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Personalizing Polymyxin B Dosing Using an Adaptive Feedback Control Algorithm

Polymyxin B is used as an antibiotic of last resort for patients with multidrug-resistant Gram-negative bacterial infections; however, it carries a significant risk of nephrotoxicity. Herein we present a polymyxin B therapeutic window based on target area under the concentration-time curve (AUC) val...

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Autores principales: Lakota, Elizabeth A., Landersdorfer, Cornelia B., Nation, Roger L., Li, Jian, Kaye, Keith S., Rao, Gauri G., Forrest, Alan
Formato: Online Artículo Texto
Lenguaje:English
Publicado: American Society for Microbiology 2018
Materias:
Acceso en línea:https://www.ncbi.nlm.nih.gov/pmc/articles/PMC6021635/
https://www.ncbi.nlm.nih.gov/pubmed/29760144
http://dx.doi.org/10.1128/AAC.00483-18
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author Lakota, Elizabeth A.
Landersdorfer, Cornelia B.
Nation, Roger L.
Li, Jian
Kaye, Keith S.
Rao, Gauri G.
Forrest, Alan
author_facet Lakota, Elizabeth A.
Landersdorfer, Cornelia B.
Nation, Roger L.
Li, Jian
Kaye, Keith S.
Rao, Gauri G.
Forrest, Alan
author_sort Lakota, Elizabeth A.
collection PubMed
description Polymyxin B is used as an antibiotic of last resort for patients with multidrug-resistant Gram-negative bacterial infections; however, it carries a significant risk of nephrotoxicity. Herein we present a polymyxin B therapeutic window based on target area under the concentration-time curve (AUC) values and an adaptive feedback control algorithm (algorithm) which allows for the personalization of polymyxin B dosing. The upper bound of this therapeutic window was determined through a pharmacometric meta-analysis of polymyxin B nephrotoxicity data, and the lower bound was derived from murine thigh infection pharmacokinetic (PK)/pharmacodynamic (PD) studies. A previously developed polymyxin B population pharmacokinetic model was used as the backbone for the algorithm. Monte Carlo simulations (MCS) were performed to evaluate the performance of the algorithm using different sparse PK sampling strategies. The results of the nephrotoxicity meta-analysis showed that nephrotoxicity rate was significantly correlated with polymyxin B exposure. Based on this analysis and previously reported murine PK/PD studies, the target AUC(0–24) (AUC from 0 to 24 h) window was determined to be 50 to 100 mg · h/liter. MCS showed that with standard polymyxin B dosing without adaptive feedback control, only 71% of simulated subjects achieved AUC values within this window. Using a single PK sample collected at 24 h and the algorithm, personalized dosing regimens could be computed, which resulted in >95% of simulated subjects achieving AUC(0–24) values within the target window. Target attainment further increased when more samples were used. Our algorithm increases the probability of target attainment by using as few as one pharmacokinetic sample and enables precise, personalized dosing in a vulnerable patient population.
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spelling pubmed-60216352018-07-06 Personalizing Polymyxin B Dosing Using an Adaptive Feedback Control Algorithm Lakota, Elizabeth A. Landersdorfer, Cornelia B. Nation, Roger L. Li, Jian Kaye, Keith S. Rao, Gauri G. Forrest, Alan Antimicrob Agents Chemother Clinical Therapeutics Polymyxin B is used as an antibiotic of last resort for patients with multidrug-resistant Gram-negative bacterial infections; however, it carries a significant risk of nephrotoxicity. Herein we present a polymyxin B therapeutic window based on target area under the concentration-time curve (AUC) values and an adaptive feedback control algorithm (algorithm) which allows for the personalization of polymyxin B dosing. The upper bound of this therapeutic window was determined through a pharmacometric meta-analysis of polymyxin B nephrotoxicity data, and the lower bound was derived from murine thigh infection pharmacokinetic (PK)/pharmacodynamic (PD) studies. A previously developed polymyxin B population pharmacokinetic model was used as the backbone for the algorithm. Monte Carlo simulations (MCS) were performed to evaluate the performance of the algorithm using different sparse PK sampling strategies. The results of the nephrotoxicity meta-analysis showed that nephrotoxicity rate was significantly correlated with polymyxin B exposure. Based on this analysis and previously reported murine PK/PD studies, the target AUC(0–24) (AUC from 0 to 24 h) window was determined to be 50 to 100 mg · h/liter. MCS showed that with standard polymyxin B dosing without adaptive feedback control, only 71% of simulated subjects achieved AUC values within this window. Using a single PK sample collected at 24 h and the algorithm, personalized dosing regimens could be computed, which resulted in >95% of simulated subjects achieving AUC(0–24) values within the target window. Target attainment further increased when more samples were used. Our algorithm increases the probability of target attainment by using as few as one pharmacokinetic sample and enables precise, personalized dosing in a vulnerable patient population. American Society for Microbiology 2018-06-26 /pmc/articles/PMC6021635/ /pubmed/29760144 http://dx.doi.org/10.1128/AAC.00483-18 Text en Copyright © 2018 Lakota et al. https://creativecommons.org/licenses/by/4.0/ This is an open-access article distributed under the terms of the Creative Commons Attribution 4.0 International license (https://creativecommons.org/licenses/by/4.0/) .
spellingShingle Clinical Therapeutics
Lakota, Elizabeth A.
Landersdorfer, Cornelia B.
Nation, Roger L.
Li, Jian
Kaye, Keith S.
Rao, Gauri G.
Forrest, Alan
Personalizing Polymyxin B Dosing Using an Adaptive Feedback Control Algorithm
title Personalizing Polymyxin B Dosing Using an Adaptive Feedback Control Algorithm
title_full Personalizing Polymyxin B Dosing Using an Adaptive Feedback Control Algorithm
title_fullStr Personalizing Polymyxin B Dosing Using an Adaptive Feedback Control Algorithm
title_full_unstemmed Personalizing Polymyxin B Dosing Using an Adaptive Feedback Control Algorithm
title_short Personalizing Polymyxin B Dosing Using an Adaptive Feedback Control Algorithm
title_sort personalizing polymyxin b dosing using an adaptive feedback control algorithm
topic Clinical Therapeutics
url https://www.ncbi.nlm.nih.gov/pmc/articles/PMC6021635/
https://www.ncbi.nlm.nih.gov/pubmed/29760144
http://dx.doi.org/10.1128/AAC.00483-18
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