CE18 - Innovation biomédicale

Artificial intelligence-driven approach to understand and predict drug-drug interactions related to ABC transporters and metabolizing enzymes – MetABC

Submission summary

Drug efficacy/toxicity prediction is a major concern in modern research and development. To prevent adverse drug reactions, in silico approaches assessing ADMET (absorption, distribution, metabolism, excretion, toxicity) have become an integral part of early drug discovery. We will develop an original Artificial Intelligence (AI) approach for prediction of ADMET related to chemicals/drugs interactions with major ABC transporters and drug metabolizing enzymes (DME). We will focus on the two ABC transporters, P-glycoprotein (P-gp, ABCB1) and BCRP (ABCG2), and two DME, cytochrome P450 and UGT, key for drug-drug interactions. Conformational space of these proteins will be explored using molecular modeling simulations. Our approach will combine structure-based and machine learning approaches as well as pharmacogenetics considerations. We will employ the developed AI approach to identify new drugs substrates and/or inhibitors of P-gp, BCRP and UGT, that will be experimentally validated using in vitro and PBPK methods. Pharmacogenetics studies will be undertaken in order to understand and predict structural bases involved in drug inefficacy/toxicity due to the studied proteins’ polymorphisms. To the best of our knowledge, this will be the first AI approach for prediction of drug-drug interactions specifically related to ABC transporters and DMEs. Finally, we will implement the developed AI methodology in a new software for the scientific community.

Project coordination

Maria Miteva (CHIMIE MEDICINALE ET RECHERCHE TRANSLATIONNELLE)

The author of this summary is the project coordinator, who is responsible for the content of this summary. The ANR declines any responsibility as for its contents.

Partner

CMRT CHIMIE MEDICINALE ET RECHERCHE TRANSLATIONNELLE
OPTeN OPTIMISATION THÉRAPEUTIQUE EN NEUROPSYCHOPHARMACOLOGIE

Help of the ANR 428,959 euros
Beginning and duration of the scientific project: October 2022 - 48 Months

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