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e-Article

QuantiFERON Supernatant-Based Host Biomarkers Predicting Progression to Active Tuberculosis Disease Among Household Contacts of Tuberculosis Patients.
Document Type
Article
Source
Clinical Infectious Diseases. May2023, Vol. 76 Issue 10, p1802-1813. 12p.
Subject
*TUBERCULOSIS diagnosis
*BIOMARKERS
*DISEASE progression
*CYTOKINES
*GRANULOCYTE-macrophage colony-stimulating factor
*CONFIDENCE intervals
*PREDICTIVE tests
*GROWTH factors
*INTERLEUKIN-1
*RISK assessment
*INTERFERONS
*TUBERCULIN test
*RESEARCH funding
*FACTOR analysis
*DESCRIPTIVE statistics
*CONTACT tracing
*SENSITIVITY & specificity (Statistics)
*CHEMOKINES
*RECEIVER operating characteristic curves
Language
ISSN
1058-4838
Abstract
Background The positive predictive value of tuberculin skin test and current generation interferon gamma release assays are very low leading to high numbers needed to treat. Therefore, it is critical to identify new biomarkers with high predictive accuracy to identify individuals bearing high risk of progression to active tuberculosis (TB). Methods We used stored QuantiFERON supernatants from 14 household contacts of index TB patients who developed incident active TB during a 2-year follow-up and 20 age and sex-matched non-progressors. The supernatants were tested for an expanded panel of 45 cytokines, chemokines, and growth factors using the Luminex Multiplex Array kit. Results We found significant differences in the levels of TB-antigen induced production of several analytes between progressors and non-progressors. Dominance analysis identified 15 key predictive biomarkers based on relative percentage importance. Principal component analysis revealed that these biomarkers could robustly distinguish between the 2 groups. Receiver operating characteristic analysis identified interferon-γ inducible protein (IP)-10, chemokine ligand (CCL)19, interferon (IFN)-γ, interleukin (IL)-1ra, CCL3, and granulocyte-macrophage colony-stimulating factor (GM-CSF) as the most promising predictive markers, with area under the curve (AUC) ≥90. IP-10/CCL19 ratio exhibited maximum sensitivity and specificity (100%) for predicting progression. Through Classification and Regression Tree analysis, a cutoff of 0.24 for IP-10/CCL19 ratio was found to be ideal for predicting short-term risk of progression to TB disease with a positive predictive value of 100 (95% confidence interval [CI] 85.8–100). Conclusions The biomarkers identified in this study will pave way for the development of a more accurate test that can identify individuals at high risk for immediate progression to TB disease for targeted intervention. [ABSTRACT FROM AUTHOR]