Publication | Closed Access
Automated detection of tuberculosis in Ziehl‐Neelsen‐stained sputum smears using two one‐class classifiers
55
Citations
10
References
2009
Year
EngineeringGaussians ClassifierObject SegmentationTuberculosis PreventionDigital PathologyDiagnosisPathologyDiagnosticsDisease DetectionImage AnalysisOne‐class ClassifiersMycobacterium TuberculosisZiehl‐neelsen‐stained Sputum SmearsTuberculosis DiagnosticsRadiologyPulmonary TuberculosisTuberculosisMedical Image ComputingBioimage AnalysisComputer-aided DiagnosisMicrobiologyMedicine
Screening for tuberculosis in high-prevalence countries relies on sputum smear microscopy. We present a method for the automated identification of Mycobacterium tuberculosis in images of Ziehl-Neelsen-stained sputum smears obtained using a bright-field microscope. We use two stages of classification. The first comprises a one-class pixel classifier for object segmentation. Geometric transformation invariant features are extracted for implementation of the second stage, namely one-class object classification. Different classifiers are compared; the sensitivity of all tested classifiers is above 90% for the identification of a single bacillus object using all extracted features. The mixture of Gaussians classifier performed well in both stages of classification. This method may be used as a step in the automation of tuberculosis screening, in order to reduce technician involvement in the process.
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