Prediction of oral hepatotoxic dose of natural products derived from traditional Chinese medicines based on SVM classifier and PBPK modeling

The risk of drug-induced liver injury (DILI) poses a major challenge for development of natural products derived from traditional Chinese medicines (NP-TCMs). It is urgent to find a new method for the safety assessment of the NP-TCMs. Recent study has reported an in vitro/in silico method to estimat...

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Veröffentlicht in:Archives of toxicology 2021-05, Vol.95 (5), p.1683-1701
Hauptverfasser: Li, Size, Yu, Yiqun, Bian, Xiaolan, Yao, Li, Li, Min, Lou, Yan-Ru, Yuan, Jing, Lin, Hai-shu, Liu, Lucy, Han, Bing, Xiang, Xiaoqiang
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container_issue 5
container_start_page 1683
container_title Archives of toxicology
container_volume 95
creator Li, Size
Yu, Yiqun
Bian, Xiaolan
Yao, Li
Li, Min
Lou, Yan-Ru
Yuan, Jing
Lin, Hai-shu
Liu, Lucy
Han, Bing
Xiang, Xiaoqiang
description The risk of drug-induced liver injury (DILI) poses a major challenge for development of natural products derived from traditional Chinese medicines (NP-TCMs). It is urgent to find a new method for the safety assessment of the NP-TCMs. Recent study has reported an in vitro/in silico method to estimate the acceptable daily intake of hepatotoxic compounds using support vector machine (SVM) classifier and physiologically based pharmacokinetic (PBPK) modeling. However, this method is not suitable for estimating the dosing schedule of compounds which are administered in multiple daily doses. Thus, in this study, the method mentioned above was in particular optimized, and used to estimate the hepatotoxic plasma concentrations of 17 NP-TCMs. Additionally, the oral dosing schedules of the triptolide, emodin, matrine and oxymatrine were also predicted by the SVM classifier and PBPK modeling. The optimization included that: (1) in vitro cytotoxicity data of 28 training set compounds was optimized using benchmark concentrations (BMC) modeling; (2) AUC of the training set compound was used as the in vivo metric instead of C max to better reflect the total daily exposure of compounds which are administered in multiple daily doses; (3) using the mean AUC in plasma as in vivo metric and BMC value as in vitro metric could achieve the better toxicity separation index (0.962 vs. 0.938); (4) The TSI for C max and BMC values was 0.985 calculated in this study, and the results indicated that BMC modeling improved the separation performance. This optimized in vitro–in vivo extrapolation (IVIVE) workflow could extrapolate in vitro BMC to blood concentrations and the oral dosing schedule which are corresponding to certain risk of hepatotoxicity. The estimated safe dosing schedule of oxymatrine by this optimized method was close to the clinical recommended dosing regimen. The results indicate that the optimized method could be used to predict the dosing schedule of compounds administered in multiple daily doses, and our optimized workflow could be helpful for the safety assessment as well as the research and development on NP-TCMs.
doi_str_mv 10.1007/s00204-021-03023-1
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It is urgent to find a new method for the safety assessment of the NP-TCMs. Recent study has reported an in vitro/in silico method to estimate the acceptable daily intake of hepatotoxic compounds using support vector machine (SVM) classifier and physiologically based pharmacokinetic (PBPK) modeling. However, this method is not suitable for estimating the dosing schedule of compounds which are administered in multiple daily doses. Thus, in this study, the method mentioned above was in particular optimized, and used to estimate the hepatotoxic plasma concentrations of 17 NP-TCMs. Additionally, the oral dosing schedules of the triptolide, emodin, matrine and oxymatrine were also predicted by the SVM classifier and PBPK modeling. The optimization included that: (1) in vitro cytotoxicity data of 28 training set compounds was optimized using benchmark concentrations (BMC) modeling; (2) AUC of the training set compound was used as the in vivo metric instead of C max to better reflect the total daily exposure of compounds which are administered in multiple daily doses; (3) using the mean AUC in plasma as in vivo metric and BMC value as in vitro metric could achieve the better toxicity separation index (0.962 vs. 0.938); (4) The TSI for C max and BMC values was 0.985 calculated in this study, and the results indicated that BMC modeling improved the separation performance. This optimized in vitro–in vivo extrapolation (IVIVE) workflow could extrapolate in vitro BMC to blood concentrations and the oral dosing schedule which are corresponding to certain risk of hepatotoxicity. The estimated safe dosing schedule of oxymatrine by this optimized method was close to the clinical recommended dosing regimen. 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It is urgent to find a new method for the safety assessment of the NP-TCMs. Recent study has reported an in vitro/in silico method to estimate the acceptable daily intake of hepatotoxic compounds using support vector machine (SVM) classifier and physiologically based pharmacokinetic (PBPK) modeling. However, this method is not suitable for estimating the dosing schedule of compounds which are administered in multiple daily doses. Thus, in this study, the method mentioned above was in particular optimized, and used to estimate the hepatotoxic plasma concentrations of 17 NP-TCMs. Additionally, the oral dosing schedules of the triptolide, emodin, matrine and oxymatrine were also predicted by the SVM classifier and PBPK modeling. The optimization included that: (1) in vitro cytotoxicity data of 28 training set compounds was optimized using benchmark concentrations (BMC) modeling; (2) AUC of the training set compound was used as the in vivo metric instead of C max to better reflect the total daily exposure of compounds which are administered in multiple daily doses; (3) using the mean AUC in plasma as in vivo metric and BMC value as in vitro metric could achieve the better toxicity separation index (0.962 vs. 0.938); (4) The TSI for C max and BMC values was 0.985 calculated in this study, and the results indicated that BMC modeling improved the separation performance. This optimized in vitro–in vivo extrapolation (IVIVE) workflow could extrapolate in vitro BMC to blood concentrations and the oral dosing schedule which are corresponding to certain risk of hepatotoxicity. The estimated safe dosing schedule of oxymatrine by this optimized method was close to the clinical recommended dosing regimen. The results indicate that the optimized method could be used to predict the dosing schedule of compounds administered in multiple daily doses, and our optimized workflow could be helpful for the safety assessment as well as the research and development on NP-TCMs.</description><subject>Biocompatibility</subject><subject>Biological Products - toxicity</subject><subject>Biomedical and Life Sciences</subject><subject>Biomedicine</subject><subject>Chemical and Drug Induced Liver Injury</subject><subject>China</subject><subject>Classifiers</subject><subject>Computer Simulation</subject><subject>Cytotoxicity</subject><subject>Dosage</subject><subject>Drug-Related Side Effects and Adverse Reactions</subject><subject>Drugs, Chinese Herbal - pharmacokinetics</subject><subject>Drugs, Chinese Herbal - toxicity</subject><subject>Emodin</subject><subject>Environmental Health</subject><subject>Health risks</subject><subject>Hepatotoxicity</subject><subject>Herbal medicine</subject><subject>Humans</subject><subject>In vitro methods and tests</subject><subject>In Vitro Systems</subject><subject>In Vitro Techniques</subject><subject>Medicine, Chinese Traditional</subject><subject>Modelling</subject><subject>Models, Biological</subject><subject>Natural products</subject><subject>Occupational Medicine/Industrial Medicine</subject><subject>Optimization</subject><subject>Pharmacokinetics</subject><subject>Pharmacology/Toxicology</subject><subject>R&amp;D</subject><subject>Research &amp; 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It is urgent to find a new method for the safety assessment of the NP-TCMs. Recent study has reported an in vitro/in silico method to estimate the acceptable daily intake of hepatotoxic compounds using support vector machine (SVM) classifier and physiologically based pharmacokinetic (PBPK) modeling. However, this method is not suitable for estimating the dosing schedule of compounds which are administered in multiple daily doses. Thus, in this study, the method mentioned above was in particular optimized, and used to estimate the hepatotoxic plasma concentrations of 17 NP-TCMs. Additionally, the oral dosing schedules of the triptolide, emodin, matrine and oxymatrine were also predicted by the SVM classifier and PBPK modeling. The optimization included that: (1) in vitro cytotoxicity data of 28 training set compounds was optimized using benchmark concentrations (BMC) modeling; (2) AUC of the training set compound was used as the in vivo metric instead of C max to better reflect the total daily exposure of compounds which are administered in multiple daily doses; (3) using the mean AUC in plasma as in vivo metric and BMC value as in vitro metric could achieve the better toxicity separation index (0.962 vs. 0.938); (4) The TSI for C max and BMC values was 0.985 calculated in this study, and the results indicated that BMC modeling improved the separation performance. This optimized in vitro–in vivo extrapolation (IVIVE) workflow could extrapolate in vitro BMC to blood concentrations and the oral dosing schedule which are corresponding to certain risk of hepatotoxicity. The estimated safe dosing schedule of oxymatrine by this optimized method was close to the clinical recommended dosing regimen. 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subjects Biocompatibility
Biological Products - toxicity
Biomedical and Life Sciences
Biomedicine
Chemical and Drug Induced Liver Injury
China
Classifiers
Computer Simulation
Cytotoxicity
Dosage
Drug-Related Side Effects and Adverse Reactions
Drugs, Chinese Herbal - pharmacokinetics
Drugs, Chinese Herbal - toxicity
Emodin
Environmental Health
Health risks
Hepatotoxicity
Herbal medicine
Humans
In vitro methods and tests
In Vitro Systems
In Vitro Techniques
Medicine, Chinese Traditional
Modelling
Models, Biological
Natural products
Occupational Medicine/Industrial Medicine
Optimization
Pharmacokinetics
Pharmacology/Toxicology
R&D
Research & development
Safety
Schedules
Separation
Support Vector Machine
Support vector machines
Toxicity
Traditional Chinese medicine
Training
Triptolide
Workflow
title Prediction of oral hepatotoxic dose of natural products derived from traditional Chinese medicines based on SVM classifier and PBPK modeling
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