PLoS ONE (Jan 2020)

A new method for estimating HIV incidence from a single cross-sectional survey.

  • Ian E Fellows,
  • Ray W Shiraishi,
  • Peter Cherutich,
  • Thomas Achia,
  • Peter W Young,
  • Andrea A Kim

DOI
https://doi.org/10.1371/journal.pone.0237221
Journal volume & issue
Vol. 15, no. 8
p. e0237221

Abstract

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Estimating incidence from cross-sectional data sources is both important to the understanding of the HIV epidemic and challenging from a methodological standpoint. We develop a new incidence estimator that measures the size of the undiagnosed population and the amount of time spent undiagnosed in order to infer incidence and transmission rates. The estimator is calculated using commonly collected information on testing history and HIV status and, thus, can be deployed in many HIV surveys without additional cost. If ART biomarker status and/or viral load information is available, the estimator can be adjusted for biases in self-reported testing history. The performance of the estimator is explored in two large surveys in Kenya, where we find our point estimates to be consistent with assay-derived estimates, with much smaller standard errors.