Characterizing Environmental Surveillance Sites in Nigeria and Their Sensitivity to Detect Poliovirus and Other Enteroviruses

Author:

Hamisu Abdullahi Walla1,Blake Isobel M2,Sume Gerald1,Braka Fiona1,Jimoh Abdullateef1,Dahiru Habu1,Bonos Mohammed1,Dankoli Raymond1,Mamuda Bello Ahmed1,Yusuf Kabir M3,Lawal Namadi M3,Ahmed Fatimah4,Aliyu Zainab3,John Doris4,Nwachukwu Theresa E4,Ayeni Michael F5,Gumede-Moeletsi Nicksy6,Veltsos Philippe7,Giri Sidhartha8,Praharaj Ira8,Metilda Angeline8,Bandyopadhyay Ananda9,Diop Ousmane M10,Grassly Nicholas C2

Affiliation:

1. World Health Organization Nigeria, Abuja, Federal Capital Territory (FCT), Nigeria

2. Department of Infectious Disease Epidemiology, Imperial College London, London, United Kingdom

3. National Primary Health Care Development Agency, Garki, Abuja, FCT, Nigeria

4. Public Health Development, Garki, Abuja, FCT, Nigeria

5. WUPA Wastewater Treatment Plant, Abuja, FCT, Nigeria

6. World Health Organization Regional Office for Africa, Cité du Djoué, Brazzaville, Republic of Congo

7. Novel-t Sàrl, SATIGNY, Geneva, Switzerland

8. Division of Gastrointestinal Sciences, Christian Medical College, Vellore, India

9. Bill & Melinda Gates Foundation, Seattle, Washington, USA

10. World Health Organization Headquarters, Geneva, Switzerland

Abstract

Abstract Background Environmental surveillance (ES) for poliovirus is increasingly important for polio eradication, often detecting circulating virus before paralytic cases are reported. The sensitivity of ES depends on appropriate selection of sampling sites, which is difficult in low-income countries with informal sewage networks. Methods We measured ES site and sample characteristics in Nigeria during June 2018–May 2019, including sewage physicochemical properties, using a water-quality probe, flow volume, catchment population, and local facilities such as hospitals, schools, and transit hubs. We used mixed-effects logistic regression and machine learning (random forests) to investigate their association with enterovirus isolation (poliovirus and nonpolio enteroviruses) as an indicator of surveillance sensitivity. Results Four quarterly visits were made to 78 ES sites in 21 states of Nigeria, and ES site characteristic data were matched to 1345 samples with an average enterovirus prevalence among sites of 68% (range, 9%–100%). A larger estimated catchment population, high total dissolved solids, and higher pH were associated with enterovirus detection. A random forests model predicted “good” sites (enterovirus prevalence >70%) from measured site characteristics with out-of-sample sensitivity and specificity of 75%. Conclusions Simple measurement of sewage properties and catchment population estimation could improve ES site selection and increase surveillance sensitivity.

Funder

Bill and Melinda Gates Foundation

Publisher

Oxford University Press (OUP)

Subject

Infectious Diseases,Immunology and Allergy

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