A generalizable method for estimating duration of HIV infections using clinical testing history and HIV test results

Christopher D. Pilcher, Travis C. Porco, Shelley N. Facente*, Eduard Grebe, Kevin P. Delaney, Silvina Masciotra, Reshma Kassanjee, Michael P. Busch, Gary Murphy, S. Michele Owen, Alex Welte

*Corresponding author for this work

Research output: Contribution to journalArticlepeer-review

15 Citations (Scopus)

Abstract

Objective:To determine the precision of new and established methods for estimating duration of HIV infection.Design:A retrospective analysis of HIV testing results from serial samples in commercially available panels, taking advantage of extensive testing previously conducted on 53 seroconverters.Methods:We initially investigated four methods for estimating infection timing: method 1, 'Fiebig stages' based on test results from a single specimen; method 2, an updated '4th gen' method similar to Fiebig stages but using antigen/antibody tests in place of the p24 antigen test; method 3, modeling of 'viral ramp-up' dynamics using quantitative HIV-1 viral load data from antibody-negative specimens; and method 4, using detailed clinical testing history to define a plausible interval and best estimate of infection time. We then investigated a 'two-step method' using data from both methods 3 and 4, allowing for test results to have come from specimens collected on different days.Results:Fiebig and '4th gen' staging method estimates of time since detectable viremia had similar and modest correlation with observed data. Correlation of estimates from both new methods (3 and 4), and from a combination of these two ('two-step method') was markedly improved and variability significantly reduced when compared with Fiebig estimates on the same specimens.Conclusion:The new 'two-step' method more accurately estimates timing of infection and is intended to be generalizable to more situations in clinical medicine, research, and surveillance than previous methods. An online tool is now available that enables researchers/clinicians to input data related to method 4, and generate estimated dates of detectable infection.

Original languageEnglish
Pages (from-to)1231-1240
Number of pages10
JournalAIDS
Volume33
Issue number7
DOIs
Publication statusPublished - 1 Jun 2019

Bibliographical note

Publisher Copyright:
© 2019 Wolters Kluwer Health, Inc. All rights reserved.

Keywords

  • HIV disease staging
  • HIV infection dating
  • HIV staging
  • HIV testing
  • duration of infection

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