Accurate HIV incidence estimates are critical for monitoring the HIV/AIDS epidemic and evaluating interventions for HIV prevention. We have developed multi-assay algorithms (MAAs) that provide accurate incidence estimates. However, there are new challenges in this field of research. With increasing use of antiretroviral drugs for HIV treatment and prevention and a push towards early treatment initiation, more individuals, including those with recent infection, will be virally suppressed. This will impact cross-sectional incidence testing: higher rates of viral suppression will increase misclassification with standard serologic incidence assays; low viral load (VL) will no longer serve as biomarker for non-recent infection; and use of HIV diversity assays for incidence testing will be problematic, since it may not be possible to analyze samples with low VLs. Our hypothesis is that well-characterized samples, novel assays, and statistical modeling can be used to develop methods that provide accurate cross-sectional incidence estimates in the evolving landscape of HIV treatment and prevention.
The Specific Aims of this project are:
Aim 1 : Expand a repository of well-characterized samples with information on the duration of HIV infection; use these samples to evaluate performance of HIV incidence assays. Our repository includes >17,000 samples from individuals with known duration of infection. We will continue to expand this repository, focusing on key populations and settings with high rates of viral suppression. These samples repository will be used to evaluate serologic HIV incidence assays.
Aim 2 : Use massively multiplexed VirScan assay to identify serosignatures that discriminate between recent and non-recent HIV infection. VirScan uses phage display, immuno-precipitation, and next generation sequencing to measure antibody reactivity to >3,300 HIV peptides. We will test samples from Aim 1 with VirScan and will use the data to identify ?serosignatures? that distinguish between recent and non-recent infection, independent of VL. We will also use VirScan data to develop multi-peptide immunoassays (EIAs).
Aim 3 : Develop MAAs for HIV incidence estimation and validate the top-performing MAAs using independent sample sets from cohort studies and clinical trials with known HIV incidence. Data from Aims 1 and 2 will be used to identify MAAs that maximize accuracy and minimize cost of cross-sectional incidence testing. The performance of MAAs and VirScan-based EIAs will be validated by comparing incidence estimates obtained with these methods to those observed in longitudinal follow-up in cohorts and clinical trials. Based on our prior work and preliminary data, we believe that these studies will identify accurate, cost- effective methods for cross-sectional HIV incidence estimation for use in diverse populations and settings. This work will have direct public health benefit, providing improved methods for surveillance of the HIV/AIDS epidemic, targeting prevention interventions, and design and evaluation of HIV prevention trials.

Public Health Relevance

This project will evaluate and optimize methods that can be used to determine HIV incidence (the rate of new HIV infections) from cross-sectional surveys of single blood samples collected from individuals. These methods are needed to monitor the HIV/AIDS epidemic, to identify populations at high risk of HIV infection, to target HIV prevention efforts, and to design and evaluate HIV prevention trials. RELEVANCE This project is relevant to surveillance of the HIV/AIDS epidemic, identification of populations at increased risk of HIV acquisition, design of HIV prevention trials, and evaluation of the efficacy of interventions for HIV prevention.

Agency
National Institute of Health (NIH)
Institute
National Institute of Allergy and Infectious Diseases (NIAID)
Type
Research Project (R01)
Project #
5R01AI095068-07
Application #
9591751
Study Section
AIDS Clinical Studies and Epidemiology Study Section (ACE)
Program Officer
Sharma, Usha K
Project Start
2011-08-01
Project End
2021-10-31
Budget Start
2018-11-01
Budget End
2019-10-31
Support Year
7
Fiscal Year
2019
Total Cost
Indirect Cost
Name
Johns Hopkins University
Department
Pathology
Type
Schools of Medicine
DUNS #
001910777
City
Baltimore
State
MD
Country
United States
Zip Code
21205
Eshleman, Susan H; Piwowar-Manning, Estelle; Sivay, Mariya V et al. (2018) Performance of the BioPlex 2200 HIV Ag-Ab assay for identifying acute HIV infection. J Clin Virol 99-100:67-70
Laeyendecker, Oliver; Konikoff, Jacob; Morrison, Douglas E et al. (2018) Identification and validation of a multi-assay algorithm for cross-sectional HIV incidence estimation in populations with subtype C infection. J Int AIDS Soc 21:
Schlusser, Katherine E; Sharma, Shweta; de la Torre, Pola et al. (2018) Comparison of Self-report to Biomarkers of Recent HIV Infection: Findings from the START Trial. AIDS Behav 22:2277-2283
Schlusser, Katherine E; Pilcher, Christopher; Kallas, Esper G et al. (2017) Comparison of cross-sectional HIV incidence assay results from dried blood spots and plasma. PLoS One 12:e0172283
Cepeda, Javier A; Solomon, Sunil S; Srikrishnan, Aylur K et al. (2017) Injection Drug Network Characteristics Are Important Markers of HIV Risk Behavior and Lack of Viral Suppression. J Acquir Immune Defic Syndr 75:257-264
Wendel, Sarah K; Longosz, Andrew F; Eshleman, Susan H et al. (2017) Short Communication: The Impact of Viral Suppression and Viral Breakthrough on Limited-Antigen Avidity Assay Results in Individuals with Clade B HIV Infection. AIDS Res Hum Retroviruses 33:325-327
Schlusser, Katherine E; Konikoff, Jacob; Kirkpatrick, Allison R et al. (2017) Short Communication: Comparison of Maxim and Sedia Limiting Antigen Assay Performance for Measuring HIV Incidence. AIDS Res Hum Retroviruses 33:555-557
Lynch, Briana A; Patel, Eshan U; Courtney, Colleen R et al. (2017) Short Communication: False Recent Ratio of the Limiting-Antigen Avidity Assay and Viral Load Testing Algorithm Among Cameroonians with Long-Term HIV Infection. AIDS Res Hum Retroviruses 33:1114-1116
Sivay, Mariya V; Li, Maoji; Piwowar-Manning, Estelle et al. (2017) Characterization of HIV Seroconverters in a TDF/FTC PrEP Study: HPTN 067/ADAPT. J Acquir Immune Defic Syndr 75:271-279
Fogel, Jessica M; Clarke, William; Kulich, Michal et al. (2017) Antiretroviral Drug Use in a Cross-Sectional Population Survey in Africa: NIMH Project Accept (HPTN 043). J Acquir Immune Defic Syndr 74:158-165

Showing the most recent 10 out of 52 publications