2019
DOI: 10.1021/acs.jcim.9b00460
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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

Abstract: 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 wi… Show more

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Cited by 72 publications
(80 citation statements)
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“…Drug absorption mainly relies on solubility and intestinal permeability [8], which is also termed as intestinal absorption [9], since oral drugs must permeate the gastrointestinal barrier before they can be absorbed by the bodies [9]. In fact, solubility and permeability have been adopted by the biopharmaceutics drug disposition classification system (BDDCS), which suggests that the intestinal permeability rate is closely correlated with the extent of metabolism [10] Nevertheless, intestinal permeability is an extremely complicated process since drugs can pass through the intestinal epithelium to enter blood vessel by active transport as well as passive diffusion, as illustrated by Figure 3 of Dahlgren and Lennernäs [11].…”
Section: Introductionmentioning
confidence: 99%
“…Drug absorption mainly relies on solubility and intestinal permeability [8], which is also termed as intestinal absorption [9], since oral drugs must permeate the gastrointestinal barrier before they can be absorbed by the bodies [9]. In fact, solubility and permeability have been adopted by the biopharmaceutics drug disposition classification system (BDDCS), which suggests that the intestinal permeability rate is closely correlated with the extent of metabolism [10] Nevertheless, intestinal permeability is an extremely complicated process since drugs can pass through the intestinal epithelium to enter blood vessel by active transport as well as passive diffusion, as illustrated by Figure 3 of Dahlgren and Lennernäs [11].…”
Section: Introductionmentioning
confidence: 99%
“…98 Cortes-Ciriano used compared the predictive performance of: GBM, partial least squares, RFR and SVR for predicting the potency of a broad range compounds from their physiochemical descriptors. 99 QSAR has also been used to predict plasma protein binding, [100][101][102][103][104] blood brain barrier permeability, [105][106][107] clearance, [108][109][110] volume of distribution, [111][112][113] half-life, 114 bioavailability 115 and toxicity. 116 ML-based QSAR has shown utility in in drug metabolism and PK to predict compound metabolism, 117,118 transporter transcriptional upregulation, 119 uptake, efflux and inhibition.…”
Section: Applications In Qsarmentioning
confidence: 99%
“…One potential approach to overcome those limitations in data availability while simultaneously utilizing the established mechanistic insights in the future are so-called hybrid modeling approaches [78]. This might be realized in data-driven models combined with additional mechanistic input, e.g., meaningful chemical descriptors originating from quantum mechanical simulations or by directly coupling neural networks with mechanistic equations [79]. An AI-based evaluation of data may be applied to tackle complex issues of multi-component systems.…”
Section: Conclusion and Unmet Needsmentioning
confidence: 99%