Cargando…

A Probabilistic Model in Cross-Sectional Studies for Identifying Interactions between Two Persistent Vector-Borne Pathogens in Reservoir Populations

BACKGROUND: In natural populations, individuals are infected more often by several pathogens than by just one. In such a context, pathogens can interact. This interaction could modify the probability of infection by subsequent pathogens. Identifying when pathogen associations correspond to biologica...

Descripción completa

Detalles Bibliográficos
Autores principales: Vaumourin, Elise, Gasqui, Patrick, Buffet, Jean-Philippe, Chapuis, Jean-Louis, Pisanu, Benoît, Ferquel, Elisabeth, Vayssier-Taussat, Muriel, Vourc’h, Gwenaël
Formato: Online Artículo Texto
Lenguaje:English
Publicado: Public Library of Science 2013
Materias:
Acceso en línea:https://www.ncbi.nlm.nih.gov/pmc/articles/PMC3688727/
https://www.ncbi.nlm.nih.gov/pubmed/23840418
http://dx.doi.org/10.1371/journal.pone.0066167
_version_ 1782476250557710336
author Vaumourin, Elise
Gasqui, Patrick
Buffet, Jean-Philippe
Chapuis, Jean-Louis
Pisanu, Benoît
Ferquel, Elisabeth
Vayssier-Taussat, Muriel
Vourc’h, Gwenaël
author_facet Vaumourin, Elise
Gasqui, Patrick
Buffet, Jean-Philippe
Chapuis, Jean-Louis
Pisanu, Benoît
Ferquel, Elisabeth
Vayssier-Taussat, Muriel
Vourc’h, Gwenaël
author_sort Vaumourin, Elise
collection PubMed
description BACKGROUND: In natural populations, individuals are infected more often by several pathogens than by just one. In such a context, pathogens can interact. This interaction could modify the probability of infection by subsequent pathogens. Identifying when pathogen associations correspond to biological interactions is a challenge in cross-sectional studies where the sequence of infection cannot be demonstrated. METHODOLOGY/PRINCIPAL FINDINGS: Here we modelled the probability of an individual being infected by one and then another pathogen, using a probabilistic model and maximum likelihood statistics. Our model was developed to apply to cross-sectional data, vector-borne and persistent pathogens, and to take into account confounding factors. Our modelling approach was more powerful than the commonly used Chi-square test of independence. Our model was applied to detect potential interaction between Borrelia afzelii and Bartonella spp. that infected a bank vole population at 11% and 57% respectively. No interaction was identified. CONCLUSIONS/SIGNIFICANCE: The modelling approach we proposed is powerful and can identify the direction of potential interaction. Such an approach can be adapted to other types of pathogens, such as non-persistents. The model can be used to identify when co-occurrence patterns correspond to pathogen interactions, which will contribute to understanding how organism communities are assembled and structured. In the long term, the model’s capacity to better identify pathogen interactions will improve understanding of infectious risk.
format Online
Article
Text
id pubmed-3688727
institution National Center for Biotechnology Information
language English
publishDate 2013
publisher Public Library of Science
record_format MEDLINE/PubMed
spelling pubmed-36887272013-07-09 A Probabilistic Model in Cross-Sectional Studies for Identifying Interactions between Two Persistent Vector-Borne Pathogens in Reservoir Populations Vaumourin, Elise Gasqui, Patrick Buffet, Jean-Philippe Chapuis, Jean-Louis Pisanu, Benoît Ferquel, Elisabeth Vayssier-Taussat, Muriel Vourc’h, Gwenaël PLoS One Research Article BACKGROUND: In natural populations, individuals are infected more often by several pathogens than by just one. In such a context, pathogens can interact. This interaction could modify the probability of infection by subsequent pathogens. Identifying when pathogen associations correspond to biological interactions is a challenge in cross-sectional studies where the sequence of infection cannot be demonstrated. METHODOLOGY/PRINCIPAL FINDINGS: Here we modelled the probability of an individual being infected by one and then another pathogen, using a probabilistic model and maximum likelihood statistics. Our model was developed to apply to cross-sectional data, vector-borne and persistent pathogens, and to take into account confounding factors. Our modelling approach was more powerful than the commonly used Chi-square test of independence. Our model was applied to detect potential interaction between Borrelia afzelii and Bartonella spp. that infected a bank vole population at 11% and 57% respectively. No interaction was identified. CONCLUSIONS/SIGNIFICANCE: The modelling approach we proposed is powerful and can identify the direction of potential interaction. Such an approach can be adapted to other types of pathogens, such as non-persistents. The model can be used to identify when co-occurrence patterns correspond to pathogen interactions, which will contribute to understanding how organism communities are assembled and structured. In the long term, the model’s capacity to better identify pathogen interactions will improve understanding of infectious risk. Public Library of Science 2013-06-20 /pmc/articles/PMC3688727/ /pubmed/23840418 http://dx.doi.org/10.1371/journal.pone.0066167 Text en © 2013 Vaumourin et al http://creativecommons.org/licenses/by/4.0/ This is an open-access article distributed under the terms of the Creative Commons Attribution License, which permits unrestricted use, distribution, and reproduction in any medium, provided the original author and source are properly credited.
spellingShingle Research Article
Vaumourin, Elise
Gasqui, Patrick
Buffet, Jean-Philippe
Chapuis, Jean-Louis
Pisanu, Benoît
Ferquel, Elisabeth
Vayssier-Taussat, Muriel
Vourc’h, Gwenaël
A Probabilistic Model in Cross-Sectional Studies for Identifying Interactions between Two Persistent Vector-Borne Pathogens in Reservoir Populations
title A Probabilistic Model in Cross-Sectional Studies for Identifying Interactions between Two Persistent Vector-Borne Pathogens in Reservoir Populations
title_full A Probabilistic Model in Cross-Sectional Studies for Identifying Interactions between Two Persistent Vector-Borne Pathogens in Reservoir Populations
title_fullStr A Probabilistic Model in Cross-Sectional Studies for Identifying Interactions between Two Persistent Vector-Borne Pathogens in Reservoir Populations
title_full_unstemmed A Probabilistic Model in Cross-Sectional Studies for Identifying Interactions between Two Persistent Vector-Borne Pathogens in Reservoir Populations
title_short A Probabilistic Model in Cross-Sectional Studies for Identifying Interactions between Two Persistent Vector-Borne Pathogens in Reservoir Populations
title_sort probabilistic model in cross-sectional studies for identifying interactions between two persistent vector-borne pathogens in reservoir populations
topic Research Article
url https://www.ncbi.nlm.nih.gov/pmc/articles/PMC3688727/
https://www.ncbi.nlm.nih.gov/pubmed/23840418
http://dx.doi.org/10.1371/journal.pone.0066167
work_keys_str_mv AT vaumourinelise aprobabilisticmodelincrosssectionalstudiesforidentifyinginteractionsbetweentwopersistentvectorbornepathogensinreservoirpopulations
AT gasquipatrick aprobabilisticmodelincrosssectionalstudiesforidentifyinginteractionsbetweentwopersistentvectorbornepathogensinreservoirpopulations
AT buffetjeanphilippe aprobabilisticmodelincrosssectionalstudiesforidentifyinginteractionsbetweentwopersistentvectorbornepathogensinreservoirpopulations
AT chapuisjeanlouis aprobabilisticmodelincrosssectionalstudiesforidentifyinginteractionsbetweentwopersistentvectorbornepathogensinreservoirpopulations
AT pisanubenoit aprobabilisticmodelincrosssectionalstudiesforidentifyinginteractionsbetweentwopersistentvectorbornepathogensinreservoirpopulations
AT ferquelelisabeth aprobabilisticmodelincrosssectionalstudiesforidentifyinginteractionsbetweentwopersistentvectorbornepathogensinreservoirpopulations
AT vayssiertaussatmuriel aprobabilisticmodelincrosssectionalstudiesforidentifyinginteractionsbetweentwopersistentvectorbornepathogensinreservoirpopulations
AT vourchgwenael aprobabilisticmodelincrosssectionalstudiesforidentifyinginteractionsbetweentwopersistentvectorbornepathogensinreservoirpopulations
AT vaumourinelise probabilisticmodelincrosssectionalstudiesforidentifyinginteractionsbetweentwopersistentvectorbornepathogensinreservoirpopulations
AT gasquipatrick probabilisticmodelincrosssectionalstudiesforidentifyinginteractionsbetweentwopersistentvectorbornepathogensinreservoirpopulations
AT buffetjeanphilippe probabilisticmodelincrosssectionalstudiesforidentifyinginteractionsbetweentwopersistentvectorbornepathogensinreservoirpopulations
AT chapuisjeanlouis probabilisticmodelincrosssectionalstudiesforidentifyinginteractionsbetweentwopersistentvectorbornepathogensinreservoirpopulations
AT pisanubenoit probabilisticmodelincrosssectionalstudiesforidentifyinginteractionsbetweentwopersistentvectorbornepathogensinreservoirpopulations
AT ferquelelisabeth probabilisticmodelincrosssectionalstudiesforidentifyinginteractionsbetweentwopersistentvectorbornepathogensinreservoirpopulations
AT vayssiertaussatmuriel probabilisticmodelincrosssectionalstudiesforidentifyinginteractionsbetweentwopersistentvectorbornepathogensinreservoirpopulations
AT vourchgwenael probabilisticmodelincrosssectionalstudiesforidentifyinginteractionsbetweentwopersistentvectorbornepathogensinreservoirpopulations