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Spatiotemporal variation in risk of Shigella infection in childhood: a global risk mapping and prediction model using individual participant data

Authors :
Hamada S. Badr
Josh M. Colston
Nhat-Lan H. Nguyen
Yen Ting Chen
Syed Asad Ali
Ajit Rayamajhi
Syed M. Satter
Nguyen Van Trang
Daniel Eibach
Ralf Krumkamp
Jürgen May
Ayola Akim Adegnika
Gédéon Prince Manouana
Peter Gottfried Kremsner
Roma Chilengi
Luiza Hatyoka
Amanda K. Debes
Jerome Ateudjieu
Abu S. G. Faruque
M. Jahangir Hossain
Suman Kanungo
Karen L. Kotloff
Inácio Mandomando
M. Imran Nisar
Richard Omore
Samba O. Sow
Anita K. M. Zaidi
Nathalie Lambrecht
Bright Adu
Nicola Page
James A. Platts-Mills
Cesar Mavacala Freitas
Tuula Pelkonen
Per Ashorn
Kenneth Maleta
Tahmeed Ahmed
Pascal Bessong
Zulfiqar A. Bhutta
Carl Mason
Estomih Mduma
Maribel P. Olortegui
Pablo Peñataro Yori
Aldo A. M. Lima
Gagandeep Kang
Jean Humphrey
Robert Ntozini
Andrew J. Prendergast
Kazuhisa Okada
Warawan Wongboot
Nina Langeland
Sabrina J. Moyo
James Gaensbauer
Mario Melgar
Matthew Freeman
Anna N. Chard
Vonethalom Thongpaseuth
Eric Houpt
Benjamin F. Zaitchik
Margaret N. Kosek
Publication Year :
2022
Publisher :
Cold Spring Harbor Laboratory, 2022.

Abstract

BackgroundDiarrheal disease remains a leading cause of childhood illness and mortality and Shigella is a major etiological contributor for which a vaccine may soon be available. This study aimed to model the spatiotemporal variation in pediatric Shigella infection and map its predicted prevalence across low- and middle-income countries (LMICs).MethodsIndependent participant data on Shigella positivity in stool samples collected from children aged ≤59 months were sourced from multiple LMIC-based studies. Covariates included household- and subject-level factors ascertained by study investigators and environmental and hydrometeorological variables extracted from various data products at georeferenced child locations. Multivariate models were fitted, and prevalence predictions obtained by syndrome and age stratum.Findings20 studies from 23 countries contributed 66,563 sample results. Age, symptom status, and study design contributed most to model performance followed by temperature, wind speed, relative humidity, and soil moisture. Shigella probability exceeded 20% when both precipitation and soil moisture were above average and had a 43% peak in uncomplicated diarrhea cases at 33°C temperatures, above which it decreased. Improved sanitation and open defecation decreased Shigella odds by 19% and 18% respectively compared to unimproved sanitation.InterpretationThe distribution of Shigella is more sensitive to climatological factors like temperature than previously recognized. Conditions in much of sub-Saharan Africa are particularly propitious for Shigella transmission, though hotspots also occur in South and Central America, the Ganges–Brahmaputra Delta, and New Guinea. These findings can inform prioritization of populations for future vaccine trials and campaigns.FundingNASA 16-GEO16-0047; NIH-NIAID 1R03AI151564-01; BMGF OPP1066146.

Details

Database :
OpenAIRE
Accession number :
edsair.doi...........217102b6d7e1bee91f00d6d7809626e0
Full Text :
https://doi.org/10.1101/2022.08.04.22277641