Literature DB >> 27693299

IMI - Oral biopharmaceutics tools project - Evaluation of bottom-up PBPK prediction success part 3: Identifying gaps in system parameters by analysing In Silico performance across different compound classes.

Adam S Darwich1, Alison Margolskee2, Xavier Pepin3, Leon Aarons1, Aleksandra Galetin1, Amin Rostami-Hodjegan4, Sara Carlert5, Maria Hammarberg5, Constanze Hilgendorf5, Pernilla Johansson5, Eva Karlsson5, Dónal Murphy6, Christer Tannergren5, Helena Thörn5, Mohammed Yasin6, Florent Mazuir7, Olivier Nicolas7, Sergej Ramusovic8, Christine Xu9, Shriram M Pathak10, Timo Korjamo11, Johanna Laru12, Jussi Malkki11, Sari Pappinen11, Johanna Tuunainen11, Jennifer Dressman13, Simone Hansmann13, Edmund Kostewicz13, Handan He14, Tycho Heimbach14, Fan Wu14, Carolin Hoft15, Yan Pang15, Michael B Bolger16, Eva Huehn16, Viera Lukacova16, James M Mullin16, Ke X Szeto16, Chester Costales17, Jian Lin17, Mark McAllister18, Sweta Modi17, Charles Rotter17, Manthena Varma18, Mei Wong18, Amitava Mitra19, Jan Bevernage20, Jeike Biewenga20, Achiel Van Peer20, Richard Lloyd21, Carole Shardlow21, Peter Langguth22, Irina Mishenzon22, Mai Anh Nguyen22, Jonathan Brown23, Hans Lennernäs24, Bertil Abrahamsson5.   

Abstract

Three Physiologically Based Pharmacokinetic software packages (GI-Sim, Simcyp® Simulator, and GastroPlus™) were evaluated as part of the Innovative Medicine Initiative Oral Biopharmaceutics Tools project (OrBiTo) during a blinded "bottom-up" anticipation of human pharmacokinetics. After data analysis of the predicted vs. measured pharmacokinetics parameters, it was found that oral bioavailability (Foral) was underpredicted for compounds with low permeability, suggesting improper estimates of intestinal surface area, colonic absorption and/or lack of intestinal transporter information. Foral was also underpredicted for acidic compounds, suggesting overestimation of impact of ionisation on permeation, lack of information on intestinal transporters, or underestimation of solubilisation of weak acids due to less than optimal intestinal model pH settings or underestimation of bile micelle contribution. Foral was overpredicted for weak bases, suggesting inadequate models for precipitation or lack of in vitro precipitation information to build informed models. Relative bioavailability was underpredicted for both high logP compounds as well as poorly water-soluble compounds, suggesting inadequate models for solubility/dissolution, underperforming bile enhancement models and/or lack of biorelevant solubility measurements. These results indicate areas for improvement in model software, modelling approaches, and generation of applicable input data. However, caution is required when interpreting the impact of drug-specific properties in this exercise, as the availability of input parameters was heterogeneous and highly variable, and the modellers generally used the data "as is" in this blinded bottom-up prediction approach.
Copyright © 2016 Elsevier B.V. All rights reserved.

Entities:  

Keywords:  Physiologically-based pharmacokinetics (PBPK); absorption; biopharmaceutics; drug database; modelling and simulation (M&S); oral bioavailability (F(oral))

Mesh:

Substances:

Year:  2016        PMID: 27693299     DOI: 10.1016/j.ejps.2016.09.037

Source DB:  PubMed          Journal:  Eur J Pharm Sci        ISSN: 0928-0987            Impact factor:   4.384


  8 in total

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  8 in total

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