Classification of <i>Mycobacterium tuberculosis</i> in Images of ZN-Stained Sputum Smears

Rethabile Khutlang(University of Cape Town), Sriram Krishnan(South African Medical Research Council), Ronald Dendere(University of Cape Town), Andrew Whitelaw(University of Cape Town), K Veropoulos, Genevieve Learmonth(University of Cape Town), Tania S. Douglas(South African Medical Research Council)
IEEE Transactions on Information Technology in Biomedicine
September 4, 2009
Cited by 121

Abstract

Screening for tuberculosis (TB) in low- and middle-income countries is centered on the microscope. We present methods for the automated identification of Mycobacterium tuberculosis in images of Ziehl-Neelsen (ZN) stained sputum smears obtained using a bright-field microscope. We segment candidate bacillus objects using a combination of two-class pixel classifiers. The algorithm produces results that agree well with manual segmentations, as judged by the Hausdorff distance and the modified Williams index. The extraction of geometric-transformation-invariant features and optimization of the feature set by feature subset selection and Fisher transformation follow. Finally, different two-class object classifiers are compared. The sensitivity and specificity of all tested classifiers is above 95% for the identification of bacillus objects represented by Fisher-transformed features. Our results may be used to reduce technician involvement in screening for TB, and would be particularly useful in laboratories in countries with a high burden of TB, where, typically, ZN rather than auramine staining of sputum smears is the method of choice.


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