Development and Performance of Dengue Diagnostic Clinical Algorithms in Colombia

Diagnosing dengue in endemic areas remains problematic because of the low specificity of the symptoms and lack of accurate diagnostic tests. This study aimed to develop and prospectively validate, under routine care, dengue diagnostic clinical algorithms. The study was carried out in two phases. Fir...

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Published inThe American journal of tropical medicine and hygiene Vol. 102; no. 6; pp. 1226 - 1236
Main Authors Caicedo-Borrero, Diana María, Tovar, José Rafael, Méndez, Andrés, Parra, Beatriz, Bonelo, Anilza, Celis, Jairo, Villegas, Liliana, Collazos, Constanza, Osorio, Lyda
Format Journal Article
LanguageEnglish
Published United States Institute of Tropical Medicine 01.06.2020
The American Society of Tropical Medicine and Hygiene
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ISSN0002-9637
1476-1645
1476-1645
DOI10.4269/ajtmh.19-0722

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Summary:Diagnosing dengue in endemic areas remains problematic because of the low specificity of the symptoms and lack of accurate diagnostic tests. This study aimed to develop and prospectively validate, under routine care, dengue diagnostic clinical algorithms. The study was carried out in two phases. First, diagnostic algorithms were developed using a database of 1,130 dengue and 918 non-dengue patients, expert opinion, and literature review. Algorithms with > 70% sensitivity were prospectively validated in a single-group quasi-experimental trial with an adaptive Bayesian design. In the first phase, the algorithms that were developed with the continuous Bayes formula and included leukocytes and platelet counts, in addition to selected signs and symptoms, showed the highest sensitivities (> 80%). In the second phase, the algorithms were applied on admission to 1,039 consecutive febrile subjects in three endemic areas in Colombia of whom 25 were laboratory-confirmed dengue, 307 non-dengue, 514 probable dengue, and 193 undetermined. Including parameters of the hemogram consistently improved specificity without affecting sensitivity. In the final analysis, considering only confirmed dengue and non-dengue cases, an algorithm with a sensitivity and specificity of 65.4% (95% credibility interval 50-83) and 40.1% (34.7-45.7) was identified. All tested algorithms had likelihood ratios close to 1, and hence, they are not useful to confirm or rule out dengue in endemic areas. The findings support the use of hemograms to aid dengue diagnosis and highlight the challenges of clinical diagnosis of dengue.
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Financial support: This work was partially supported by Colombian Science, Technology and Innovation Fund of Sistema General de Regalías, Santander, Casanare, Valle del Cauca. BPIN 2013000100011, Universidad del Valle, and Caja de Compensación Familiar del Valle del Cauca COMFANDI.
Authors’ addresses: Diana María Caicedo-Borrero, Grupo de Investigación en Epidemiología y Salud Poblacional GESP, School of Public Health, Universidad del Valle, Cali, Colombia, and Department of Public Health and Epidemiology, Pontificia Universidad Javeriana Cali, Cali, Colombia, E-mail: diana.maria.caicedo@correounivalle.edu.co. José Rafael Tovar and Andrés Méndez, School of Statistics, Universidad del Valle, Cali, Colombia, E-mails: jose.r.tovar@correounivalle.edu.co and andres.mendez@correounivalle.edu.co. Beatriz Parra and Anilza Bonelo, Department of Microbiology, Grupo de Investigación en Virus Emergentes VIREM, School of Basic Sciences, Universidad del Valle, Cali, Colombia, E-mails: beatriz.parra@correounivalle.edu.co and anilza.bonelo@correounivalle.edu.co. Jairo Celis, Liliana Villegas, and Constanza Collazos, Grupo de Investigación en Evaluación de Servicios de Salud, COMFANDI, Cali, Colombia, E-mails: jairoc3@hotmail.com, lilivibal@yahoo.com, and epidemioinvestiga@comfandi.com.co. Lyda Osorio, Grupo de Investigación en Epidemiología y Salud Poblacional GESP, School of Public Health, Universidad del Valle, Cali, Colombia, E-mail: lyda.osorio@correounivalle.edu.co.
ISSN:0002-9637
1476-1645
1476-1645
DOI:10.4269/ajtmh.19-0722