4.4 Article

Species Differences in Distribution and Prediction of Human Vss from Preclinical Data

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DRUG METABOLISM AND DISPOSITION
卷 39, 期 11, 页码 2103-2116

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AMER SOC PHARMACOLOGY EXPERIMENTAL THERAPEUTICS
DOI: 10.1124/dmd.111.040766

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Prediction of human volume of distribution at steady state (V-ss) before first administration of a new drug candidate to humans has become an important part of the drug development process. This study examines the assumptions behind interspecies scaling techniques used to predict human V-ss from preclinical data, namely the equivalency of V-ss,V-u and/or f(ut) across species. In addition, several interspecies scaling techniques are evaluated side by side using a set of 67 reference compounds where observed V-ss from rats, dogs, monkeys, and humans were compiled from the literature and where plasma protein binding was determined across species using an ultracentrifugation technique. Species similarity in V-ss,(u) or f(ut) does not appear to be the norm among rats, dogs, monkeys, or humans. Despite this, interspecies scaling from rats, dogs, and monkeys is useful and can provide reasonably accurate predictions of human V-ss, although some interspecies scaling approaches were better than others. For example, the performance of the common V-ss,V-u or f(ut) equivalency approaches using average V-ss,V-u or f(ut) across three preclinical species was superior to allometric scaling techniques. In addition, considering data from several preclinical species, using the equivalency approach, was superior to scaling from any single species. Although the mechanistic tissue composition equations available in the Simcyp population-based pharmacokinetic simulator did not necessarily provide the most accurate predictions, and the equations used likely need refinement, they still provide the best opportunity for a mechanistic understanding and prediction of human V-ss.

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