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Combinatorial assembly and design of enzymes.

Rosalie Lipsh-SokolikOlga KhersonskySybrin P SchröderCasper de BoerShlomo Yakir HochGideon J DaviesHerman S OverkleeftSarel Jacob Fleishman
Published in: Science (New York, N.Y.) (2023)
The design of structurally diverse enzymes is constrained by long-range interactions that are necessary for accurate folding. We introduce an atomistic and machine learning strategy for the combinatorial assembly and design of enzymes (CADENZ) to design fragments that combine with one another to generate diverse, low-energy structures with stable catalytic constellations. We applied CADENZ to endoxylanases and used activity-based protein profiling to recover thousands of structurally diverse enzymes. Functional designs exhibit high active-site preorganization and more stable and compact packing outside the active site. Implementing these lessons into CADENZ led to a 10-fold improved hit rate and more than 10,000 recovered enzymes. This design-test-learn loop can be applied, in principle, to any modular protein family, yielding huge diversity and general lessons on protein design principles.
Keyphrases
  • machine learning
  • high resolution
  • amino acid
  • binding protein
  • molecular dynamics simulations
  • transcription factor
  • quality improvement
  • single molecule