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Feature Subset Selection for Improving the Performance of False Positive Reduction in Lung Nodule CAD
Dublin, Ireland June 23-June 24
DOI Bookmark: http://doi.ieeecomputersociety.org/10.1109/CBMS.2005.5318th IEEE Symposium on Computer-Based ...
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Lilla Boroczky, Philips Research USA
Luyin Zhao, Philips Research USA
K. P. Lee, Philips Research USA
In this paper, we propose a feature subset selection method based on Genetic Algorithms to improve the performance of false positive reduction in lung nodule CAD. It is coupled with a classifier based on support vector machines. The proposed approach determines automatically the optimal size of the feature set and chooses the most relevant features from a feature pool. Its performance was tested using a lung nodule database (66 true nodules and 123 false ones) acquired by multi-slice CT scans. From 23 features calculated for each detected structure, the suggested method determined 9 as the optimal feature subset size and selected the nine features. A support vector machine-based classifier trained with the optimal feature subset has resulted in 92.4% sensitivity and 85.4% specificity using leave-one-out cross validation. Experiments also showed significant improvement achieved by a system incorporating the proposed method over a system without it. It can be also applied to other machine learning problems: e.g. computer-aided diagnosis of lung nodules.
Citation:
Lilla Boroczky, Luyin Zhao, K. P. Lee, "Feature Subset Selection for Improving the Performance of False Positive Reduction in Lung Nodule CAD," cbms, pp.85-90, 18th IEEE Symposium on Computer-Based Medical Systems (CBMS'05), 2005
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