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Modeling Surface Disinfection Needs To Meet Microbial Risk Reduction Targets

Nosocomial viral infections are an important cause of health care-acquired infections where fomites have a role in transmission. Using stochastic modeling to quantify the effects of surface disinfection practices on nosocomial pathogen exposures and infection risk can inform cleaning practices. The...

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Autores principales: Wilson, Amanda M., Reynolds, Kelly A., Sexton, Jonathan D., Canales, Robert A.
Formato: Online Artículo Texto
Lenguaje:English
Publicado: American Society for Microbiology 2018
Materias:
Acceso en línea:https://www.ncbi.nlm.nih.gov/pmc/articles/PMC6121971/
https://www.ncbi.nlm.nih.gov/pubmed/29980557
http://dx.doi.org/10.1128/AEM.00709-18
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author Wilson, Amanda M.
Reynolds, Kelly A.
Sexton, Jonathan D.
Canales, Robert A.
author_facet Wilson, Amanda M.
Reynolds, Kelly A.
Sexton, Jonathan D.
Canales, Robert A.
author_sort Wilson, Amanda M.
collection PubMed
description Nosocomial viral infections are an important cause of health care-acquired infections where fomites have a role in transmission. Using stochastic modeling to quantify the effects of surface disinfection practices on nosocomial pathogen exposures and infection risk can inform cleaning practices. The purpose of this study was to predict the effect of surface disinfection on viral infection risks and to determine needed viral reductions to achieve risk targets. Rotavirus, rhinovirus, and influenza A virus infection risks for two cases were modeled. Case 1 utilized a single fomite contact approach, while case 2 assumed 6 h of contact activities. A 94.1% viral reduction on surfaces and hands was measured following a single cleaning round using an Environmental Protection Agency (EPA)-registered disinfectant in an urgent care facility. This value was used to model the effect of a surface disinfection intervention on infection risk. Risk reductions for other surface-cleaning efficacies were also simulated. Surface reductions required to achieve risk probability targets were estimated. Under case 1 conditions, a 94.1% reduction in virus surface concentration reduced infection risks by 94.1%. Under case 2 conditions, a 94.1% reduction on surfaces resulted in median viral infection risks being reduced by 92.96 to 94.1% and an influenza A virus infection risk below one in a million. Surface concentration in the equations was highly correlated with dose and infection risk outputs. For rotavirus and rhinovirus, a >99.99% viral surface reduction would be needed to achieve a one-in-a-million risk target. This study quantifies reductions of infection risk relative to surface disinfectant use and demonstrates that risk targets for low-infectious-dose organisms may be more challenging to achieve. IMPORTANCE It is known that the use of EPA-registered surface disinfectant sprays can reduce infection risk if used according to the manufacturer's instructions. However, there are currently no standards for health care environments related to contamination levels on surfaces. The significance of this research is in quantifying needed reductions to meet various risk targets using realistic viral concentrations on surfaces for health care environments. This research informs the design of cleaning protocols by demonstrating that multiple applications may be needed to reduce risk and by highlighting a need for more models exploring the relationship among microbial contamination of surfaces, patient and health care worker behaviors, and infection risks.
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spelling pubmed-61219712019-02-28 Modeling Surface Disinfection Needs To Meet Microbial Risk Reduction Targets Wilson, Amanda M. Reynolds, Kelly A. Sexton, Jonathan D. Canales, Robert A. Appl Environ Microbiol Public and Environmental Health Microbiology Nosocomial viral infections are an important cause of health care-acquired infections where fomites have a role in transmission. Using stochastic modeling to quantify the effects of surface disinfection practices on nosocomial pathogen exposures and infection risk can inform cleaning practices. The purpose of this study was to predict the effect of surface disinfection on viral infection risks and to determine needed viral reductions to achieve risk targets. Rotavirus, rhinovirus, and influenza A virus infection risks for two cases were modeled. Case 1 utilized a single fomite contact approach, while case 2 assumed 6 h of contact activities. A 94.1% viral reduction on surfaces and hands was measured following a single cleaning round using an Environmental Protection Agency (EPA)-registered disinfectant in an urgent care facility. This value was used to model the effect of a surface disinfection intervention on infection risk. Risk reductions for other surface-cleaning efficacies were also simulated. Surface reductions required to achieve risk probability targets were estimated. Under case 1 conditions, a 94.1% reduction in virus surface concentration reduced infection risks by 94.1%. Under case 2 conditions, a 94.1% reduction on surfaces resulted in median viral infection risks being reduced by 92.96 to 94.1% and an influenza A virus infection risk below one in a million. Surface concentration in the equations was highly correlated with dose and infection risk outputs. For rotavirus and rhinovirus, a >99.99% viral surface reduction would be needed to achieve a one-in-a-million risk target. This study quantifies reductions of infection risk relative to surface disinfectant use and demonstrates that risk targets for low-infectious-dose organisms may be more challenging to achieve. IMPORTANCE It is known that the use of EPA-registered surface disinfectant sprays can reduce infection risk if used according to the manufacturer's instructions. However, there are currently no standards for health care environments related to contamination levels on surfaces. The significance of this research is in quantifying needed reductions to meet various risk targets using realistic viral concentrations on surfaces for health care environments. This research informs the design of cleaning protocols by demonstrating that multiple applications may be needed to reduce risk and by highlighting a need for more models exploring the relationship among microbial contamination of surfaces, patient and health care worker behaviors, and infection risks. American Society for Microbiology 2018-08-31 /pmc/articles/PMC6121971/ /pubmed/29980557 http://dx.doi.org/10.1128/AEM.00709-18 Text en Copyright © 2018 Wilson 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 Public and Environmental Health Microbiology
Wilson, Amanda M.
Reynolds, Kelly A.
Sexton, Jonathan D.
Canales, Robert A.
Modeling Surface Disinfection Needs To Meet Microbial Risk Reduction Targets
title Modeling Surface Disinfection Needs To Meet Microbial Risk Reduction Targets
title_full Modeling Surface Disinfection Needs To Meet Microbial Risk Reduction Targets
title_fullStr Modeling Surface Disinfection Needs To Meet Microbial Risk Reduction Targets
title_full_unstemmed Modeling Surface Disinfection Needs To Meet Microbial Risk Reduction Targets
title_short Modeling Surface Disinfection Needs To Meet Microbial Risk Reduction Targets
title_sort modeling surface disinfection needs to meet microbial risk reduction targets
topic Public and Environmental Health Microbiology
url https://www.ncbi.nlm.nih.gov/pmc/articles/PMC6121971/
https://www.ncbi.nlm.nih.gov/pubmed/29980557
http://dx.doi.org/10.1128/AEM.00709-18
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