AUTHOR=Mavroudis Panteleimon D. , Teutonico Donato , Abos Alexandra , Pillai Nikhil TITLE=Application of machine learning in combination with mechanistic modeling to predict plasma exposure of small molecules JOURNAL=Frontiers in Systems Biology VOLUME=3 YEAR=2023 URL=https://www.frontiersin.org/journals/systems-biology/articles/10.3389/fsysb.2023.1180948 DOI=10.3389/fsysb.2023.1180948 ISSN=2674-0702 ABSTRACT=
Prediction of a new molecule’s exposure in plasma is a critical first step toward understanding its efficacy/toxicity profile and concluding whether it is a possible first-in-class, best-in-class candidate. For this prediction, traditional pharmacometrics use a variety of scaling methods that are heavily based on pre-clinical pharmacokinetic (PK) data. We here propose a novel framework based on which preclinical exposure prediction is performed by applying machine learning (ML) in tandem with mechanism-based modeling. In our proposed method, a relationship is initially established between molecular structure and physicochemical (PC)/PK properties using ML, and then the ML-driven PC/PK parameters are used as input to mechanistic models that ultimately predict the plasma exposure of new candidates. To understand the feasibility of our proposed framework, we evaluated a number of mechanistic models (1-compartment, physiologically based pharmacokinetic (PBPK)), PBPK distribution models (Berezhkovskiy, PK-Sim standard, Poulin and Theil, Rodgers and Rowland, and Schmidt), and PBPK parameterizations (using