Development of methods for cross-sectional HIV incidence estimation in a large, community randomized trial.
Date
2013
Journal Title
Journal ISSN
Volume Title
Publisher
PLOS ONE.
Abstract
Background: Accurate methods of HIV incidence determination are critically needed to monitor the epidemic and determine
the population level impact of prevention trials. One such trial, Project Accept, a Phase III, community-randomized trial,
evaluated the impact of enhanced, community-based voluntary counseling and testing on population-level HIV incidence. The
primary endpoint of the trial was based on a single, cross-sectional, post-intervention HIV incidence assessment.
Methods and Findings: Test performance of HIV incidence determination was evaluated for 403 multi-assay algorithms
[MAAs] that included the BED capture immunoassay [BED-CEIA] alone, an avidity assay alone, and combinations of these
assays at different cutoff values with and without CD4 and viral load testing on samples from seven African cohorts (5,325
samples from 3,436 individuals with known duration of HIV infection [1 month to >10 years]). The mean window period
(average time individuals appear positive for a given algorithm) and performance in estimating an incidence estimate (in
terms of bias and variance) of these MAAs were evaluated in three simulated epidemic scenarios (stable, emerging and
waning). The power of different test methods to detect a 35% reduction in incidence in the matched communities of Project
Accept was also assessed. A MAA was identified that included BED-CEIA, the avidity assay, CD4 cell count, and viral load that
had a window period of 259 days, accurately estimated HIV incidence in all three epidemic settings and provided sufficient
power to detect an intervention effect in Project Accept.
Conclusions: In a Southern African setting, HIV incidence estimates and intervention effects can be accurately estimated
from cross-sectional surveys using a MAA. The improved accuracy in cross-sectional incidence testing that a MAA provides is
a powerful tool for HIV surveillance and program evaluation.
Description
CAPRISA, 2013.
Keywords
HIV epidemiology., HIV., Viral load., Algorithms., HIV infections., HIV prevention., Serology., Immunoassays.
Citation
Laeyendecker, O., Kulich, M., Donnell, D., Komárek, A., Omelka, M., Mullis, C.E., Szekeres, G., Piwowar-Manning, E., Fiamma, A., Gray, R.H. and Lutalo, T. 2013. Development of methods for cross-sectional HIV incidence estimation in a large, community randomized trial. PloS one 8(11), e78818.