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Engineering indel and substitution variants of diverse and ancient enzymes using Graphical Representation of Ancestral Sequence Predictions (GRASP). | LitMetric

AI Article Synopsis

  • Ancestral sequence reconstruction is a valuable technique in molecular evolution and protein engineering, but existing methods struggle with large datasets and indel events.
  • To overcome these challenges, researchers created GRASP, which uses maximum likelihood methods and partial order graphs to efficiently analyze and infer ancestral sequences from over 10,000 members.
  • The effectiveness of GRASP was validated by predicting ancestral sequences in three enzyme families, showing that all predicted ancestors retained enzymatic activity, thus highlighting its potential for engineering biologically active proteins.

Article Abstract

Ancestral sequence reconstruction is a technique that is gaining widespread use in molecular evolution studies and protein engineering. Accurate reconstruction requires the ability to handle appropriately large numbers of sequences, as well as insertion and deletion (indel) events, but available approaches exhibit limitations. To address these limitations, we developed Graphical Representation of Ancestral Sequence Predictions (GRASP), which efficiently implements maximum likelihood methods to enable the inference of ancestors of families with more than 10,000 members. GRASP implements partial order graphs (POGs) to represent and infer insertion and deletion events across ancestors, enabling the identification of building blocks for protein engineering. To validate the capacity to engineer novel proteins from realistic data, we predicted ancestor sequences across three distinct enzyme families: glucose-methanol-choline (GMC) oxidoreductases, cytochromes P450, and dihydroxy/sugar acid dehydratases (DHAD). All tested ancestors demonstrated enzymatic activity. Our study demonstrates the ability of GRASP (1) to support large data sets over 10,000 sequences and (2) to employ insertions and deletions to identify building blocks for engineering biologically active ancestors, by exploring variation over evolutionary time.

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Source
http://www.ncbi.nlm.nih.gov/pmc/articles/PMC9632902PMC
http://dx.doi.org/10.1371/journal.pcbi.1010633DOI Listing

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