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Predicting pharmacodynamic effects through early drug discovery with artificial intelligence-physiologically based pharmacokinetic (AI-PBPK) modelling

Affiliation
Yinghan Pharmaceutical Technology (Shanghai) Co., Ltd. ,Shanghai ,China
Wu, Keheng;
Affiliation
Yinghan Pharmaceutical Technology (Shanghai) Co., Ltd. ,Shanghai ,China
Li, Xue;
Affiliation
Yinghan Pharmaceutical Technology (Shanghai) Co., Ltd. ,Shanghai ,China
Zhou, Zhou;
Affiliation
Yinghan Pharmaceutical Technology (Shanghai) Co., Ltd. ,Shanghai ,China
Zhao, Youni;
Affiliation
Jiangsu Carephar Pharmaceutical Co., Ltd. ,Nanjing ,China
Su, Mei;
Affiliation
Yinghan Pharmaceutical Technology (Shanghai) Co., Ltd. ,Shanghai ,China
Cheng, Zhuo;
Affiliation
Yinghan Pharmaceutical Technology (Shanghai) Co., Ltd. ,Shanghai ,China
Wu, Xinyi;
Affiliation
Yinghan Pharmaceutical Technology (Shanghai) Co., Ltd. ,Shanghai ,China
Huang, Zhijun;
Affiliation
School of Chemical Engineering and Pharmacy ,Wuhan Institute of Technology ,Wuhan ,China
Jin, Xiong;
Affiliation
School of Chemical Engineering and Pharmacy ,Wuhan Institute of Technology ,Wuhan ,China
Li, Jingxi;
Affiliation
School of Chemical Engineering and Pharmacy ,Wuhan Institute of Technology ,Wuhan ,China
Zhang, Mengjun;
Affiliation
Yinghan Pharmaceutical Technology (Shanghai) Co., Ltd. ,Shanghai ,China
Liu, Jack;
Affiliation
School of Chemical Engineering and Pharmacy ,Wuhan Institute of Technology ,Wuhan ,China
Liu, Bo

A mechanism-based pharmacokinetic/pharmacodynamic (PK/PD) model links the concentration-time profile of a drug with its therapeutic effects based on the underlying biological or physiological processes. Clinical endpoints play a pivotal role in drug development. Despite the substantial time and effort invested in screening drugs for favourable pharmacokinetic (PK) properties, they may not consistently yield optimal clinical outcomes. Furthermore, in the virtual compound screening phase, researchers cannot observe clinical outcomes in humans directly. These uncertainties prolong the process of drug development. As incorporation of Artificial Intelligence (AI) into the physiologically based pharmacokinetic/pharmacodynamic (PBPK) model can assist in forecasting pharmacodynamic (PD) effects within the human body, we introduce a methodology for utilizing the AI-PBPK platform to predict the PK and PD outcomes of target compounds in the early drug discovery stage. In this integrated platform, machine learning is used to predict the parameters for the model, and the mechanism-based PD model is used to predict the PD outcome through the PK results. This platform enables researchers to align the PK profile of a drug with desired PD effects at the early drug discovery stage. Case studies are presented to assess and compare five potassium-competitive acid blocker (P-CAB) compounds, after calibration and verification using vonoprazan and revaprazan.

Graphical Abstract Main steps used to predict PK and PD outcomes of the compounds. (Step 1) Use different AI related simulations to predict the compound’s ADME and physiochemical properties. (Step 2) Predict PK outcomes using the PBPK model. (Step 3) PD models are used to predict how changes in drug concentrations affect gastric acid secretion and gastric pH. E/E0 is the relative activity of H + /K + ATPase by drug; k sec is the secretion rate constants for intra-gastric H + concentration; k out is the elimination rate constant for intra-gastric H + concentration; H obs is the observed concentration of H + ; I (Inhibition) is the current antisecretory effect (or current pH level) of the drug; I max is the maximum possible effect (or maximum pH level) of the drug can achieve; The term (I max -I) represents how far the current effect is from its maximum potential.

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License Holder: Copyright © 2024 Wu, Li, Zhou, Zhao, Su, Cheng, Wu, Huang, Jin, Li, Zhang, Liu and Liu.

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