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Combining an in silico proarrhythmic risk assay with a tPKPD model to predict QTc interval prolongation in the anesthetized guinea pig assay

Human-based in silico models are emerging as important tools to study the effects of integrating inward and outward ion channel currents to predict clinical proarrhythmic risk. The aims of this study were 2-fold: 1) Evaluate the capacity of an in silico model to predict QTc interval prolongation in...

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Autores principales: Morissette, Pierre, Polak, Sebastian, Chain, Anne, Zhai, Jin, Imredy, John P., Wildey, Mary Jo, Travis, Jeffrey, Fitzgerald, Kevin, Fanelli, Patrick, Passini, Elisa, Rodriguez, Blanca, Sannajust, Frederick, Regan, Christopher
Formato: Online Artículo Texto
Lenguaje:English
Publicado: Academic Press 2020
Materias:
Acceso en línea:https://www.ncbi.nlm.nih.gov/pmc/articles/PMC7322544/
https://www.ncbi.nlm.nih.gov/pubmed/31981640
http://dx.doi.org/10.1016/j.taap.2020.114883
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author Morissette, Pierre
Polak, Sebastian
Chain, Anne
Zhai, Jin
Imredy, John P.
Wildey, Mary Jo
Travis, Jeffrey
Fitzgerald, Kevin
Fanelli, Patrick
Passini, Elisa
Rodriguez, Blanca
Sannajust, Frederick
Regan, Christopher
author_facet Morissette, Pierre
Polak, Sebastian
Chain, Anne
Zhai, Jin
Imredy, John P.
Wildey, Mary Jo
Travis, Jeffrey
Fitzgerald, Kevin
Fanelli, Patrick
Passini, Elisa
Rodriguez, Blanca
Sannajust, Frederick
Regan, Christopher
author_sort Morissette, Pierre
collection PubMed
description Human-based in silico models are emerging as important tools to study the effects of integrating inward and outward ion channel currents to predict clinical proarrhythmic risk. The aims of this study were 2-fold: 1) Evaluate the capacity of an in silico model to predict QTc interval prolongation in the in vivo anesthetized cardiovascular guinea pig (CVGP) assay for new chemical entities (NCEs) and; 2) Determine if a translational pharmacokinetic/pharmacodynamic (tPKPD) model can improve the predictive capacity. In silico simulations for NCEs were performed using a population of human ventricular action potential (AP) models. PatchXpress® (PX) or high throughput screening (HTS) ion channel data from respectively n = 73 and n = 51 NCEs were used as inputs for the in silico population. These NCEs were also tested in the CVGP (n = 73). An M5 pruned decision tree-based regression tPKPD model was used to evaluate the concentration at which an NCE is liable to prolong the QTc interval in the CVGP. In silico results successfully predicted the QTc interval prolongation outcome observed in the CVGP with an accuracy/specificity of 85%/73% and 75%/77%, when using PX and HTS ion channel data, respectively. Considering the tPKPD predicted concentration resulting in QTc prolongation (EC(5%)) increased accuracy/specificity to 97%/95% using PX and 88%/97% when using HTS. Our results support that human-based in silico simulations in combination with tPKPD modeling can provide correlative results with a commonly used early in vivo safety assay, suggesting a path toward more rapid NCE assessment with reduced resources, cycle time, and animal use.
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spelling pubmed-73225442020-06-30 Combining an in silico proarrhythmic risk assay with a tPKPD model to predict QTc interval prolongation in the anesthetized guinea pig assay Morissette, Pierre Polak, Sebastian Chain, Anne Zhai, Jin Imredy, John P. Wildey, Mary Jo Travis, Jeffrey Fitzgerald, Kevin Fanelli, Patrick Passini, Elisa Rodriguez, Blanca Sannajust, Frederick Regan, Christopher Toxicol Appl Pharmacol Article Human-based in silico models are emerging as important tools to study the effects of integrating inward and outward ion channel currents to predict clinical proarrhythmic risk. The aims of this study were 2-fold: 1) Evaluate the capacity of an in silico model to predict QTc interval prolongation in the in vivo anesthetized cardiovascular guinea pig (CVGP) assay for new chemical entities (NCEs) and; 2) Determine if a translational pharmacokinetic/pharmacodynamic (tPKPD) model can improve the predictive capacity. In silico simulations for NCEs were performed using a population of human ventricular action potential (AP) models. PatchXpress® (PX) or high throughput screening (HTS) ion channel data from respectively n = 73 and n = 51 NCEs were used as inputs for the in silico population. These NCEs were also tested in the CVGP (n = 73). An M5 pruned decision tree-based regression tPKPD model was used to evaluate the concentration at which an NCE is liable to prolong the QTc interval in the CVGP. In silico results successfully predicted the QTc interval prolongation outcome observed in the CVGP with an accuracy/specificity of 85%/73% and 75%/77%, when using PX and HTS ion channel data, respectively. Considering the tPKPD predicted concentration resulting in QTc prolongation (EC(5%)) increased accuracy/specificity to 97%/95% using PX and 88%/97% when using HTS. Our results support that human-based in silico simulations in combination with tPKPD modeling can provide correlative results with a commonly used early in vivo safety assay, suggesting a path toward more rapid NCE assessment with reduced resources, cycle time, and animal use. Academic Press 2020-03-01 /pmc/articles/PMC7322544/ /pubmed/31981640 http://dx.doi.org/10.1016/j.taap.2020.114883 Text en © 2020 The Authors http://creativecommons.org/licenses/by/4.0/ This is an open access article under the CC BY license (http://creativecommons.org/licenses/by/4.0/).
spellingShingle Article
Morissette, Pierre
Polak, Sebastian
Chain, Anne
Zhai, Jin
Imredy, John P.
Wildey, Mary Jo
Travis, Jeffrey
Fitzgerald, Kevin
Fanelli, Patrick
Passini, Elisa
Rodriguez, Blanca
Sannajust, Frederick
Regan, Christopher
Combining an in silico proarrhythmic risk assay with a tPKPD model to predict QTc interval prolongation in the anesthetized guinea pig assay
title Combining an in silico proarrhythmic risk assay with a tPKPD model to predict QTc interval prolongation in the anesthetized guinea pig assay
title_full Combining an in silico proarrhythmic risk assay with a tPKPD model to predict QTc interval prolongation in the anesthetized guinea pig assay
title_fullStr Combining an in silico proarrhythmic risk assay with a tPKPD model to predict QTc interval prolongation in the anesthetized guinea pig assay
title_full_unstemmed Combining an in silico proarrhythmic risk assay with a tPKPD model to predict QTc interval prolongation in the anesthetized guinea pig assay
title_short Combining an in silico proarrhythmic risk assay with a tPKPD model to predict QTc interval prolongation in the anesthetized guinea pig assay
title_sort combining an in silico proarrhythmic risk assay with a tpkpd model to predict qtc interval prolongation in the anesthetized guinea pig assay
topic Article
url https://www.ncbi.nlm.nih.gov/pmc/articles/PMC7322544/
https://www.ncbi.nlm.nih.gov/pubmed/31981640
http://dx.doi.org/10.1016/j.taap.2020.114883
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