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Accepted for/Published in: JMIR Public Health and Surveillance

Date Submitted: Oct 28, 2021
Date Accepted: Sep 6, 2022

The final, peer-reviewed published version of this preprint can be found here:

Key Population Size Estimation to Guide HIV Epidemic Responses in Nigeria: Bayesian Analysis of 3-Source Capture-Recapture Data

McIntyre AF, Mitchell A, Stafford KA, Nwafor SU, Lo J, Sebastian V, Schwitters AM, Swaminathan M, Dalhatu I, Charurat ME

Key Population Size Estimation to Guide HIV Epidemic Responses in Nigeria: Bayesian Analysis of 3-Source Capture-Recapture Data

JMIR Public Health Surveill 2022;8(10):e34555

DOI: 10.2196/34555

PMID: 36287587

PMCID: 9647455

Key population size estimation in Nigeria: applying Bayesian methods for the analysis of three-source capture-recapture data

  • Anne F. McIntyre; 
  • Andrew Mitchell; 
  • Kristen A. Stafford; 
  • Samuel U. Nwafor; 
  • Julia Lo; 
  • Victor Sebastian; 
  • Amee M. Schwitters; 
  • Mahesh Swaminathan; 
  • Ibrahim Dalhatu; 
  • Man E. Charurat

ABSTRACT

Background:

Nigeria has the fourth largest burden of HIV globally. Key populations (KP) including female sex workers (FSW), men who have sex with men (MSM), and people who inject drugs (PWID) often have poor social visibility and are more vulnerable to HIV than the general population due to stigma, discrimination, and criminalization of KP-defining behaviors. Reliable, empirical population size estimates (PSE) are needed to guide focused and appropriately scaled HIV epidemic response efforts for KP. We used novel approaches to sampling and analysis to calculate PSE in Nigeria.

Objective:

We sampled the population using three-source capture-recapture (3S-CRC) and analyzed results using Bayesian nonparametric latent-class models to generate median PSE with 80% highest density intervals.

Methods:

During October–December 2018, we used three-source capture-recapture (3S-CRC) to estimate the size of KP in seven United States President’s Emergency Plan for AIDS Relief (PEPFAR) priority states in Nigeria. Hotspots were mapped before 3S-CRC started. We sampled FSW, MSM, and PWID during three independent captures approximately one week apart. During encounters in KP hotspots, distributors offered inexpensive and memorable objects to KP, unique to each capture round and KP type. In subsequent rounds, participants were offered an object and asked to produce or identify objects received during previous rounds (if any); affirmative responses were tallied upon producing or identifying the correct object. Distributors recorded responses on tablets and uploaded to a secure server after each encounter. Data were aggregated by KP and state for analysis. Median PSE were derived using Bayesian nonparametric latent-class models with 80% highest density intervals for precision.

Results:

We sampled approximately 310,000 persons at 9,015 hotspots during three independent captures in all seven states. Overall, FSW PSE ranged from 14,500-64,300; MSM PSE, 3,200-41,400; and PWID PSE, 3,400-30,400.

Conclusions:

This study represents the first implementation of these 3S-CRC sampling and novel analysis methods for large-scale population size estimation in Nigeria. Overall, our estimates were larger than previously documented for each KP in all states. The current Bayesian models account for factors (i.e., social visibility and stigma) that influence heterogeneous capture probabilities resulting in more reliable PSE. The larger estimates suggest a need for programmatic scale-up to reach these populations at highest risk for HIV.


 Citation

Please cite as:

McIntyre AF, Mitchell A, Stafford KA, Nwafor SU, Lo J, Sebastian V, Schwitters AM, Swaminathan M, Dalhatu I, Charurat ME

Key Population Size Estimation to Guide HIV Epidemic Responses in Nigeria: Bayesian Analysis of 3-Source Capture-Recapture Data

JMIR Public Health Surveill 2022;8(10):e34555

DOI: 10.2196/34555

PMID: 36287587

PMCID: 9647455

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