Cadet_2018_Sci.Rep_8_16757

Reference

Title : A machine learning approach for reliable prediction of amino acid interactions and its application in the directed evolution of enantioselective enzymes - Cadet_2018_Sci.Rep_8_16757
Author(s) : Cadet F , Fontaine N , Li G , Sanchis J , Ng Fuk Chong M , Pandjaitan R , Vetrivel I , Offmann B , Reetz MT
Ref : Sci Rep , 8 :16757 , 2018
Abstract :

Directed evolution is an important research activity in synthetic biology and biotechnology. Numerous reports describe the application of tedious mutation/screening cycles for the improvement of proteins. Recently, knowledge-based approaches have facilitated the prediction of protein properties and the identification of improved mutants. However, epistatic phenomena constitute an obstacle which can impair the predictions in protein engineering. We present an innovative sequence-activity relationship (innov'SAR) methodology based on digital signal processing combining wet-lab experimentation and computational protein design. In our machine learning approach, a predictive model is developed to find the resulting property of the protein when the n single point mutations are permuted (2(n) combinations). The originality of our approach is that only sequence information and the fitness of mutants measured in the wet-lab are needed to build models. We illustrate the application of the approach in the case of improving the enantioselectivity of an epoxide hydrolase from Aspergillus niger. n = 9 single point mutants of the enzyme were experimentally assessed for their enantioselectivity and used as a learning dataset to build a model. Based on combinations of the 9 single point mutations (2(9)), the enantioselectivity of these 512 variants were predicted, and candidates were experimentally checked: better mutants with higher enantioselectivity were indeed found.

PubMedSearch : Cadet_2018_Sci.Rep_8_16757
PubMedID: 30425279

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Citations formats

Cadet F, Fontaine N, Li G, Sanchis J, Ng Fuk Chong M, Pandjaitan R, Vetrivel I, Offmann B, Reetz MT (2018)
A machine learning approach for reliable prediction of amino acid interactions and its application in the directed evolution of enantioselective enzymes
Sci Rep 8 :16757

Cadet F, Fontaine N, Li G, Sanchis J, Ng Fuk Chong M, Pandjaitan R, Vetrivel I, Offmann B, Reetz MT (2018)
Sci Rep 8 :16757