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Integrating serological and genetic data to quantify cross-species transmission: brucellosis as a case study

Epidemiological data are often fragmented, partial, and/or ambiguous and unable to yield the desired level of understanding of infectious disease dynamics to adequately inform control measures. Here, we show how the information contained in widely available serology data can be enhanced by integrati...

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Autores principales: VIANA, MAFALDA, SHIRIMA, GABRIEL M., JOHN, KUNDA S., FITZPATRICK, JULIE, KAZWALA, RUDOVICK R., BUZA, JORAM J., CLEAVELAND, SARAH, HAYDON, DANIEL T., HALLIDAY, JO E. B.
Formato: Online Artículo Texto
Lenguaje:English
Publicado: Cambridge University Press 2016
Materias:
Acceso en línea:https://www.ncbi.nlm.nih.gov/pmc/articles/PMC4873909/
https://www.ncbi.nlm.nih.gov/pubmed/26935267
http://dx.doi.org/10.1017/S0031182016000044
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author VIANA, MAFALDA
SHIRIMA, GABRIEL M.
JOHN, KUNDA S.
FITZPATRICK, JULIE
KAZWALA, RUDOVICK R.
BUZA, JORAM J.
CLEAVELAND, SARAH
HAYDON, DANIEL T.
HALLIDAY, JO E. B.
author_facet VIANA, MAFALDA
SHIRIMA, GABRIEL M.
JOHN, KUNDA S.
FITZPATRICK, JULIE
KAZWALA, RUDOVICK R.
BUZA, JORAM J.
CLEAVELAND, SARAH
HAYDON, DANIEL T.
HALLIDAY, JO E. B.
author_sort VIANA, MAFALDA
collection PubMed
description Epidemiological data are often fragmented, partial, and/or ambiguous and unable to yield the desired level of understanding of infectious disease dynamics to adequately inform control measures. Here, we show how the information contained in widely available serology data can be enhanced by integration with less common type-specific data, to improve the understanding of the transmission dynamics of complex multi-species pathogens and host communities. Using brucellosis in northern Tanzania as a case study, we developed a latent process model based on serology data obtained from the field, to reconstruct Brucella transmission dynamics. We were able to identify sheep and goats as a more likely source of human and animal infection than cattle; however, the highly cross-reactive nature of Brucella spp. meant that it was not possible to determine which Brucella species (B. abortus or B. melitensis) is responsible for human infection. We extended our model to integrate simulated serology and typing data, and show that although serology alone can identify the host source of human infection under certain restrictive conditions, the integration of even small amounts (5%) of typing data can improve understanding of complex epidemiological dynamics. We show that data integration will often be essential when more than one pathogen is present and when the distinction between exposed and infectious individuals is not clear from serology data. With increasing epidemiological complexity, serology data become less informative. However, we show how this weakness can be mitigated by integrating such data with typing data, thereby enhancing the inference from these data and improving understanding of the underlying dynamics.
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spelling pubmed-48739092016-05-27 Integrating serological and genetic data to quantify cross-species transmission: brucellosis as a case study VIANA, MAFALDA SHIRIMA, GABRIEL M. JOHN, KUNDA S. FITZPATRICK, JULIE KAZWALA, RUDOVICK R. BUZA, JORAM J. CLEAVELAND, SARAH HAYDON, DANIEL T. HALLIDAY, JO E. B. Parasitology Special Issue Article Epidemiological data are often fragmented, partial, and/or ambiguous and unable to yield the desired level of understanding of infectious disease dynamics to adequately inform control measures. Here, we show how the information contained in widely available serology data can be enhanced by integration with less common type-specific data, to improve the understanding of the transmission dynamics of complex multi-species pathogens and host communities. Using brucellosis in northern Tanzania as a case study, we developed a latent process model based on serology data obtained from the field, to reconstruct Brucella transmission dynamics. We were able to identify sheep and goats as a more likely source of human and animal infection than cattle; however, the highly cross-reactive nature of Brucella spp. meant that it was not possible to determine which Brucella species (B. abortus or B. melitensis) is responsible for human infection. We extended our model to integrate simulated serology and typing data, and show that although serology alone can identify the host source of human infection under certain restrictive conditions, the integration of even small amounts (5%) of typing data can improve understanding of complex epidemiological dynamics. We show that data integration will often be essential when more than one pathogen is present and when the distinction between exposed and infectious individuals is not clear from serology data. With increasing epidemiological complexity, serology data become less informative. However, we show how this weakness can be mitigated by integrating such data with typing data, thereby enhancing the inference from these data and improving understanding of the underlying dynamics. Cambridge University Press 2016-06 2016-03-03 /pmc/articles/PMC4873909/ /pubmed/26935267 http://dx.doi.org/10.1017/S0031182016000044 Text en © Cambridge University Press 2016 http://creativecommons.org/licenses/by/4.0/ This is an Open Access article, distributed under the terms of the Creative Commons Attribution licence (http://creativecommons.org/licenses/by/4.0/), which permits unrestricted re-use, distribution, and reproduction in any medium, provided the original work is properly cited.
spellingShingle Special Issue Article
VIANA, MAFALDA
SHIRIMA, GABRIEL M.
JOHN, KUNDA S.
FITZPATRICK, JULIE
KAZWALA, RUDOVICK R.
BUZA, JORAM J.
CLEAVELAND, SARAH
HAYDON, DANIEL T.
HALLIDAY, JO E. B.
Integrating serological and genetic data to quantify cross-species transmission: brucellosis as a case study
title Integrating serological and genetic data to quantify cross-species transmission: brucellosis as a case study
title_full Integrating serological and genetic data to quantify cross-species transmission: brucellosis as a case study
title_fullStr Integrating serological and genetic data to quantify cross-species transmission: brucellosis as a case study
title_full_unstemmed Integrating serological and genetic data to quantify cross-species transmission: brucellosis as a case study
title_short Integrating serological and genetic data to quantify cross-species transmission: brucellosis as a case study
title_sort integrating serological and genetic data to quantify cross-species transmission: brucellosis as a case study
topic Special Issue Article
url https://www.ncbi.nlm.nih.gov/pmc/articles/PMC4873909/
https://www.ncbi.nlm.nih.gov/pubmed/26935267
http://dx.doi.org/10.1017/S0031182016000044
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