4.8 Article

Artificial selection methods from evolutionary computing show promise for directed evolution of microbes

Journal

ELIFE
Volume 11, Issue -, Pages -

Publisher

eLIFE SCIENCES PUBL LTD
DOI: 10.7554/eLife.79665

Keywords

artificial selection; directed evolution; digital organisms; agent-based modeling; evolutionary computing

Categories

Funding

  1. National Science Foundation [DEB-1813069, MCB-1750125]

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Directed microbial evolution utilizes evolutionary processes in the laboratory to create microorganisms with enhanced or novel functional traits. This study investigates the effectiveness of multiobjective selection algorithms from evolutionary computing in directing the evolution of microbial populations. The findings suggest that these algorithms outperform commonly used methods in laboratory settings, highlighting the potential for their application in directed evolution.
Directed microbial evolution harnesses evolutionary processes in the laboratory to construct microorganisms with enhanced or novel functional traits. Attempting to direct evolutionary processes for applied goals is fundamental to evolutionary computation, which harnesses the principles of Darwinian evolution as a general-purpose search engine for solutions to challenging computational problems. Despite their overlapping approaches, artificial selection methods from evolutionary computing are not commonly applied to living systems in the laboratory. In this work, we ask whether parent selection algorithms-procedures for choosing promising progenitors-from evolutionary computation might be useful for directing the evolution of microbial populations when selecting for multiple functional traits. To do so, we introduce an agent-based model of directed microbial evolution, which we used to evaluate how well three selection algorithms from evolutionary computing (tournament selection, lexicase selection, and non-dominated elite selection) performed relative to methods commonly used in the laboratory (elite and top 10% selection). We found that multiobjective selection techniques from evolutionary computing (lexicase and non-dominated elite) generally outperformed the commonly used directed evolution approaches when selecting for multiple traits of interest. Our results motivate ongoing work transferring these multiobjective selection procedures into the laboratory and a continued evaluation of more sophisticated artificial selection methods.

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