A hierarchical Bayesian latent class mixture model with censorship for detection of linear temporal changes in antibiotic resistance.

Identifying and controlling the emergence of antimicrobial resistance (AMR) is a high priority for researchers and public health officials. One critical component of this control effort is timely detection of emerging or increasing resistance using surveillance programs. Currently, detection of temp...

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Main Authors: Min Zhang, Chong Wang, Annette O'Connor
Format: Article
Language:English
Published: Public Library of Science (PLoS) 2020-01-01
Series:PLoS ONE
Online Access:https://doi.org/10.1371/journal.pone.0220427
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spelling doaj-da42b9272e4f483983289e5feadcd72f2021-03-03T21:19:39ZengPublic Library of Science (PLoS)PLoS ONE1932-62032020-01-01151e022042710.1371/journal.pone.0220427A hierarchical Bayesian latent class mixture model with censorship for detection of linear temporal changes in antibiotic resistance.Min ZhangChong WangAnnette O'ConnorIdentifying and controlling the emergence of antimicrobial resistance (AMR) is a high priority for researchers and public health officials. One critical component of this control effort is timely detection of emerging or increasing resistance using surveillance programs. Currently, detection of temporal changes in AMR relies mainly on analysis of the proportion of resistant isolates based on the dichotomization of minimum inhibitory concentration (MIC) values. In our work, we developed a hierarchical Bayesian latent class mixture model that incorporates a linear trend for the mean log2MIC of the non-resistant population. By introducing latent variables, our model addressed the challenges associated with the AMR MIC values, compensating for the censored nature of the MIC observations as well as the mixed components indicated by the censored MIC distributions. Inclusion of linear regression with time as a covariate in the hierarchical structure allowed modelling of the linear creep of the mean log2MIC in the non-resistant population. The hierarchical Bayesian model was accurate and robust as assessed in simulation studies. The proposed approach was illustrated using Salmonella enterica I,4,[5],12:i:- treated with chloramphenicol and ceftiofur in human and veterinary samples, revealing some significant linearly increasing patterns from the applications. Implementation of our approach to the analysis of an AMR MIC dataset would provide surveillance programs with a more complete picture of the changes in AMR over years by exploring the patterns of the mean resistance level in the non-resistant population. Our model could therefore serve as a timely indicator of a need for antibiotic intervention before an outbreak of resistance, highlighting the relevance of this work for public health. Currently, however, due to extreme right censoring on the MIC data, this approach has limited utility for tracking changes in the resistant population.https://doi.org/10.1371/journal.pone.0220427
collection DOAJ
language English
format Article
sources DOAJ
author Min Zhang
Chong Wang
Annette O'Connor
spellingShingle Min Zhang
Chong Wang
Annette O'Connor
A hierarchical Bayesian latent class mixture model with censorship for detection of linear temporal changes in antibiotic resistance.
PLoS ONE
author_facet Min Zhang
Chong Wang
Annette O'Connor
author_sort Min Zhang
title A hierarchical Bayesian latent class mixture model with censorship for detection of linear temporal changes in antibiotic resistance.
title_short A hierarchical Bayesian latent class mixture model with censorship for detection of linear temporal changes in antibiotic resistance.
title_full A hierarchical Bayesian latent class mixture model with censorship for detection of linear temporal changes in antibiotic resistance.
title_fullStr A hierarchical Bayesian latent class mixture model with censorship for detection of linear temporal changes in antibiotic resistance.
title_full_unstemmed A hierarchical Bayesian latent class mixture model with censorship for detection of linear temporal changes in antibiotic resistance.
title_sort hierarchical bayesian latent class mixture model with censorship for detection of linear temporal changes in antibiotic resistance.
publisher Public Library of Science (PLoS)
series PLoS ONE
issn 1932-6203
publishDate 2020-01-01
description Identifying and controlling the emergence of antimicrobial resistance (AMR) is a high priority for researchers and public health officials. One critical component of this control effort is timely detection of emerging or increasing resistance using surveillance programs. Currently, detection of temporal changes in AMR relies mainly on analysis of the proportion of resistant isolates based on the dichotomization of minimum inhibitory concentration (MIC) values. In our work, we developed a hierarchical Bayesian latent class mixture model that incorporates a linear trend for the mean log2MIC of the non-resistant population. By introducing latent variables, our model addressed the challenges associated with the AMR MIC values, compensating for the censored nature of the MIC observations as well as the mixed components indicated by the censored MIC distributions. Inclusion of linear regression with time as a covariate in the hierarchical structure allowed modelling of the linear creep of the mean log2MIC in the non-resistant population. The hierarchical Bayesian model was accurate and robust as assessed in simulation studies. The proposed approach was illustrated using Salmonella enterica I,4,[5],12:i:- treated with chloramphenicol and ceftiofur in human and veterinary samples, revealing some significant linearly increasing patterns from the applications. Implementation of our approach to the analysis of an AMR MIC dataset would provide surveillance programs with a more complete picture of the changes in AMR over years by exploring the patterns of the mean resistance level in the non-resistant population. Our model could therefore serve as a timely indicator of a need for antibiotic intervention before an outbreak of resistance, highlighting the relevance of this work for public health. Currently, however, due to extreme right censoring on the MIC data, this approach has limited utility for tracking changes in the resistant population.
url https://doi.org/10.1371/journal.pone.0220427
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