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Directed Evolution of a Selective and Sensitive Serotonin Sensor via Machine Learning.

Authors :
Unger EK
Keller JP
Altermatt M
Liang R
Matsui A
Dong C
Hon OJ
Yao Z
Sun J
Banala S
Flanigan ME
Jaffe DA
Hartanto S
Carlen J
Mizuno GO
Borden PM
Shivange AV
Cameron LP
Sinning S
Underhill SM
Olson DE
Amara SG
Temple Lang D
Rudnick G
Marvin JS
Lavis LD
Lester HA
Alvarez VA
Fisher AJ
Prescher JA
Kash TL
Yarov-Yarovoy V
Gradinaru V
Looger LL
Tian L
Source :
Cell [Cell] 2020 Dec 23; Vol. 183 (7), pp. 1986-2002.e26. Date of Electronic Publication: 2020 Dec 16.
Publication Year :
2020

Abstract

Serotonin plays a central role in cognition and is the target of most pharmaceuticals for psychiatric disorders. Existing drugs have limited efficacy; creation of improved versions will require better understanding of serotonergic circuitry, which has been hampered by our inability to monitor serotonin release and transport with high spatial and temporal resolution. We developed and applied a binding-pocket redesign strategy, guided by machine learning, to create a high-performance, soluble, fluorescent serotonin sensor (iSeroSnFR), enabling optical detection of millisecond-scale serotonin transients. We demonstrate that iSeroSnFR can be used to detect serotonin release in freely behaving mice during fear conditioning, social interaction, and sleep/wake transitions. We also developed a robust assay of serotonin transporter function and modulation by drugs. We expect that both machine-learning-guided binding-pocket redesign and iSeroSnFR will have broad utility for the development of other sensors and in vitro and in vivo serotonin detection, respectively.<br />Competing Interests: Declaration of Interests L.T. and G.O.M. are co-founders of Seven Biosciences. D.E.O. is a founder of Delix.<br /> (Copyright © 2020 Elsevier Inc. All rights reserved.)

Details

Language :
English
ISSN :
1097-4172
Volume :
183
Issue :
7
Database :
MEDLINE
Journal :
Cell
Publication Type :
Academic Journal
Accession number :
33333022
Full Text :
https://doi.org/10.1016/j.cell.2020.11.040