With escalating global access to HIV antiretroviral (ARV) therapy, treatment failure is inevitable and must be anticipated. Correct and early diagnosis of treatment failure is essential for cost savings, durable response to therapy and prevention of morbidity and mortality. Most HIV treatment programs in the developing world either do not have access to viral load (VL) testing, the gold-standard treatment monitoring modality, or can apply it only on a limited basis. Other monitoring technologies such as drug resistance testing are even less common for financial and infrastructure constraints. In this proposal we will develop, evaluate and implement methods to optimize monitoring of ARV therapy in resource limited settings (RLS) that have diverse VL availability. Though several recent studies have proposed and evaluated lower-cost markers as VL surrogates and strategies for selective VL use, they generally are not based on a formal, decision theoretic framework that allows discovery of strategies with optimality properties that can be expressed in terms of misclassification rate, cost, and other clinically relevant parameters. We propose to develop the statistical framework, theory and methods required to discover optimal diagnostic algorithms for monitoring treatment failure with limited or no VL availability; to use cohort data from both the US and Kenya to derive, calibrate and cross-validate the algorithms; to use extant plasma samples from patients in a PEPFAR-funded HIV care program to design and cross-validate a new diagnostic algorithm that includes implementation of pooled assays; and to develop usable software that will enable programs to design their own protocols based on the characteristics of their patient population and local capacity for viral load testing.

Public Health Relevance

Effective use of antiretroviral therapy is critical for managing and preventing the spread of HIV in the developing world. This proposal develops methods that make optimal use of diagnostic tests having limited availability to monitor the effectiveness of therapy and to prompt a change in regimen when it is warranted. Successful implementation will improve patient outcomes and help to prevent the spread of treatment-resistant strains of HIV.

Agency
National Institute of Health (NIH)
Institute
National Institute of Allergy and Infectious Diseases (NIAID)
Type
Research Project (R01)
Project #
5R01AI108441-02
Application #
8960923
Study Section
Special Emphasis Panel (ZRG1-AARR-C (02))
Program Officer
Gezmu, Misrak
Project Start
2014-11-15
Project End
2019-10-31
Budget Start
2015-11-01
Budget End
2016-10-31
Support Year
2
Fiscal Year
2016
Total Cost
$708,750
Indirect Cost
$127,283
Name
Brown University
Department
Biostatistics & Other Math Sci
Type
Schools of Public Health
DUNS #
001785542
City
Providence
State
RI
Country
United States
Zip Code
02912
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