Effectiveness of Using AI-Driven Hotspot Mapping for Active Case Finding of Tuberculosis in Southwestern Nigeria

Author:

Alege Abiola1,Hashmi Sumbul2,Eneogu Rupert3,Meurrens Vincent2,Budts Anne-Laure2,Pedro Michael4,Daniel Olugbenga4,Idogho Omokhoudu1,Ihesie Austin3,Potgieter Matthys Gerhardus5,Akaniro Obioma Chijioke6,Oyelaran Omosalewa3,Charles Mensah Olalekan4,Agbaje Aderonke4

Affiliation:

1. Society for Family Health, 8, Port Harcourt Crescent, Area 11, Garki, Abuja 900247, Federal Capital Territory, Nigeria

2. EPCON, Schillerstr. 24, 2050 Antwerp, Belgium

3. U.S. Agency for International Development, Plot 1075 Drive, Central Business District, Abuja 900103, Federal Capital Territory, Nigeria

4. Institute of Human Virology, Nigeria IHVN Towers, Emeritus Zone Plot 62, C00 Emeritus Umaru Shehu Ave, Cadastral, Abuja 900108, Federal Capital Territory, Nigeria

5. EPCON SA, 11 Blombos Close, Sunnydale, Fish Hoek, Cape Town 7975, South Africa

6. National Tuberculosis, Leprosy and Buruli Ulcer Control Programme, 16 Bissau St, Wuse, Abuja 904101, Federal Capital Territory, Nigeria

Abstract

Background: Nigeria is among the top five countries that have the highest gap between people reported as diagnosed and estimated to have developed tuberculosis (TB). To bridge this gap, there is a need for innovative approaches to identify geographical areas at high risk of TB transmission and targeted active case finding (ACF) interventions. Leveraging community-level data together with granular sociodemographic contextual information can unmask local hotspots that could be otherwise missed. This work evaluated whether this approach helps to reach communities with higher numbers of undiagnosed TB. Methodology: A retrospective analysis of the data generated from an ACF intervention program in four southwestern states in Nigeria was conducted. Wards (the smallest administrative level in Nigeria) were further subdivided into smaller population clusters. ACF sites and their respective TB screening outputs were mapped to these population clusters. This data were then combined with open-source high-resolution contextual data to train a Bayesian inference model. The model predicted TB positivity rates on the community level (population cluster level), and these were visualised on a customised geoportal for use by the local teams to identify communities at high risk of TB transmission and plan ACF interventions. The TB positivity yield (proportion) observed at model-predicted hotspots was compared with the yield obtained at other sites identified based on aggregated notification data. Results: The yield in population clusters that were predicted to have high TB positivity rates by the model was at least 1.75 times higher (p-value < 0.001) than the yield in other locations in all four states. Conclusions: The community-level Bayesian predictive model has the potential to guide ACF implementers to high-TB-positivity areas for finding undiagnosed TB in the communities, thus improving the efficiency of interventions.

Funder

USAID

Publisher

MDPI AG

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