Efficient ELISA for Diagnosis of Active Tuberculosis Employing a Cocktail of Secretory Proteins of Mycobacterium tuberculosis

Author:

Tiwari D.,Tiwari R. P.,Chandra R.,Bisen P. S.,Haque Shafiul

Abstract

Rapid and accurate diagnosis is important for preventing transmission of Mycobacterium tuberculosis. Currently available tuberculosis (TB) diagnostic methods lack desired sensitivity and specificity, and require sophisticated equipment and skilled workforce including weeks’ long duration to yield results. In this study, extracellular proteins or secretory protein antigens of M. tuberculosis H37Rv have been isolated using ion exchange chromatography, immunocharacterized and exploited for the development of efficient enzyme-linked immunosorbent assay (ELISA) for diagnosis of active TB with enhanced specificity and sensitivity. Apparent molecular masses for purified proteins were found to be 6, 27, 30, 38 and 64 kDa. Out of five purified proteins, one (64 kDa) was found to be novel. Of the five proteins, four (6, 27, 30 and 38 kDa) were found significant to be used in the development of ELISA for pulmonary and extra-pulmonary TB. The immune responses of serum samples of TB patients and other healthy subjects against the above-mentioned antigens’ cocktail were evaluated. Critical parameters of newly developed ELISA were optimized and it was observed that the cocktail antigens have a greater specificity (98.06 %) and sensitivity (98.67 %) as compared to other commercially available diagnostic tests. The present findings suggest that the developed ELISA is an effective tool for routine screening and early-stage diagnosis of TB.

Publisher

Charles University in Prague, Karolinum Press

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