[Diagnostic means for tuberculosis].

Rev Pneumol Clin

Service des maladies respiratoires, hôpital 20-aout, Casablanca, Maroc.

Published: October 2016

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Article Abstract

Tuberculosis is a public health problem. In recent years, there is a change in the epidemiological profile of tuberculosis. The diagnosis of tuberculosis is based on clinical and radiological arguments but confirmation is bacteriological and/or histological. Culture remains the gold standard. Technological progress especially in molecular biology provides the clinician now new means of tuberculosis diagnostics.

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http://dx.doi.org/10.1016/j.pneumo.2016.06.003DOI Listing

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