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Use of Network Analysis and Spread Models to Target Control Actions for Bovine Tuberculosis in a State from Brazil

Livestock movements create complex dynamic interactions among premises that can be represented, interpreted, and used for epidemiological purposes. These movements are a very important part of the production chain but may also contribute to the spread of infectious diseases through the transfer of i...

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Autores principales: Cardenas, Nicolas Cespedes, Pozo, Pilar, Lopes, Francisco Paulo Nunes, Grisi-Filho, José H. H., Alvarez, Julio
Formato: Online Artículo Texto
Lenguaje:English
Publicado: MDPI 2021
Materias:
Acceso en línea:https://www.ncbi.nlm.nih.gov/pmc/articles/PMC7912437/
https://www.ncbi.nlm.nih.gov/pubmed/33499225
http://dx.doi.org/10.3390/microorganisms9020227
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author Cardenas, Nicolas Cespedes
Pozo, Pilar
Lopes, Francisco Paulo Nunes
Grisi-Filho, José H. H.
Alvarez, Julio
author_facet Cardenas, Nicolas Cespedes
Pozo, Pilar
Lopes, Francisco Paulo Nunes
Grisi-Filho, José H. H.
Alvarez, Julio
author_sort Cardenas, Nicolas Cespedes
collection PubMed
description Livestock movements create complex dynamic interactions among premises that can be represented, interpreted, and used for epidemiological purposes. These movements are a very important part of the production chain but may also contribute to the spread of infectious diseases through the transfer of infected animals over large distances. Social network analysis (SNA) can be used to characterize cattle trade patterns and to identify highly connected premises that may act as hubs in the movement network, which could be subjected to targeted control measures in order to reduce the transmission of communicable diseases such as bovine tuberculosis (TB). Here, we analyzed data on cattle movement and slaughterhouse surveillance for detection of TB-like lesions (TLL) over the 2016–2018 period in the state of Rio Grande do Sul (RS) in Brazil with the following aims: (i) to characterize cattle trade describing the static full, yearly, and monthly snapshots of the network contact trade, (ii) to identify clusters in the space and contact networks of premises from which animals with TLL originated, and (iii) to evaluate the potential of targeted control actions to decrease TB spread in the cattle population of RS using a stochastic metapopulation disease transmission model that simulated within-farm and between-farm disease spread. We found heterogeneous densities of premises and animals in the study area. The analysis of the contact network revealed a highly connected (~94%) trade network, with strong temporal trends, especially for May and November. The TLL cases were significantly clustered in space and in the contact network, suggesting the potential for both local (e.g., fence-to-fence) and movement-mediated TB transmission. According to the disease spread model, removing the top 7% connected farms based on degree and betweenness could reduce the total number of infected farms over three years by >50%. In conclusion, the characterization of the cattle network suggests that highly connected farms may play a role in TB dissemination, although being close to infected farms was also identified as a risk factor for having animals with TLL. Surveillance and control actions based on degree and betweenness could be useful to break the transmission cycle between premises in RS.
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spelling pubmed-79124372021-02-28 Use of Network Analysis and Spread Models to Target Control Actions for Bovine Tuberculosis in a State from Brazil Cardenas, Nicolas Cespedes Pozo, Pilar Lopes, Francisco Paulo Nunes Grisi-Filho, José H. H. Alvarez, Julio Microorganisms Article Livestock movements create complex dynamic interactions among premises that can be represented, interpreted, and used for epidemiological purposes. These movements are a very important part of the production chain but may also contribute to the spread of infectious diseases through the transfer of infected animals over large distances. Social network analysis (SNA) can be used to characterize cattle trade patterns and to identify highly connected premises that may act as hubs in the movement network, which could be subjected to targeted control measures in order to reduce the transmission of communicable diseases such as bovine tuberculosis (TB). Here, we analyzed data on cattle movement and slaughterhouse surveillance for detection of TB-like lesions (TLL) over the 2016–2018 period in the state of Rio Grande do Sul (RS) in Brazil with the following aims: (i) to characterize cattle trade describing the static full, yearly, and monthly snapshots of the network contact trade, (ii) to identify clusters in the space and contact networks of premises from which animals with TLL originated, and (iii) to evaluate the potential of targeted control actions to decrease TB spread in the cattle population of RS using a stochastic metapopulation disease transmission model that simulated within-farm and between-farm disease spread. We found heterogeneous densities of premises and animals in the study area. The analysis of the contact network revealed a highly connected (~94%) trade network, with strong temporal trends, especially for May and November. The TLL cases were significantly clustered in space and in the contact network, suggesting the potential for both local (e.g., fence-to-fence) and movement-mediated TB transmission. According to the disease spread model, removing the top 7% connected farms based on degree and betweenness could reduce the total number of infected farms over three years by >50%. In conclusion, the characterization of the cattle network suggests that highly connected farms may play a role in TB dissemination, although being close to infected farms was also identified as a risk factor for having animals with TLL. Surveillance and control actions based on degree and betweenness could be useful to break the transmission cycle between premises in RS. MDPI 2021-01-22 /pmc/articles/PMC7912437/ /pubmed/33499225 http://dx.doi.org/10.3390/microorganisms9020227 Text en © 2021 by the authors. Licensee MDPI, Basel, Switzerland. This article is an open access article distributed under the terms and conditions of the Creative Commons Attribution (CC BY) license (http://creativecommons.org/licenses/by/4.0/).
spellingShingle Article
Cardenas, Nicolas Cespedes
Pozo, Pilar
Lopes, Francisco Paulo Nunes
Grisi-Filho, José H. H.
Alvarez, Julio
Use of Network Analysis and Spread Models to Target Control Actions for Bovine Tuberculosis in a State from Brazil
title Use of Network Analysis and Spread Models to Target Control Actions for Bovine Tuberculosis in a State from Brazil
title_full Use of Network Analysis and Spread Models to Target Control Actions for Bovine Tuberculosis in a State from Brazil
title_fullStr Use of Network Analysis and Spread Models to Target Control Actions for Bovine Tuberculosis in a State from Brazil
title_full_unstemmed Use of Network Analysis and Spread Models to Target Control Actions for Bovine Tuberculosis in a State from Brazil
title_short Use of Network Analysis and Spread Models to Target Control Actions for Bovine Tuberculosis in a State from Brazil
title_sort use of network analysis and spread models to target control actions for bovine tuberculosis in a state from brazil
topic Article
url https://www.ncbi.nlm.nih.gov/pmc/articles/PMC7912437/
https://www.ncbi.nlm.nih.gov/pubmed/33499225
http://dx.doi.org/10.3390/microorganisms9020227
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