2017
DOI: 10.14569/ijacsa.2017.080760
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An Enhanced Approach for Detection and Classification of Computed Tomography Lung Cancer

Abstract: Abstract-The paper presents approaches for nodule detection and extraction in axial lung computed tomography. The goal is to detect correctly pulmonary nodule to recognize and screen lung cancer patients. The pulmonary nodule detection is very challenging problem. The proposed model developed a hybrid efficient model based on affine-invariant representation and shape of segmented nodule. Due to large number of extracted features for all slices on patient, feature selection is an important step to select the mo… Show more

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