Machine learning and artificial intelligence in physiologically based pharmacokinetic modeling

Author:

Chou Wei-Chun12ORCID,Lin Zhoumeng12ORCID

Affiliation:

1. Department of Environmental and Global Health, College of Public Health and Health Professions, University of Florida , Gainesville, FL 32610, USA

2. Center for Environmental and Human Toxicology, University of Florida , Gainesville, FL 32608, USA

Abstract

Abstract Physiologically based pharmacokinetic (PBPK) models are useful tools in drug development and risk assessment of environmental chemicals. PBPK model development requires the collection of species-specific physiological, and chemical-specific absorption, distribution, metabolism, and excretion (ADME) parameters, which can be a time-consuming and expensive process. This raises a need to create computational models capable of predicting input parameter values for PBPK models, especially for new compounds. In this review, we summarize an emerging paradigm for integrating PBPK modeling with machine learning (ML) or artificial intelligence (AI)-based computational methods. This paradigm includes 3 steps (1) obtain time-concentration PK data and/or ADME parameters from publicly available databases, (2) develop ML/AI-based approaches to predict ADME parameters, and (3) incorporate the ML/AI models into PBPK models to predict PK summary statistics (eg, area under the curve and maximum plasma concentration). We also discuss a neural network architecture “neural ordinary differential equation (Neural-ODE)” that is capable of providing better predictive capabilities than other ML methods when used to directly predict time-series PK profiles. In order to support applications of ML/AI methods for PBPK model development, several challenges should be addressed (1) as more data become available, it is important to expand the training set by including the structural diversity of compounds to improve the prediction accuracy of ML/AI models; (2) due to the black box nature of many ML models, lack of sufficient interpretability is a limitation; (3) Neural-ODE has great potential to be used to generate time-series PK profiles for new compounds with limited ADME information, but its application remains to be explored. Despite existing challenges, ML/AI approaches will continue to facilitate the efficient development of robust PBPK models for a large number of chemicals.

Funder

The United States Department of Agriculture

National Institute of Food and Agriculture

Food Animal Residue Avoidance Databank

United States National Institutes of Health

NIH

National Institute of Biomedical Imaging and Bioengineering

NIBIB

Research Grant Program

New Faculty Start-up Funds from the University of Florida

Publisher

Oxford University Press (OUP)

Subject

Toxicology

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