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Performance of a Limiting-Antigen Avidity Enzyme Immunoassay for Cross-Sectional Estimation of HIV Incidence in the United States

Author

Listed:
  • Jacob Konikoff
  • Ron Brookmeyer
  • Andrew F Longosz
  • Matthew M Cousins
  • Connie Celum
  • Susan P Buchbinder
  • George R Seage III
  • Gregory D Kirk
  • Richard D Moore
  • Shruti H Mehta
  • Joseph B Margolick
  • Joelle Brown
  • Kenneth H Mayer
  • Beryl A Koblin
  • Jessica E Justman
  • Sally L Hodder
  • Thomas C Quinn
  • Susan H Eshleman
  • Oliver Laeyendecker

Abstract

Background: A limiting antigen avidity enzyme immunoassay (HIV-1 LAg-Avidity assay) was recently developed for cross-sectional HIV incidence estimation. We evaluated the performance of the LAg-Avidity assay alone and in multi-assay algorithms (MAAs) that included other biomarkers. Methods and Findings: Performance of testing algorithms was evaluated using 2,282 samples from individuals in the United States collected 1 month to >8 years after HIV seroconversion. The capacity of selected testing algorithms to accurately estimate incidence was evaluated in three longitudinal cohorts. When used in a single-assay format, the LAg-Avidity assay classified some individuals infected >5 years as assay positive and failed to provide reliable incidence estimates in cohorts that included individuals with long-term infections. We evaluated >500,000 testing algorithms, that included the LAg-Avidity assay alone and MAAs with other biomarkers (BED capture immunoassay [BED-CEIA], BioRad-Avidity assay, HIV viral load, CD4 cell count), varying the assays and assay cutoffs. We identified an optimized 2-assay MAA that included the LAg-Avidity and BioRad-Avidity assays, and an optimized 4-assay MAA that included those assays, as well as HIV viral load and CD4 cell count. The two optimized MAAs classified all 845 samples from individuals infected >5 years as MAA negative and estimated incidence within a year of sample collection. These two MAAs produced incidence estimates that were consistent with those from longitudinal follow-up of cohorts. A comparison of the laboratory assay costs of the MAAs was also performed, and we found that the costs associated with the optimal two assay MAA were substantially less than with the four assay MAA. Conclusions: The LAg-Avidity assay did not perform well in a single-assay format, regardless of the assay cutoff. MAAs that include the LAg-Avidity and BioRad-Avidity assays, with or without viral load and CD4 cell count, provide accurate incidence estimates.

Suggested Citation

  • Jacob Konikoff & Ron Brookmeyer & Andrew F Longosz & Matthew M Cousins & Connie Celum & Susan P Buchbinder & George R Seage III & Gregory D Kirk & Richard D Moore & Shruti H Mehta & Joseph B Margolick, 2013. "Performance of a Limiting-Antigen Avidity Enzyme Immunoassay for Cross-Sectional Estimation of HIV Incidence in the United States," PLOS ONE, Public Library of Science, vol. 8(12), pages 1-9, December.
  • Handle: RePEc:plo:pone00:0082772
    DOI: 10.1371/journal.pone.0082772
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    Cited by:

    1. Doug Morrison & Oliver Laeyendecker & Ron Brookmeyer, 2022. "Regression with interval‐censored covariates: Application to cross‐sectional incidence estimation," Biometrics, The International Biometric Society, vol. 78(3), pages 908-921, September.
    2. Wendy Grant-McAuley & Ethan Klock & Oliver Laeyendecker & Estelle Piwowar-Manning & Ethan Wilson & William Clarke & Autumn Breaud & Ayana Moore & Helen Ayles & Barry Kosloff & Kwame Shanaube & Peter B, 2021. "Evaluation of multi-assay algorithms for identifying individuals with recent HIV infection: HPTN 071 (PopART)," PLOS ONE, Public Library of Science, vol. 16(12), pages 1-14, December.

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