Screening oral drugs for their interactions with the intestinal transportome via porcine tissue explants and machine learning.
In vitro systems that accurately model in vivo conditions in the gastrointestinal tract may aid the development of oral drugs with greater bioavailability. Here we show that the interaction profiles between drugs and intestinal drug transporters can be obtained by modulating transporter expression in intact porcine tissue explants via the ultrasound-mediated delivery of small interfering RNAs and that the interaction profiles can be classified via a random forest model trained on the drug-transporter relationships. For 24 drugs with well-characterized drug-transporter interactions, the model achieved 100% concordance. For 28 clinical drugs and 22 investigational drugs, the model identified 58 unknown drug-transporter interactions, 7 of which (out of 8 tested) corresponded to drug-pharmacokinetic measurements in mice. We also validated the model's predictions for interactions between doxycycline and four drugs (warfarin, tacrolimus, digoxin and levetiracetam) through an ex vivo perfusion assay and the analysis of pharmacologic data from patients. Screening drugs for their interactions with the intestinal transportome via tissue explants and machine learning may help to expedite drug development and the evaluation of drug safety.
Duke Scholars
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Related Subject Headings
- Swine
- Pharmaceutical Preparations
- Mice
- Machine Learning
- Intestines
- Humans
- Drug Interactions
- Biological Availability
- Animals
- 4003 Biomedical engineering
Citation
Published In
DOI
EISSN
ISSN
Publication Date
Volume
Issue
Start / End Page
Related Subject Headings
- Swine
- Pharmaceutical Preparations
- Mice
- Machine Learning
- Intestines
- Humans
- Drug Interactions
- Biological Availability
- Animals
- 4003 Biomedical engineering