Accuracy of five algorithms to diagnose gambiense human African trypanosomiasis.

BACKGROUND: Algorithms to diagnose gambiense human African trypanosomiasis (HAT, sleeping sickness) are often complex due to the unsatisfactory sensitivity and/or specificity of available tests, and typically include a screening (serological), confirmation (parasitological) and staging component. Th...

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Main Authors: Francesco Checchi, François Chappuis, Unni Karunakara, Gerardo Priotto, Daniel Chandramohan
Format: Article
Language:English
Published: Public Library of Science (PLoS) 2011-07-01
Series:PLoS Neglected Tropical Diseases
Online Access:http://europepmc.org/articles/PMC3130008?pdf=render
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author Francesco Checchi
François Chappuis
Unni Karunakara
Gerardo Priotto
Daniel Chandramohan
author_facet Francesco Checchi
François Chappuis
Unni Karunakara
Gerardo Priotto
Daniel Chandramohan
author_sort Francesco Checchi
collection DOAJ
description BACKGROUND: Algorithms to diagnose gambiense human African trypanosomiasis (HAT, sleeping sickness) are often complex due to the unsatisfactory sensitivity and/or specificity of available tests, and typically include a screening (serological), confirmation (parasitological) and staging component. There is insufficient evidence on the relative accuracy of these algorithms. This paper presents estimates of the accuracy of five algorithms used by past Médecins Sans Frontières programmes in the Republic of Congo, Southern Sudan and Uganda. METHODOLOGY AND PRINCIPAL FINDINGS: The sequence of tests in each algorithm was programmed into a probabilistic model, informed by distributions of the sensitivity, specificity and staging accuracy of each test, constructed based on a literature review. The accuracy of algorithms was estimated in a baseline scenario and in a worst-case scenario introducing various near worst-case assumptions. In the baseline scenario, sensitivity was estimated as 85-90% in all but one algorithm, with specificity above 99.9% except for the Republic of Congo, where CATT serology was used as independent confirmation test: here, positive predictive value (PPV) was estimated at <50% in realistic active screening prevalence scenarios. Furthermore, most algorithms misclassified about one third of true stage 1 cases as stage 2, and about 10% of true stage 2 cases as stage 1. In the worst-case scenario, sensitivity was 75-90% and PPV no more than 75% at 1% prevalence, with about half of stage 1 cases misclassified as stage 2. CONCLUSIONS: Published evidence on the accuracy of widely used tests is scanty. Algorithms should carefully weigh the use of serology alone for confirmation, and could enhance sensitivity through serological suspect follow-up and repeat parasitology. Better evidence on the frequency of low-parasitaemia infections is needed. Simulation studies should guide the tailoring of algorithms to specific scenarios of HAT prevalence and availability of control tools.
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spelling doaj.art-ccab37acf3bb4fde8040814a7a6360b42022-12-22T01:32:31ZengPublic Library of Science (PLoS)PLoS Neglected Tropical Diseases1935-27271935-27352011-07-0157e123310.1371/journal.pntd.0001233Accuracy of five algorithms to diagnose gambiense human African trypanosomiasis.Francesco ChecchiFrançois ChappuisUnni KarunakaraGerardo PriottoDaniel ChandramohanBACKGROUND: Algorithms to diagnose gambiense human African trypanosomiasis (HAT, sleeping sickness) are often complex due to the unsatisfactory sensitivity and/or specificity of available tests, and typically include a screening (serological), confirmation (parasitological) and staging component. There is insufficient evidence on the relative accuracy of these algorithms. This paper presents estimates of the accuracy of five algorithms used by past Médecins Sans Frontières programmes in the Republic of Congo, Southern Sudan and Uganda. METHODOLOGY AND PRINCIPAL FINDINGS: The sequence of tests in each algorithm was programmed into a probabilistic model, informed by distributions of the sensitivity, specificity and staging accuracy of each test, constructed based on a literature review. The accuracy of algorithms was estimated in a baseline scenario and in a worst-case scenario introducing various near worst-case assumptions. In the baseline scenario, sensitivity was estimated as 85-90% in all but one algorithm, with specificity above 99.9% except for the Republic of Congo, where CATT serology was used as independent confirmation test: here, positive predictive value (PPV) was estimated at <50% in realistic active screening prevalence scenarios. Furthermore, most algorithms misclassified about one third of true stage 1 cases as stage 2, and about 10% of true stage 2 cases as stage 1. In the worst-case scenario, sensitivity was 75-90% and PPV no more than 75% at 1% prevalence, with about half of stage 1 cases misclassified as stage 2. CONCLUSIONS: Published evidence on the accuracy of widely used tests is scanty. Algorithms should carefully weigh the use of serology alone for confirmation, and could enhance sensitivity through serological suspect follow-up and repeat parasitology. Better evidence on the frequency of low-parasitaemia infections is needed. Simulation studies should guide the tailoring of algorithms to specific scenarios of HAT prevalence and availability of control tools.http://europepmc.org/articles/PMC3130008?pdf=render
spellingShingle Francesco Checchi
François Chappuis
Unni Karunakara
Gerardo Priotto
Daniel Chandramohan
Accuracy of five algorithms to diagnose gambiense human African trypanosomiasis.
PLoS Neglected Tropical Diseases
title Accuracy of five algorithms to diagnose gambiense human African trypanosomiasis.
title_full Accuracy of five algorithms to diagnose gambiense human African trypanosomiasis.
title_fullStr Accuracy of five algorithms to diagnose gambiense human African trypanosomiasis.
title_full_unstemmed Accuracy of five algorithms to diagnose gambiense human African trypanosomiasis.
title_short Accuracy of five algorithms to diagnose gambiense human African trypanosomiasis.
title_sort accuracy of five algorithms to diagnose gambiense human african trypanosomiasis
url http://europepmc.org/articles/PMC3130008?pdf=render
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