Title :
Feature Subset Selection for Improving the Performance of False Positive Reduction in Lung Nodule CAD
Author :
Böröczky, Lilla ; Zhao, Luyin ; Lee, K.P.
Author_Institution :
Philips Res. North America, Briarcliff Manor, NY
fDate :
7/1/2006 12:00:00 AM
Abstract :
We propose a feature subset selection method based on genetic algorithms to improve the performance of false positive reduction in lung nodule computer-aided detection (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 (52 true nodules and 443 false ones) acquired by multislice CT scans. From 23 features calculated for each detected structure, the suggested method determined ten to be the optimal feature subset size, and selected the most relevant ten features. A support vector machine classifier trained with the optimal feature subset resulted in 100% sensitivity and 56.4% specificity using an independent validation set. Experiments show significant improvement achieved by a system incorporating the proposed method over a system without it. This approach can be also applied to other machine learning problems; e.g. computer-aided diagnosis of lung nodules
Keywords :
computerised tomography; decision making; genetic algorithms; learning (artificial intelligence); lung; medical diagnostic computing; statistical analysis; support vector machines; tumours; CAD; false positive reduction; feature subset selection; genetic algorithms; lung nodule computer-aided detection; lung nodule database; medical decision making; multislice CT scans; supervised machine learning; support vector machines; Cancer; Computed tomography; Genetic algorithms; Lesions; Lungs; Machine learning; Spatial databases; Support vector machine classification; Support vector machines; Testing; Computer-aided analysis; genetic algorithms (GAs); medical decision making; supervised machine learning; support vector machines;
Journal_Title :
Information Technology in Biomedicine, IEEE Transactions on
DOI :
10.1109/TITB.2006.872063