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A serological framework to investigate acute primary and post-primary dengue cases reporting across the Philippines

Authors :
Joseph R. Biggs
Ava Kristy Sy
Oliver J. Brady
Adam J. Kucharski
Sebastian Funk
Mary Anne Joy Reyes
Mary Ann Quinones
William Jones-Warner
Yun-Hung Tu
Ferchito L. Avelino
Nemia L. Sucaldito
Huynh Kim Mai
Le Thuy Lien
Hung Do Thai
Hien Anh Thi Nguyen
Dang Duc Anh
Chihiro Iwasaki
Noriko Kitamura
Lay-Myint Yoshida
Amado O. Tandoc
Eva Cutiongco-de la Paz
Maria Rosario Z. Capeding
Carmencita D. Padilla
Julius Clemence R. Hafalla
Martin L. Hibberd
Source :
BMC Medicine, Vol 18, Iss 1, Pp 1-14 (2020)
Publication Year :
2020
Publisher :
BMC, 2020.

Abstract

Abstract Background In dengue-endemic countries, targeting limited control interventions to populations at risk of severe disease could enable increased efficiency. Individuals who have had their first (primary) dengue infection are at risk of developing more severe secondary disease, thus could be targeted for disease prevention. Currently, there is no reliable algorithm for determining primary and post-primary (infection with more than one flavivirus) status from a single serum sample. In this study, we developed and validated an immune status algorithm using single acute serum samples from reporting patients and investigated dengue immuno-epidemiological patterns across the Philippines. Methods During 2015/2016, a cross-sectional sample of 10,137 dengue case reports provided serum for molecular (anti-DENV PCR) and serological (anti-DENV IgM/G capture ELISA) assay. Using mixture modelling, we re-assessed IgM/G seroprevalence and estimated functional, disease day-specific, IgG:IgM ratios that categorised the reporting population as negative, historical, primary and post-primary for dengue. We validated our algorithm against WHO gold standard criteria and investigated cross-reactivity with Zika by assaying a random subset for anti-ZIKV IgM and IgG. Lastly, using our algorithm, we explored immuno-epidemiological patterns of dengue across the Philippines. Results Our modelled IgM and IgG seroprevalence thresholds were lower than kit-provided thresholds. Individuals anti-DENV PCR+ or IgM+ were classified as active dengue infections (83.1%, 6998/8425). IgG− and IgG+ active dengue infections on disease days 1 and 2 were categorised as primary and post-primary, respectively, while those on disease days 3 to 5 with IgG:IgM ratios below and above 0.45 were classified as primary and post-primary, respectively. A significant proportion of post-primary dengue infections had elevated anti-ZIKV IgG inferring previous Zika exposure. Our algorithm achieved 90.5% serological agreement with WHO standard practice. Post-primary dengue infections were more likely to be older and present with severe symptoms. Finally, we identified a spatio-temporal cluster of primary dengue case reporting in northern Luzon during 2016. Conclusions Our dengue immune status algorithm can equip surveillance operations with the means to target dengue control efforts. The algorithm accurately identified primary dengue infections who are at risk of future severe disease.

Details

Language :
English
ISSN :
17417015
Volume :
18
Issue :
1
Database :
Directory of Open Access Journals
Journal :
BMC Medicine
Publication Type :
Academic Journal
Accession number :
edsdoj.4857440a9edc4f35a92c0deb104525f3
Document Type :
article
Full Text :
https://doi.org/10.1186/s12916-020-01833-1