Characterising spatial patterns of neglected tropical disease transmission using integrated sero-surveillance in Northern Ghana.

Background As prevalence decreases in pre-elimination settings, identifying the spatial distribution of remaining infections to target control measures becomes increasingly challenging. By measuring multiple antibody responses indicative of past exposure to different pathogens, integrated serologica...

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Bibliographic Details
Published in:PLOS Neglected Tropical Diseases
Main Authors: Kimberly M Fornace, Laura Senyonjo, Diana L Martin, Sarah Gwyn, Elena Schmidt, David Agyemang, Benjamin Marfo, James Addy, Ernest Mensah, Anthony W Solomon, Robin Bailey, Chris J Drakeley, Rachel L Pullan
Format: Article in Journal/Newspaper
Language:English
Published: Public Library of Science (PLoS) 2022
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Online Access:https://doi.org/10.1371/journal.pntd.0010227
https://doaj.org/article/895af05547b047f69b13744c11be7836
Description
Summary:Background As prevalence decreases in pre-elimination settings, identifying the spatial distribution of remaining infections to target control measures becomes increasingly challenging. By measuring multiple antibody responses indicative of past exposure to different pathogens, integrated serological surveys enable simultaneous characterisation of residual transmission of multiple pathogens. Methodology/principal findings Here, we combine integrated serological surveys with geostatistical modelling and remote sensing-derived environmental data to estimate the spatial distribution of exposure to multiple diseases in children in Northern Ghana. The study utilised the trachoma surveillance survey platform (cross-sectional two-stage cluster-sampled surveys) to collect information on additional identified diseases at different stages of elimination with minimal additional cost. Geostatistical modelling of serological data allowed identification of areas with high probabilities of recent exposure to diseases of interest, including areas previously unknown to control programmes. We additionally demonstrate how serological surveys can be used to identify areas with exposure to multiple diseases and to prioritise areas with high uncertainty for future surveys. Modelled estimates of cluster-level prevalence were strongly correlated with more operationally feasible metrics of antibody responses. Conclusions/significance This study demonstrates the potential of integrated serological surveillance to characterise spatial distributions of exposure to multiple pathogens in low transmission and elimination settings when the probability of detecting infections is low.