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Drug Metabolism & Disposition

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Rapid CommunicationShort Communication

A Fragment-Based Approach for the Computational Prediction of the Nonspecific Binding of Drugs to Hepatic Microsomes

Pramod C. Nair, Ross A. McKinnon and John O. Miners
Drug Metabolism and Disposition November 2016, 44 (11) 1794-1798; DOI: https://doi.org/10.1124/dmd.116.071852
Pramod C. Nair
Department of Clinical Pharmacology (P.C.N., J.O.M.) and Flinders Centre for Innovation in Cancer (P.C.N., R.A.M., J.O.M.), School of Medicine, Flinders University, Adelaide, Australia
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Ross A. McKinnon
Department of Clinical Pharmacology (P.C.N., J.O.M.) and Flinders Centre for Innovation in Cancer (P.C.N., R.A.M., J.O.M.), School of Medicine, Flinders University, Adelaide, Australia
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John O. Miners
Department of Clinical Pharmacology (P.C.N., J.O.M.) and Flinders Centre for Innovation in Cancer (P.C.N., R.A.M., J.O.M.), School of Medicine, Flinders University, Adelaide, Australia
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Abstract

Correction for the nonspecific binding (NSB) of drugs to liver microsomes is essential for the accurate measurement of the kinetic parameters Km and Ki, and hence in vitro–in vivo extrapolation to predict hepatic clearance and drug–drug interaction potential. Although a number of computational approaches for the estimation of drug microsomal NSB have been published, they generally rely on compound lipophilicity and charge state at the expense of other physicochemical and chemical properties. In this work, we report the development of a fragment-based hologram quantitative structure activity relationship (HQSAR) approach for the prediction of NSB using a database of 132 compounds. The model has excellent predictivity, with a noncross-validated r2 of 0.966 and cross-validated r2 of 0.680, with a predictive r2 of 0.748 for an external test set comprising 34 drugs. The HQSAR method reliably predicted the fraction unbound in incubations of 95% of the training and test set drugs, excluding compounds with a steroid or morphinan 4,5-epoxide nucleus. Using the same data set of compounds, performance of the HQSAR method was superior to a model based on logP/D as the sole descriptor (predictive r2 for the test set compounds, 0.534). Thus, the HQSAR method provides an alternative approach to laboratory-based procedures for the prediction of the NSB of drugs to liver microsomes, irrespective of the drug charge state (acid, base, or neutral).

Footnotes

    • Received May 29, 2016.
    • Accepted August 18, 2016.
  • This work was supported by Flinders University [fellowship to P.C.N.] and National Health and Medical Research Council of Australia [Project Grant 1044063]. R.A.M. is a recipient of a Beat Cancer Professorial Fellowship from Cancer Council SA.

  • dx.doi.org/10.1124/dmd.116.071852.

  • ↵Embedded ImageThis article has supplemental material available at dmd.aspetjournals.org.

  • Copyright © 2016 by The American Society for Pharmacology and Experimental Therapeutics
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Drug Metabolism and Disposition: 44 (11)
Drug Metabolism and Disposition
Vol. 44, Issue 11
1 Nov 2016
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Rapid CommunicationShort Communication

Computational Prediction of Drug Nonspecific Binding

Pramod C. Nair, Ross A. McKinnon and John O. Miners
Drug Metabolism and Disposition November 1, 2016, 44 (11) 1794-1798; DOI: https://doi.org/10.1124/dmd.116.071852

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Rapid CommunicationShort Communication

Computational Prediction of Drug Nonspecific Binding

Pramod C. Nair, Ross A. McKinnon and John O. Miners
Drug Metabolism and Disposition November 1, 2016, 44 (11) 1794-1798; DOI: https://doi.org/10.1124/dmd.116.071852
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