Literature DB >> 11605713

Quantitative drug interactions prediction system (Q-DIPS): a dynamic computer-based method to assist in the choice of clinically relevant in vivo studies.

P Bonnabry1, J Sievering, T Leemann, P Dayer.   

Abstract

Metabolic drug interactions are a major source of clinical problems, but their investigation during drug development is often incomplete and poorly specific. In vitro studies give very accurate data on the interactions of drugs with selective cytochrome P450 (CYP) isozymes, but their interpretation in the clinical context is difficult. On the other hand, the design of in vivo studies is sometimes poor (choice of prototype substrate, doses, schedule of administration, number of volunteers), with the risk of minimising the real potential for interaction. To link in vitro and in vivo studies, several authors have suggested using extrapolation techniques, based on the comparison of in vitro inhibition data with the active in vivo concentrations of the inhibitor. However, the lack of knowledge of one or several important parameters (role of metabolites, intrahepatocyte accumulation) often limits the possibility for safe and accurate predictions. In consequence, these methods are useful to complement in vitro studies and help design clinically relevant in vivo studies, but they will not totally replace in vivo investigation in the future. We have developed a computerised application, the quantitative drug interactions prediction system (Q-DIPS), to make both qualitative deductions and quantitative predictions on the basis of a database containing updated information on CYP substrates, inhibitors and inducers, as well as pharmacokinetic parameters. We also propose a global approach to drug interactions problems--'good interactions practice--to help design rational drug interaction investigations, sequentially associating in vitro studies, in vitrolin vivo extrapolation and finally well-designed in vivo clinical studies.

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Year:  2001        PMID: 11605713     DOI: 10.2165/00003088-200140090-00001

Source DB:  PubMed          Journal:  Clin Pharmacokinet        ISSN: 0312-5963            Impact factor:   6.447


  41 in total

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Review 2.  Integrated cytochrome P450 reaction phenotyping: attempting to bridge the gap between cDNA-expressed cytochromes P450 and native human liver microsomes.

Authors:  A D Rodrigues
Journal:  Biochem Pharmacol       Date:  1999-03-01       Impact factor: 5.858

Review 3.  Design of in vitro studies to predict in vivo inhibitory drug-drug interactions.

Authors:  M Strolin Benedetti; M Bani
Journal:  Pharmacol Res       Date:  1998-08       Impact factor: 7.658

4.  Interaction of fluconazole with cyclosporin.

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5.  Cellular uptake of fluvastatin, an inhibitor of HMG-CoA reductase, by rat cultured hepatocytes and human aortic endothelial cells.

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Journal:  Br J Clin Pharmacol       Date:  1999-04       Impact factor: 4.335

Review 6.  Cytochromes P450 expression systems.

Authors:  F J Gonzalez; K R Korzekwa
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7.  Prediction of drug-drug interactions of zonisamide metabolism in humans from in vitro data.

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Review 8.  P450 superfamily: update on new sequences, gene mapping, accession numbers and nomenclature.

Authors:  D R Nelson; L Koymans; T Kamataki; J J Stegeman; R Feyereisen; D J Waxman; M R Waterman; O Gotoh; M J Coon; R W Estabrook; I C Gunsalus; D W Nebert
Journal:  Pharmacogenetics       Date:  1996-02

Review 9.  Recombinant yeast in drug metabolism.

Authors:  J P Renaud; M A Peyronneau; P Urban; G Truan; C Cullin; D Pompon; P Beaune; D Mansuy
Journal:  Toxicology       Date:  1993-10-05       Impact factor: 4.221

Review 10.  Hepatic vectorial transport of xenobiotics.

Authors:  G A LeBlanc
Journal:  Chem Biol Interact       Date:  1994-02       Impact factor: 5.192

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  2 in total

Review 1.  Therapeutic drug monitoring and pharmacogenetic tests as tools in pharmacovigilance.

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2.  Computing with evidence Part II: An evidential approach to predicting metabolic drug-drug interactions.

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Journal:  J Biomed Inform       Date:  2009-06-16       Impact factor: 6.317

  2 in total

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