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Prediction of Promiscuous P-Glycoprotein Inhibition Using a Novel Machine Learning Scheme

Author

Listed:
  • Max K Leong
  • Hong-Bin Chen
  • Yu-Hsuan Shih

Abstract

Background: P-glycoprotein (P-gp) is an ATP-dependent membrane transporter that plays a pivotal role in eliminating xenobiotics by active extrusion of xenobiotics from the cell. Multidrug resistance (MDR) is highly associated with the over-expression of P-gp by cells, resulting in increased efflux of chemotherapeutical agents and reduction of intracellular drug accumulation. It is of clinical importance to develop a P-gp inhibition predictive model in the process of drug discovery and development. Methodology/Principal Findings: An in silico model was derived to predict the inhibition of P-gp using the newly invented pharmacophore ensemble/support vector machine (PhE/SVM) scheme based on the data compiled from the literature. The predictions by the PhE/SVM model were found to be in good agreement with the observed values for those structurally diverse molecules in the training set (n = 31, r2 = 0.89, q2 = 0.86, RMSE = 0.40, s = 0.28), the test set (n = 88, r2 = 0.87, RMSE = 0.39, s = 0.25) and the outlier set (n = 11, r2 = 0.96, RMSE = 0.10, s = 0.05). The generated PhE/SVM model also showed high accuracy when subjected to those validation criteria generally adopted to gauge the predictivity of a theoretical model. Conclusions/Significance: This accurate, fast and robust PhE/SVM model that can take into account the promiscuous nature of P-gp can be applied to predict the P-gp inhibition of structurally diverse compounds that otherwise cannot be done by any other methods in a high-throughput fashion to facilitate drug discovery and development by designing drug candidates with better metabolism profile.

Suggested Citation

  • Max K Leong & Hong-Bin Chen & Yu-Hsuan Shih, 2012. "Prediction of Promiscuous P-Glycoprotein Inhibition Using a Novel Machine Learning Scheme," PLOS ONE, Public Library of Science, vol. 7(3), pages 1-12, March.
  • Handle: RePEc:plo:pone00:0033829
    DOI: 10.1371/journal.pone.0033829
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