FEND for TB

NIH RePORTER · NIH · U01 · $4,167,230 · view on reporter.nih.gov ↗

Abstract

ABSTRACT In response to RFA-AI-19-030, Feasibility of Novel Diagnostics for TB in Endemic Countries (FEND-TB) the leadership team has brought together a consortium of experienced investigators and clinical sites and developed a research plan to address critical unmet TB diagnostic needs. This program benefits from experience gained during the successful 7-year tenure of the NIH DMID-funded TB-Clinical Diagnostics Research Consortium (TB-CDRC), with overlap in leadership, investigators and sites. This program has been adapted in several ways to further enhance capacity to meet the current challenges in the field -- the successful collaboration with the Foundation for Innovative New Diagnostics (FIND) has been strengthened to now a full partnership that will facilitate access to cutting edge technologies and alignment of FEND-TB work with global stakeholder priorities; clinical study sites in India and Peru have been added to accelerate recruitment and augment capacity to enroll patients with co-morbidities and drug- resistance; inclusion of a mature analytic laboratory and revised technology evaluation strategy that together allow for rational, nimble, step-wise evaluation of early-stage diagnostics; and inclusion of mathematical modeling capacity to inform optimal diagnostic strategies in TB endemic settings. This proposal will test two main hypotheses: A. Novel early stage TB diagnostics, that target bacterial and/or host targets and will be ready for evaluation in the next five years, will have performance characteristics suitable for point of care (POC)/near-care use for TB detection, triage, or drug susceptibility testing. B. Rapid non-sputum diagnostics will provide ancillary support as components of algorithms for the diagnosis of childhood TB as well as paucibacillary pulmonary TB and extrapulmonary TB in adults. Specific Aims are: 1. To evaluate the diagnostic accuracy of early stage diagnostic tests for tuberculosis. 2. To identify new early stage diagnostics for evaluation, and to develop and implement for each a stepwise evaluation plan. 3. To use economic analysis and transmission modelling to design optimal diagnostic algorithms.

Key facts

NIH application ID
10409690
Project number
5U01AI152084-03
Recipient
RBHS-NEW JERSEY MEDICAL SCHOOL
Principal Investigator
David Alland
Activity code
U01
Funding institute
NIH
Fiscal year
2022
Award amount
$4,167,230
Award type
5
Project period
2020-06-04 → 2023-05-31