Machine-Learning-Guided Mutagenesis for Directed Evolution of Fluorescent Proteins
Author(s) -
Yutaka Saitō,
Misaki Oikawa,
Hikaru Nakazawa,
Teppei Niide,
Tomoshi Kameda,
Koji Tsuda,
Mitsuo Umetsu
Publication year - 2018
Publication title -
acs synthetic biology
Language(s) - English
Resource type - Journals
SCImago Journal Rank - 2.156
H-Index - 66
ISSN - 2161-5063
DOI - 10.1021/acssynbio.8b00155
Subject(s) - mutagenesis , green fluorescent protein , directed evolution , fluorescence , protein engineering , fluorescent protein , sequence space , computational biology , directed molecular evolution , biology , site directed mutagenesis , directed mutagenesis , mutation , computer science , biochemistry , gene , mutant , physics , mathematics , quantum mechanics , pure mathematics , banach space , enzyme
Molecular evolution based on mutagenesis is widely used in protein engineering. However, optimal proteins are often difficult to obtain due to a large sequence space. Here, we propose a novel approach that combines molecular evolution with machine learning. In this approach, we conduct two rounds of mutagenesis where an initial library of protein variants is used to train a machine-learning model to guide mutagenesis for the second-round library. This enables us to prepare a small library suited for screening experiments with high enrichment of functional proteins. We demonstrated a proof-of-concept of our approach by altering the reference green fluorescent protein (GFP) so that its fluorescence is changed into yellow. We successfully obtained a number of proteins showing yellow fluorescence, 12 of which had longer wavelengths than the reference yellow fluorescent protein (YFP). These results show the potential of our approach as a powerful method for directed evolution of fluorescent proteins.
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