Antibiotic-induced population fluctuations and stochastic clearance of bacteria

Effective antibiotic use that minimizes treatment failures remains a challenge. A better understanding of how bacterial populations respond to antibiotics is necessary. Previous studies of large bacterial populations established the deterministic framework of pharmacodynamics. Here, characterizing t...

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Main Authors: Jessica Coates, Bo Ryoung Park, Dai Le, Emrah Şimşek, Waqas Chaudhry, Minsu Kim
Format: Article
Language:English
Published: eLife Sciences Publications Ltd 2018-03-01
Series:eLife
Subjects:
Online Access:https://elifesciences.org/articles/32976
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spelling doaj-c7f08873e9f349edb811af1223cb9b572021-05-05T15:38:19ZengeLife Sciences Publications LtdeLife2050-084X2018-03-01710.7554/eLife.32976Antibiotic-induced population fluctuations and stochastic clearance of bacteriaJessica Coates0Bo Ryoung Park1Dai Le2Emrah Şimşek3Waqas Chaudhry4Minsu Kim5https://orcid.org/0000-0003-1594-4971Microbiology and Molecular Genetics Graduate Program, Graduate Division of Biological and Biomedical Sciences, Emory University, Atlanta, United StatesDepartment of Physics, Emory University, Atlanta, United StatesDepartment of Physics, Emory University, Atlanta, United StatesDepartment of Physics, Emory University, Atlanta, United StatesDepartment of Physics, Emory University, Atlanta, United StatesMicrobiology and Molecular Genetics Graduate Program, Graduate Division of Biological and Biomedical Sciences, Emory University, Atlanta, United States; Department of Physics, Emory University, Atlanta, United States; Emory Antibiotic Resistance Center, Emory University, Atlanta, United StatesEffective antibiotic use that minimizes treatment failures remains a challenge. A better understanding of how bacterial populations respond to antibiotics is necessary. Previous studies of large bacterial populations established the deterministic framework of pharmacodynamics. Here, characterizing the dynamics of population extinction, we demonstrated the stochastic nature of eradicating bacteria with antibiotics. Antibiotics known to kill bacteria (bactericidal) induced population fluctuations. Thus, at high antibiotic concentrations, the dynamics of bacterial clearance were heterogeneous. At low concentrations, clearance still occurred with a non-zero probability. These striking outcomes of population fluctuations were well captured by our probabilistic model. Our model further suggested a strategy to facilitate eradication by increasing extinction probability. We experimentally tested this prediction for antibiotic-susceptible and clinically-isolated resistant bacteria. This new knowledge exposes fundamental limits in our ability to predict bacterial eradication. Additionally, it demonstrates the potential of using antibiotic concentrations that were previously deemed inefficacious to eradicate bacteria.https://elifesciences.org/articles/32976antibioticspopulation dynamicspopulation fluctuationsstochastic
collection DOAJ
language English
format Article
sources DOAJ
author Jessica Coates
Bo Ryoung Park
Dai Le
Emrah Şimşek
Waqas Chaudhry
Minsu Kim
spellingShingle Jessica Coates
Bo Ryoung Park
Dai Le
Emrah Şimşek
Waqas Chaudhry
Minsu Kim
Antibiotic-induced population fluctuations and stochastic clearance of bacteria
eLife
antibiotics
population dynamics
population fluctuations
stochastic
author_facet Jessica Coates
Bo Ryoung Park
Dai Le
Emrah Şimşek
Waqas Chaudhry
Minsu Kim
author_sort Jessica Coates
title Antibiotic-induced population fluctuations and stochastic clearance of bacteria
title_short Antibiotic-induced population fluctuations and stochastic clearance of bacteria
title_full Antibiotic-induced population fluctuations and stochastic clearance of bacteria
title_fullStr Antibiotic-induced population fluctuations and stochastic clearance of bacteria
title_full_unstemmed Antibiotic-induced population fluctuations and stochastic clearance of bacteria
title_sort antibiotic-induced population fluctuations and stochastic clearance of bacteria
publisher eLife Sciences Publications Ltd
series eLife
issn 2050-084X
publishDate 2018-03-01
description Effective antibiotic use that minimizes treatment failures remains a challenge. A better understanding of how bacterial populations respond to antibiotics is necessary. Previous studies of large bacterial populations established the deterministic framework of pharmacodynamics. Here, characterizing the dynamics of population extinction, we demonstrated the stochastic nature of eradicating bacteria with antibiotics. Antibiotics known to kill bacteria (bactericidal) induced population fluctuations. Thus, at high antibiotic concentrations, the dynamics of bacterial clearance were heterogeneous. At low concentrations, clearance still occurred with a non-zero probability. These striking outcomes of population fluctuations were well captured by our probabilistic model. Our model further suggested a strategy to facilitate eradication by increasing extinction probability. We experimentally tested this prediction for antibiotic-susceptible and clinically-isolated resistant bacteria. This new knowledge exposes fundamental limits in our ability to predict bacterial eradication. Additionally, it demonstrates the potential of using antibiotic concentrations that were previously deemed inefficacious to eradicate bacteria.
topic antibiotics
population dynamics
population fluctuations
stochastic
url https://elifesciences.org/articles/32976
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AT emrahsimsek antibioticinducedpopulationfluctuationsandstochasticclearanceofbacteria
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