Physiologically-based pharmacokinetic (PBPK) models simulate the internal dose metrics of chemicals based on species-specific and chemical-specific parameters. The existing quantitative structure-property relationships (QSPRs) allow to estimate the chemical-specific parameters (partition coefficients (PCs) and metabolic constants) but their applicability is limited by their lack of consideration of variability in input parameters and their restricted application domain (i.e., substances containing CH3, CH2, CH, C, C=C, H, Cl, F, Br, benzene ring and H in benzene ring). The objective of this study was to develop new knowledge and tools to increase the applicability domain of QSPR-PBPK models for predicting the inhalation toxicokinetics of organic compounds in humans. First, a unified mechanistic algorithm was developed from existing models to predict macro (tissue and blood) and micro (cell and biological fluid) level PCs of 142 drugs and environmental pollutants on the basis of tissue and blood composition along with physicochemical properties. The resulting algorithm was applied to compute the tissue:blood, tissue:plasma and tissue:air PCs in rat muscle (n = 174), liver (n = 139) and adipose tissue (n = 141) for acidic, neutral, zwitterionic and basic drugs as well as ketones, acetate esters, alcohols, ethers, aliphatic and aromatic hydrocarbons. Then, a quantitative property-property relationship (QPPR) model was developed for the in vivo rat intrinsic clearance (CLint) (calculated as the ratio of the in vivo Vmax (µmol/h/kg bw rat) to the Km (µM)) of CYP2E1 substrates (n = 26) as a function of n-octanol:water PC, blood:water PC, and ionization potential). The predictions of the QPPR as lower and upper bounds of the 95% mean confidence intervals were then integrated within a human PBPK model. Subsequently, the PC algorithm and QPPR for CL int were integrated along with a QSPR model for the hemoglobin:water and oil:air PCs to simulate the inhalation pharmacokinetics and cellular dosimetry of volatile organic compounds (VOCs) (benzene, 1,2-dichloroethane, dichloromethane, m-xylene, toluene, styrene, 1,1,1-trichloroethane and 1,2,4-trimethylbenzene) using a PBPK model for rats. Finally, the variability in the tissue and blood composition parameters of the PC algorithm for rat tissue:air and human blood:air PCs was characterized by performing Markov chain Monte Carlo (MCMC) simulations. The resulting distributions were used for conducting Monte Carlo simulations to predict tissue:blood and blood:air PCs for VOCs. The distributions of PCs, along with distributions of physiological parameters and CYP2E1 content, were then incorporated within a PBPK model, to characterize the human variability of the blood toxicokinetics of four VOCs (benzene, chloroform, styrene and trichloroethylene) using Monte Carlo simulations. Overall, the quantitative approaches for PCs and CLint implemented in this study allow the use of generic molecular descriptors rather than specific molecular fragments to predict the pharmacokinetics of organic substances in humans. In this process, the current study has, for the first time, characterized the variability of the biological input parameters of the PC algorithms to expand the ability of PBPK models to predict the population distributions of the internal dose metrics of organic substances prior to testing in animals or humans.;Keywords : Toxicokinetics, Physiologically based pharmacokinetic modeling, Quantitative structure-property relationship, Quantitative property-property relationship, Monte Carlo simulation, Markov chain Monte Carlo, Partition coefficient, Metabolism, Uncertainty analysis, Cellular dosimetry. |