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Performance comparison of the Maxim and Sedia Limiting Antigen Avidity assays for HIV incidence surveillance

PLoS ONE, ISSN: 1932-6203, Vol: 14, Issue: 7, Page: e0220345
2019
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Article Description

Background Two manufacturers, Maxim Biomedical and Sedia Biosciences Corporation, supply CDCapproved versions of the HIV-1 Limiting Antigen Avidity EIA (LAg) for detecting 'recent' HIV infection in cross-sectional incidence estimation. This study assesses and compares the performance of the two assays for incidence surveillance. Methods We ran both assays on a panel of 2,500 well-characterized HIV-1-infected specimens. We analysed concordance of assay results, assessed reproducibility using repeat testing and estimated mean durations of recent infection (MDRIs) and false-recent rates (FRRs) for a range of normalized optical density (ODn) thresholds, alone and in combination with viral load thresholds. We defined three hypothetical surveillance scenarios, similar to the Kenyan and South African epidemics, and a concentrated epidemic. These scenarios allowed us to evaluate the precision of incidence estimates obtained by means of various recent infection testing algorithms (RITAs) based on each of the two assays. Results The Maxim assay produced lower ODn values than the Sedia assay on average, largely as a result of higher calibrator readings (mean OD of 0.749 vs. 0.643), with correlation of normalized readings lower (R = 0.908 vs. R = 0.938). Reproducibility on blinded control specimens was slightly better for Maxim. The MDRI of a Maxim-based algorithm at the 'standard' threshold (ODn ≤1.5 & VL >1,000) was 201 days (95% CI: 180,223) and for Sedia 171 (152,191). The difference Differences in MDRI were estimated at 32.7 (22.9,42.8) and 30.9 days (21.7,40.7) for the two algorithms, respectively. Commensurately, the Maxim algorithm had a higher FRR in treatment-naive subjects (1.7% vs. 1.1%). The two assays produced similar precision of incidence estimates in the three surveillance scenarios. Conclusions Differences between the assays can be primarily attributed to the calibrators supplied by the manufacturers. Performance for surveillance was extremely similar, although different thresholds were optimal (i.e. produced the lowest variance of incidence estimates) and at any given ODn threshold, different estimates of MDRI and FRR were obtained. The two assays cannot be treated as interchangeable: assay and algorithm-specific performance characteristic estimates must be used for survey planning and incidence estimation.

Bibliographic Details

Joseph B. Sempa; Alex Welte; Eduard Grebe; Michael P. Busch; Dylan Hampton; Shelley N. Facente; Sheila M. Keating; Kara Marson; Christopher D. Pilcher; Jake Hall; Gary Murphy; Neil Parkin; David Matten; Hilmarie Brand; Trust Chibawara; Elaine McKinney; Mila Lebedeva; Reshma Kassanjee; Oliver Laeyendecker; Thomas Quinn; David Burns; Susan Little; Anita Sands; Tim Hallett; Sherry Michele Owen; Bharat Parekh; Connie Sexton; Matthew Price; Anatoli Kamali; Lisa Loeb; San Francisco; Jeffrey Martin; Steven G. Deeks; Rebecca Hoh; Zelinda Bartolomei; Natalia Cerqueira; Breno Santos; Kellin Zabtoski; Rita De Cassia Alves Lira; Rosa Dea Sperhacke; Leonardo R. Motta; MacHline Paganella; Esper Kallas; Helena Tomiyama; Claudia Tomiyama; Priscilla Costa; Maria A. Nunes; Gisele Reis; Mariana MSauer; Zelinda Nakagawa; Lilian Ferrari; Ana P. Amaral; Karine Milani; Salim S.Abdool Karim; Quarraisha Abdool Karim; Thumbi Ndungu; Nelisile Majola; Natasha Samsunder; Denise Naniche; Inacio Mandomando; Eusebio V. MacEte; Jorge Sanchez; Javier Lama; Ann Duerr; Maria R. Capobianchi; Barbara Suligoi; Susan Stramer; Phillip Williamson; Marion Vermeulen; Ester Sabino

Public Library of Science (PLoS)

Multidisciplinary

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