Literature DB >> 12906751

Prediction of human pharmacokinetics from animal data and molecular structural parameters using multivariate regression analysis: volume of distribution at steady state.

Toshihiro Wajima1, Kazuya Fukumura, Yoshitaka Yano, Takayoshi Oguma.   

Abstract

The aim of this study was to develop a regression equation for predicting volume of distribution at steady state (Vd(ss)) in humans to enable application to various types of drugs using animal experimental data for rats and dogs and some molecular structural parameters. The Vd(ss) data for rats, dogs and humans of 64 drugs were obtained from literature. The compounds have various structures, pharmacological activities and pharmacokinetic characteristics. In addition, the molecular weight, calculated partition coefficient (clogP), and the number of hydrogen bond acceptors were used as possible descriptors related to the Vd(ss) in humans. Multivariate regression analyses, multiple linear regression analysis and the partial least squares (PLS) method were used to predict Vd(ss) in humans. Interaction terms were also introduced into the regression analysis to evaluate the non-linear relationship. For the data set used in the present study, PLS with quadratic term descriptors gave the best predictive performance. The PLS model using Vd(ss) data for only two animal species and using easily calculated structural parameters could generally predict Vd(ss) in humans better than an allometric method. In addition, the PLS model with only animal data gave almost the same predictive performance as the PLS model with quadratic term descriptors. This model may be easier to use and be practical in a realistic situation, and could predict Vd(ss) in humans better than the allometric method.

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Year:  2003        PMID: 12906751     DOI: 10.1211/0022357021477

Source DB:  PubMed          Journal:  J Pharm Pharmacol        ISSN: 0022-3573            Impact factor:   3.765


  4 in total

1.  Prediction of human oral plasma concentration-time profiles using preclinical data: comparative evaluation of prediction approaches in early pharmaceutical discovery.

Authors:  An Van den Bergh; Vikash Sinha; Ron Gilissen; Roel Straetemans; Koen Wuyts; Denise Morrison; Luc Bijnens; Claire Mackie
Journal:  Clin Pharmacokinet       Date:  2011-08       Impact factor: 6.447

2.  Exploratory population pharmacokinetics (e-PPK) analysis for predicting human PK using exploratory ADME data during early drug discovery research.

Authors:  Kenji Tabata; Nozomu Hamakawa; Seigo Sanoh; Shigeyuki Terashita; Toshio Teramura
Journal:  Eur J Drug Metab Pharmacokinet       Date:  2009 Apr-Jun       Impact factor: 2.441

Review 3.  Prediction of drug disposition on the basis of its chemical structure.

Authors:  David Stepensky
Journal:  Clin Pharmacokinet       Date:  2013-06       Impact factor: 6.447

4.  Predicting Volume of Distribution in Humans: Performance of In Silico Methods for a Large Set of Structurally Diverse Clinical Compounds.

Authors:  Neha Murad; Kishore K Pasikanti; Benjamin D Madej; Amanda Minnich; Juliet M McComas; Sabrinia Crouch; Joseph W Polli; Andrew D Weber
Journal:  Drug Metab Dispos       Date:  2020-11-25       Impact factor: 3.922

  4 in total

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