Publication | Closed Access
<title>Texture analysis of pulmonary parenchyma in normal and emphysematous lung</title>
14
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1996
Year
EngineeringAdvanced Lung DiseaseBiometricsPathologyThoracic UltrasoundAnatomyDermatologyDiagnostic ImagingImage AnalysisPattern RecognitionBiostatisticsRadiologyMedical ImagingMedicinePulmonary MedicineMedical Image ComputingTissue CharacterizationComputer VisionRadiomicsBiomedical ImagingPulmonary PhysiologyLung MechanicsComputer-aided DiagnosisTexture AnalysisEmphysematous RegionsMedical Image Analysis
Tissue characterization using texture analysis is gaining increasing importance in medical imaging. We present a completely automated method for discriminating between normal and emphysematous regions from CT images. This method involves extracting seventeen features which are based on statistical, hybrid and fractal texture models. The best subset of features is derived from the training set using the divergence technique. A minimum distance classifier is used to classify the samples into one of the two classes--normal and emphysema. Sensitivity and specificity and accuracy values achieved were 80% or greater in most cases proving that texture analysis holds great promise in identifying emphysema.