Cargando…
True versus Apparent Malaria Infection Prevalence: The Contribution of a Bayesian Approach
AIMS: To present a new approach for estimating the “true prevalence” of malaria and apply it to datasets from Peru, Vietnam, and Cambodia. METHODS: Bayesian models were developed for estimating both the malaria prevalence using different diagnostic tests (microscopy, PCR & ELISA), without the ne...
Autores principales: | , , , , , , , , , , , , , , , |
---|---|
Formato: | Texto |
Lenguaje: | English |
Publicado: |
Public Library of Science
2011
|
Materias: | |
Acceso en línea: | https://www.ncbi.nlm.nih.gov/pmc/articles/PMC3041757/ https://www.ncbi.nlm.nih.gov/pubmed/21364745 http://dx.doi.org/10.1371/journal.pone.0016705 |
_version_ | 1782198474450665472 |
---|---|
author | Speybroeck, Niko Praet, Nicolas Claes, Filip Van Hong, Nguyen Torres, Kathy Mao, Sokny Van den Eede, Peter Thi Thinh, Ta Gamboa, Dioni Sochantha, Tho Thang, Ngo Duc Coosemans, Marc Büscher, Philippe D'Alessandro, Umberto Berkvens, Dirk Erhart, Annette |
author_facet | Speybroeck, Niko Praet, Nicolas Claes, Filip Van Hong, Nguyen Torres, Kathy Mao, Sokny Van den Eede, Peter Thi Thinh, Ta Gamboa, Dioni Sochantha, Tho Thang, Ngo Duc Coosemans, Marc Büscher, Philippe D'Alessandro, Umberto Berkvens, Dirk Erhart, Annette |
author_sort | Speybroeck, Niko |
collection | PubMed |
description | AIMS: To present a new approach for estimating the “true prevalence” of malaria and apply it to datasets from Peru, Vietnam, and Cambodia. METHODS: Bayesian models were developed for estimating both the malaria prevalence using different diagnostic tests (microscopy, PCR & ELISA), without the need of a gold standard, and the tests' characteristics. Several sources of information, i.e. data, expert opinions and other sources of knowledge can be integrated into the model. This approach resulting in an optimal and harmonized estimate of malaria infection prevalence, with no conflict between the different sources of information, was tested on data from Peru, Vietnam and Cambodia. RESULTS: Malaria sero-prevalence was relatively low in all sites, with ELISA showing the highest estimates. The sensitivity of microscopy and ELISA were statistically lower in Vietnam than in the other sites. Similarly, the specificities of microscopy, ELISA and PCR were significantly lower in Vietnam than in the other sites. In Vietnam and Peru, microscopy was closer to the “true” estimate than the other 2 tests while as expected ELISA, with its lower specificity, usually overestimated the prevalence. CONCLUSIONS: Bayesian methods are useful for analyzing prevalence results when no gold standard diagnostic test is available. Though some results are expected, e.g. PCR more sensitive than microscopy, a standardized and context-independent quantification of the diagnostic tests' characteristics (sensitivity and specificity) and the underlying malaria prevalence may be useful for comparing different sites. Indeed, the use of a single diagnostic technique could strongly bias the prevalence estimation. This limitation can be circumvented by using a Bayesian framework taking into account the imperfect characteristics of the currently available diagnostic tests. As discussed in the paper, this approach may further support global malaria burden estimation initiatives. |
format | Text |
id | pubmed-3041757 |
institution | National Center for Biotechnology Information |
language | English |
publishDate | 2011 |
publisher | Public Library of Science |
record_format | MEDLINE/PubMed |
spelling | pubmed-30417572011-03-01 True versus Apparent Malaria Infection Prevalence: The Contribution of a Bayesian Approach Speybroeck, Niko Praet, Nicolas Claes, Filip Van Hong, Nguyen Torres, Kathy Mao, Sokny Van den Eede, Peter Thi Thinh, Ta Gamboa, Dioni Sochantha, Tho Thang, Ngo Duc Coosemans, Marc Büscher, Philippe D'Alessandro, Umberto Berkvens, Dirk Erhart, Annette PLoS One Research Article AIMS: To present a new approach for estimating the “true prevalence” of malaria and apply it to datasets from Peru, Vietnam, and Cambodia. METHODS: Bayesian models were developed for estimating both the malaria prevalence using different diagnostic tests (microscopy, PCR & ELISA), without the need of a gold standard, and the tests' characteristics. Several sources of information, i.e. data, expert opinions and other sources of knowledge can be integrated into the model. This approach resulting in an optimal and harmonized estimate of malaria infection prevalence, with no conflict between the different sources of information, was tested on data from Peru, Vietnam and Cambodia. RESULTS: Malaria sero-prevalence was relatively low in all sites, with ELISA showing the highest estimates. The sensitivity of microscopy and ELISA were statistically lower in Vietnam than in the other sites. Similarly, the specificities of microscopy, ELISA and PCR were significantly lower in Vietnam than in the other sites. In Vietnam and Peru, microscopy was closer to the “true” estimate than the other 2 tests while as expected ELISA, with its lower specificity, usually overestimated the prevalence. CONCLUSIONS: Bayesian methods are useful for analyzing prevalence results when no gold standard diagnostic test is available. Though some results are expected, e.g. PCR more sensitive than microscopy, a standardized and context-independent quantification of the diagnostic tests' characteristics (sensitivity and specificity) and the underlying malaria prevalence may be useful for comparing different sites. Indeed, the use of a single diagnostic technique could strongly bias the prevalence estimation. This limitation can be circumvented by using a Bayesian framework taking into account the imperfect characteristics of the currently available diagnostic tests. As discussed in the paper, this approach may further support global malaria burden estimation initiatives. Public Library of Science 2011-02-18 /pmc/articles/PMC3041757/ /pubmed/21364745 http://dx.doi.org/10.1371/journal.pone.0016705 Text en Speybroeck 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 Speybroeck, Niko Praet, Nicolas Claes, Filip Van Hong, Nguyen Torres, Kathy Mao, Sokny Van den Eede, Peter Thi Thinh, Ta Gamboa, Dioni Sochantha, Tho Thang, Ngo Duc Coosemans, Marc Büscher, Philippe D'Alessandro, Umberto Berkvens, Dirk Erhart, Annette True versus Apparent Malaria Infection Prevalence: The Contribution of a Bayesian Approach |
title | True versus Apparent Malaria Infection Prevalence: The Contribution of a Bayesian Approach |
title_full | True versus Apparent Malaria Infection Prevalence: The Contribution of a Bayesian Approach |
title_fullStr | True versus Apparent Malaria Infection Prevalence: The Contribution of a Bayesian Approach |
title_full_unstemmed | True versus Apparent Malaria Infection Prevalence: The Contribution of a Bayesian Approach |
title_short | True versus Apparent Malaria Infection Prevalence: The Contribution of a Bayesian Approach |
title_sort | true versus apparent malaria infection prevalence: the contribution of a bayesian approach |
topic | Research Article |
url | https://www.ncbi.nlm.nih.gov/pmc/articles/PMC3041757/ https://www.ncbi.nlm.nih.gov/pubmed/21364745 http://dx.doi.org/10.1371/journal.pone.0016705 |
work_keys_str_mv | AT speybroeckniko trueversusapparentmalariainfectionprevalencethecontributionofabayesianapproach AT praetnicolas trueversusapparentmalariainfectionprevalencethecontributionofabayesianapproach AT claesfilip trueversusapparentmalariainfectionprevalencethecontributionofabayesianapproach AT vanhongnguyen trueversusapparentmalariainfectionprevalencethecontributionofabayesianapproach AT torreskathy trueversusapparentmalariainfectionprevalencethecontributionofabayesianapproach AT maosokny trueversusapparentmalariainfectionprevalencethecontributionofabayesianapproach AT vandeneedepeter trueversusapparentmalariainfectionprevalencethecontributionofabayesianapproach AT thithinhta trueversusapparentmalariainfectionprevalencethecontributionofabayesianapproach AT gamboadioni trueversusapparentmalariainfectionprevalencethecontributionofabayesianapproach AT sochanthatho trueversusapparentmalariainfectionprevalencethecontributionofabayesianapproach AT thangngoduc trueversusapparentmalariainfectionprevalencethecontributionofabayesianapproach AT coosemansmarc trueversusapparentmalariainfectionprevalencethecontributionofabayesianapproach AT buscherphilippe trueversusapparentmalariainfectionprevalencethecontributionofabayesianapproach AT dalessandroumberto trueversusapparentmalariainfectionprevalencethecontributionofabayesianapproach AT berkvensdirk trueversusapparentmalariainfectionprevalencethecontributionofabayesianapproach AT erhartannette trueversusapparentmalariainfectionprevalencethecontributionofabayesianapproach |