Prediction of Oral Bioavailability in Rats: Transferring Insights from in Vitro Correlations to (Deep) Machine Learning Models Using in Silico Model Outputs and Chemical Structure Parameters

被引:61
作者
Schneckener, Sebastian [1 ]
Grimbs, Sergio [1 ]
Hey, Jessica [1 ]
Menz, Stephan [3 ]
Osmers, Maren [3 ]
Schaper, Steffen [1 ]
Hillisch, Alexander [2 ]
Goeller, Andreas H. [2 ]
机构
[1] Bayer AG, Engn & Technol, Appl Math, D-51368 Leverkusen, Germany
[2] Bayer AG, Pharmaceut, R&D, Computat Mol Design, D-42096 Wuppertal, Germany
[3] Bayer AG, R&D, Pharmaceut, Res Pharmacokinet, D-13342 Berlin, Germany
关键词
PHARMACEUTICAL-INDUSTRY; HUMAN PHARMACOKINETICS; DRUG DISCOVERY; CLEARANCE; TRANSPORT;
D O I
10.1021/acs.jcim.9b00460
中图分类号
R914 [药物化学];
学科分类号
100701 ;
摘要
Oral administration of drug products is a strict requirement in many medical indications. Therefore, bioavailability prediction models are of high importance for prioritization of compound candidates in the drug discovery process. However, oral exposure and bioavailability are difficult to predict, as they are the result of various highly complex factors and/or processes influenced by the physicochemical properties of a compound, such as solubility, lipophilicity, or charge state, as well as by interactions with the organism, for instance, metabolism or membrane permeation. In this study, we assess whether it is possible to predict intravenous (iv) or oral drug exposure and oral bioavailability in rats. As input parameters, we use (i) six experimentally determined in vitro and physicochemical endpoints, namely, membrane permeation, free fraction, metabolic stability, solubility, pK(a) value, and lipophilicity; (ii) the outputs of six in silico absorption, distribution, metabolism, and excretion models trained on the same endpoints, or (iii) the chemical structure encoded as fingerprints or simplified molecular input line entry system strings. The underlying data set for the models is an unprecedented collection of almost 1900 data points with high-quality in vivo experiments performed in rats. We find that drug exposure after iv administration can be predicted similarly well using hybrid models with in vitro- or in silico-predicted endpoints as inputs, with fold change errors (FCE) of 2.28 and 2.08, respectively. The FCEs for exposure after oral administration are higher, and here, the prediction from in vitro inputs performs significantly better in comparison to in silico-based models with FCEs of 3.49 and 2.40, respectively, most probably reflecting the higher complexity of oral bioavailability. Simplifying the prediction task to a binary alert for low oral bioavailability, based only on chemical structure, we achieve accuracy and precision close to 70%.
引用
收藏
页码:4893 / 4905
页数:13
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