PLoS Computational Biology (Mar 2023)

Inferring protein fitness landscapes from laboratory evolution experiments.

  • Sameer D'Costa,
  • Emily C Hinds,
  • Chase R Freschlin,
  • Hyebin Song,
  • Philip A Romero

DOI
https://doi.org/10.1371/journal.pcbi.1010956
Journal volume & issue
Vol. 19, no. 3
p. e1010956

Abstract

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Directed laboratory evolution applies iterative rounds of mutation and selection to explore the protein fitness landscape and provides rich information regarding the underlying relationships between protein sequence, structure, and function. Laboratory evolution data consist of protein sequences sampled from evolving populations over multiple generations and this data type does not fit into established supervised and unsupervised machine learning approaches. We develop a statistical learning framework that models the evolutionary process and can infer the protein fitness landscape from multiple snapshots along an evolutionary trajectory. We apply our modeling approach to dihydrofolate reductase (DHFR) laboratory evolution data and the resulting landscape parameters capture important aspects of DHFR structure and function. We use the resulting model to understand the structure of the fitness landscape and find numerous examples of epistasis but an overall global peak that is evolutionarily accessible from most starting sequences. Finally, we use the model to perform an in silico extrapolation of the DHFR laboratory evolution trajectory and computationally design proteins from future evolutionary rounds.