4.7 Article

Predicting CYP2C19 catalytic parameters for enantioselective oxidations using artificial neural networks and a chirality code

Journal

BIOORGANIC & MEDICINAL CHEMISTRY
Volume 21, Issue 13, Pages 3749-3759

Publisher

PERGAMON-ELSEVIER SCIENCE LTD
DOI: 10.1016/j.bmc.2013.04.044

Keywords

Cytochrome P450; CYP2C19; Artificial neural networks; Catalytic parameters; Chirality codes; Enantioselective; Enantiomer

Funding

  1. University of Arkansas for Medical Sciences
  2. National Institute of Health [UL1 TR000039]
  3. NASA [NCC5-597]
  4. National Science Foundation [CRI CNS-0855248, EPS-0701890, EPS-0918970, MRI CNS-0619069, OISE-0729792]

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Cytochromes P450 (CYP for isoforms) play a central role in biological processes especially metabolism of chiral molecules; thus, development of computational methods to predict parameters for chiral reactions is important for advancing this field. In this study, we identified the most optimal artificial neural networks using conformation-independent chirality codes to predict CYP2C19 catalytic parameters for enantioselective reactions. Optimization of the neural networks required identifying the most suitable representation of structure among a diverse array of training substrates, normalizing distribution of the corresponding catalytic parameters (k(cat), K-m, and k(cat)/K-m), and determining the best topology for networks to make predictions. Among different structural descriptors, the use of partial atomic charges according to the CHelpG scheme and inclusion of hydrogens yielded the most optimal artificial neural networks. Their training also required resolution of poorly distributed output catalytic parameters using a Box-Cox transformation. End point leave-one-out cross correlations of the best neural networks revealed that predictions for individual catalytic parameters (k(cat) and K-m) were more consistent with experimental values than those for catalytic efficiency (k(cat)/K-m). Lastly, neural networks predicted correctly enantioselectivity and comparable catalytic parameters measured in this study for previously uncharacterized CYP2C19 substrates, R- and S-propranolol. Taken together, these seminal computational studies for CYP2C19 are the first to predict all catalytic parameters for enantioselective reactions using artificial neural networks and thus provide a foundation for expanding the prediction of cytochrome P450 reactions to chiral drugs, pollutants, and other biologically active compounds. (C) 2013 Elsevier Ltd. All rights reserved.

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