To Be or Not to Be Associated: Power study of four statistical modeling approaches to identify parasite associations in cross-sectional studies

A growing number of studies are reporting simultaneous infections by parasites in many different hosts. The detection of whether these parasites are significantly associated is important in medicine and epidemiology. Numerous approaches to detect associations are available, but only a few provide st...

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Main Authors: Elise eVaumourin, Gwenaël eVourc’h, Sandra eTelfer, Xavier eLambin, Diaeldin Ahmed Salih, Ulrike eSeitzer, Serge eMorand, Nathalie eCharbonnel, Muriel eVayssier-Taussat, Patrick eGasqui
Format: Article
Language:English
Published: Frontiers Media S.A. 2014-05-01
Series:Frontiers in Cellular and Infection Microbiology
Subjects:
Online Access:http://journal.frontiersin.org/Journal/10.3389/fcimb.2014.00062/full
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spelling doaj-0f2087071a484c4ea6305be355df873e2020-11-24T23:22:32ZengFrontiers Media S.A.Frontiers in Cellular and Infection Microbiology2235-29882014-05-01410.3389/fcimb.2014.0006286320To Be or Not to Be Associated: Power study of four statistical modeling approaches to identify parasite associations in cross-sectional studiesElise eVaumourin0Gwenaël eVourc’h1Sandra eTelfer2Xavier eLambin3Diaeldin Ahmed Salih4Ulrike eSeitzer5Serge eMorand6Serge eMorand7Nathalie eCharbonnel8Muriel eVayssier-Taussat9Patrick eGasqui10INRAINRAUniversity of AberdeenUniversity of AberdeenVeterinary Research InstituteDivision of Veterinary Infection Biology and ImmunologyUniversity of Montpellier 2CIRADINRAINRA-Anses-ENVAINRAA growing number of studies are reporting simultaneous infections by parasites in many different hosts. The detection of whether these parasites are significantly associated is important in medicine and epidemiology. Numerous approaches to detect associations are available, but only a few provide statistical tests. Furthermore, they generally test for an overall detection of association and do not identify which parasite is associated with which other one. Here, we developed a new approach, the association screening approach, to detect the overall and the detail of multi-parasite associations. We studied the power of this new approach and of three other known ones (i.e. the generalized chi-square, the network and the multinomial GLM approaches) to identify parasite associations either due to parasite interactions or to confounding factors. We applied these four approaches to detect associations within two populations of multi-infected hosts: 1) rodents infected with Bartonella sp., Babesia microti and Anaplasma phagocytophilum and 2) bovine population infected with Theileria sp. and Babesia sp.. We found that the best power is obtained with the screening model and the generalized chi-square test. The differentiation between associations, which are due to confounding factors and parasite interactions was not possible. The screening approach significantly identified associations between Bartonella doshiae and B. microti, and between T. parva, T. mutans and T. velifera. Thus, the screening approach was relevant to test the overall presence of parasite associations and identify the parasite combinations that are significantly over- or under-represented. Unravelling whether the associations are due to real biological interactions or confounding factors should be further investigated. Nevertheless, in the age of genomics and the advent of new technologies, it is a considerable asset to speed up researches focusing on the mechanisms driving interactions between parasites.http://journal.frontiersin.org/Journal/10.3389/fcimb.2014.00062/fullscreeningmodelinginteractionsnetwork modelassociationsGLM approach
collection DOAJ
language English
format Article
sources DOAJ
author Elise eVaumourin
Gwenaël eVourc’h
Sandra eTelfer
Xavier eLambin
Diaeldin Ahmed Salih
Ulrike eSeitzer
Serge eMorand
Serge eMorand
Nathalie eCharbonnel
Muriel eVayssier-Taussat
Patrick eGasqui
spellingShingle Elise eVaumourin
Gwenaël eVourc’h
Sandra eTelfer
Xavier eLambin
Diaeldin Ahmed Salih
Ulrike eSeitzer
Serge eMorand
Serge eMorand
Nathalie eCharbonnel
Muriel eVayssier-Taussat
Patrick eGasqui
To Be or Not to Be Associated: Power study of four statistical modeling approaches to identify parasite associations in cross-sectional studies
Frontiers in Cellular and Infection Microbiology
screening
modeling
interactions
network model
associations
GLM approach
author_facet Elise eVaumourin
Gwenaël eVourc’h
Sandra eTelfer
Xavier eLambin
Diaeldin Ahmed Salih
Ulrike eSeitzer
Serge eMorand
Serge eMorand
Nathalie eCharbonnel
Muriel eVayssier-Taussat
Patrick eGasqui
author_sort Elise eVaumourin
title To Be or Not to Be Associated: Power study of four statistical modeling approaches to identify parasite associations in cross-sectional studies
title_short To Be or Not to Be Associated: Power study of four statistical modeling approaches to identify parasite associations in cross-sectional studies
title_full To Be or Not to Be Associated: Power study of four statistical modeling approaches to identify parasite associations in cross-sectional studies
title_fullStr To Be or Not to Be Associated: Power study of four statistical modeling approaches to identify parasite associations in cross-sectional studies
title_full_unstemmed To Be or Not to Be Associated: Power study of four statistical modeling approaches to identify parasite associations in cross-sectional studies
title_sort to be or not to be associated: power study of four statistical modeling approaches to identify parasite associations in cross-sectional studies
publisher Frontiers Media S.A.
series Frontiers in Cellular and Infection Microbiology
issn 2235-2988
publishDate 2014-05-01
description A growing number of studies are reporting simultaneous infections by parasites in many different hosts. The detection of whether these parasites are significantly associated is important in medicine and epidemiology. Numerous approaches to detect associations are available, but only a few provide statistical tests. Furthermore, they generally test for an overall detection of association and do not identify which parasite is associated with which other one. Here, we developed a new approach, the association screening approach, to detect the overall and the detail of multi-parasite associations. We studied the power of this new approach and of three other known ones (i.e. the generalized chi-square, the network and the multinomial GLM approaches) to identify parasite associations either due to parasite interactions or to confounding factors. We applied these four approaches to detect associations within two populations of multi-infected hosts: 1) rodents infected with Bartonella sp., Babesia microti and Anaplasma phagocytophilum and 2) bovine population infected with Theileria sp. and Babesia sp.. We found that the best power is obtained with the screening model and the generalized chi-square test. The differentiation between associations, which are due to confounding factors and parasite interactions was not possible. The screening approach significantly identified associations between Bartonella doshiae and B. microti, and between T. parva, T. mutans and T. velifera. Thus, the screening approach was relevant to test the overall presence of parasite associations and identify the parasite combinations that are significantly over- or under-represented. Unravelling whether the associations are due to real biological interactions or confounding factors should be further investigated. Nevertheless, in the age of genomics and the advent of new technologies, it is a considerable asset to speed up researches focusing on the mechanisms driving interactions between parasites.
topic screening
modeling
interactions
network model
associations
GLM approach
url http://journal.frontiersin.org/Journal/10.3389/fcimb.2014.00062/full
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