop RNA-seq methods that enable the simultaneous measurement of: (i) the states of internal gates, (ii) part performance (promoters, insulators, terminators), and (iii) impact on host gene expression. This is applied to a three-input one-output circuit consisting of three sensors, five NOR/NOT gates, and 46 genetic parts. Transcription profiles are obtained for all eight combinations of inputs, from which biophysical models can extract part activities and the response functions of sensors and gates. Various unexpected failure modes are identified, including cryptic antisense promoters, terminator failure, and a sensor malfunction due to media-induced changes in host gene expression. This can guide the selection of new parts to fix these problems, which we demonstrate by using a bidirectional terminator to disrupt observed antisense transcription. This work introduces RNA-seq as a powerful method for circuit characterization and debugging that overcomes the limitations of fluorescent reporters and scales to large systems composed of many parts.

Year of Publication
2017
Journal
Mol Syst Biol
Volume
13
Issue
11
Pages
952
Date Published
2017 11 09
ISSN
1744-4292
DOI
10.15252/msb.20167461
PubMed ID
29122925
PubMed Central ID
PMC5731345
Links
Grant list
BB/L01386X/1 / BB_ / Biotechnology and Biological Sciences Research Council / United Kingdom