# Sequence-based RNA Fluorescence Assay to Measure Latent HIV Reservoirs

> **NIH NIH R44** · JAN BIOTECH, INC. · 2020 · $291,256

## Abstract

Project Summary/Abstract
Public Health Problem. The CDC estimates that in the U.S., 1,144,500 people aged 13 years and older are living
with HIV infection, with approximately 180,900 (15.8%) others infected but undiagnosed. For most HIV-positive
individuals, available drugs can only control HIV infection and delay progression to AIDS. HIV cure treatments
in active development require validated biomarkers for HIV clearance from infected individuals.
Issues with Current Solutions & How Product Meets Unmet Needs. Current methods of quantifying the HIV
reservoir include the quantitative viral outgrowth assay (QVOA), PCR and RT-PCR. QVOA is a time and resource
intensive procedure while RT-PCR can be used to detect viral RNA to 20-50 virus particles per mL and thus
reduces the time to result of QVOA and is generally applicable for measuring viral load, but does not directly
detect replication-competent HIV-infected cells. Fluorescence-activated cell sorting (FACS) using combined
antibody and probe hybridizations requires multiple steps with significant loss of signal. In Jan Biotech’s assay,
all RNA molecules are counted, whereas q and ddPCR are limited by the efficiency of reverse transcription. The
capability of Jan Biotech’s sequence-based latent HIV assay to detect down to the single HIV-infected cell level
would provide a high throughput, scalable assay critically needed to monitor latent HIV reservoirs.
Summary of Approach. Jan Biotech’s assay employs sequence-specific fluorogenic probes with a high signal
amplification to directly detect HIV RNA species. It will be evaluated for correlation with RT-ddPCR
Transcriptional Profiling and QVOA. A statistical correlation of >0.6 with both comparison assays will be the
milestone to move forward to Phase II validation testing and assessment of the predictive value of the assay for
time to viral rebound after treatment interruption. Software analytics will be developed and shared open source.
Collaborators and Unique Resources. Jan Biotech, Inc., with expertise in molecular diagnostic development, will
collaborate with Dr. Steven Yukl, MD, UCSF/SFVAMC, for Transcriptional Profiling, with Michael Busch, MD,
PhD, and Mars Stone, PhD, for the use of the RAVEN sample panels, and with Jonathan Li, MD, MMSc
Associate Professor of Medicine at Harvard Medical School and Brigham and Women’s Hospital, Harris A.
Gelbard, MD, PhD, of University of Rochester Medical School, and John Mellors, MD, of University of Pittsburgh
Medical School, for ATCG sample testing.
Fast-Track Specific Aims
Specific Aim 1 (Phase I): Assay correlation to Transcriptional Profiling and QVOA orthogonal assays
 Comparison testing will be performed between Jan Biotech’s RNAamp assay and Dr. Yukl’s transcriptional
 profiling RT-ddPCR assays and QVOA. The Critical Phase I milestone will be a statistical correlation of 0.6 or
 better of RNAamp to both RT-ddPCR transcriptional profiling or QVOA values.
Specific Aim 2 (Phase II): Assay validation ...

## Key facts

- **NIH application ID:** 10081917
- **Project number:** 1R44AI155075-01
- **Recipient organization:** JAN BIOTECH, INC.
- **Principal Investigator:** Janet L Huie
- **Activity code:** R44 (R01, R21, SBIR, etc.)
- **Funding institute:** NIH
- **Fiscal year:** 2020
- **Award amount:** $291,256
- **Award type:** 1
- **Project period:** 2020-08-07 → 2022-01-31

## Primary source

NIH RePORTER: https://reporter.nih.gov/project-details/10081917

## Citation

> US National Institutes of Health, RePORTER application 10081917, Sequence-based RNA Fluorescence Assay to Measure Latent HIV Reservoirs (1R44AI155075-01). Retrieved via AI Analytics 2026-05-24 from https://api.ai-analytics.org/grant/nih/10081917. Licensed CC0.

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