Computed tomography (CT) scan of lungs produces high volume of data, which is difficult to assess manually. Hence, computer-aided detection (CAD) of pulmonary nodules has become a major area of interest in biomedical imaging. Reducing the number of false positives (FPs) is considered a high priority for enhancement of any CAD system. Here we report a novel hybrid learning scheme for reducing the number of FPs in a computerized lung nodule detection system. This novel scheme consists of two main stages, namely fuzzy c-means clustering and iterative linear discriminant analysis. The main advantage of the proposed iterative linear discriminant analysis is its case adaptive nature designed to maintain a good level of sensitivity. We compare the results obtained from this hybrid scheme with a rule-based FP reduction approach and show the superiority of our novel scheme
Published in:
Image Processing, 2006 IEEE International Conference on
Date of Conference: 8-11 Oct. 2006