4.8 Article

Large scale active-learning-guided exploration for in vitro protein production optimization

Journal

NATURE COMMUNICATIONS
Volume 11, Issue 1, Pages -

Publisher

NATURE PORTFOLIO
DOI: 10.1038/s41467-020-15798-5

Keywords

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Funding

  1. Genopole Allocation Recherche 2017
  2. DGA (French Ministry of Defense)
  3. Ecole Polytechnique
  4. ANR SynBioDiag [ANR-18-CE33-0015]
  5. ANR SINAPUV [ANR-17CE07-0046]
  6. INRAE (National Institute for Agricultural, Alimentation, and Environmental Research)
  7. University of Paris-Saclay
  8. BBSRC/EPSRC [BB/M017702/1]
  9. Life Science Department of the University of Paris Saclay
  10. Global Care initiative
  11. Institut Carnot Pasteur MS
  12. BBSRC [BB/M017702/1] Funding Source: UKRI

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Lysate-based cell-free systems have become a major platform to study gene expression but batch-to-batch variation makes protein production difficult to predict. Here we describe an active learning approach to explore a combinatorial space of similar to 4,000,000 cell-free buffer compositions, maximizing protein production and identifying critical parameters involved in cell-free productivity. We also provide a one-step-method to achieve high quality predictions for protein production using minimal experimental effort regardless of the lysate quality.

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