Literature DB >> 16871718

Feature subset selection for improving the performance of false positive reduction in lung nodule CAD.

Lilla Böröczky1, Luyin Zhao, K P Lee.   

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.

Mesh:

Year:  2006        PMID: 16871718     DOI: 10.1109/titb.2006.872063

Source DB:  PubMed          Journal:  IEEE Trans Inf Technol Biomed        ISSN: 1089-7771


  13 in total

Review 1.  Recent progress in computer-aided diagnosis of lung nodules on thin-section CT.

Authors:  Qiang Li
Journal:  Comput Med Imaging Graph       Date:  2007-03-21       Impact factor: 4.790

2.  Training neural network classifiers for medical decision making: the effects of imbalanced datasets on classification performance.

Authors:  Maciej A Mazurowski; Piotr A Habas; Jacek M Zurada; Joseph Y Lo; Jay A Baker; Georgia D Tourassi
Journal:  Neural Netw       Date:  2007-12-27

Review 3.  Computer-aided diagnosis of lung cancer and pulmonary embolism in computed tomography-a review.

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Journal:  Acad Radiol       Date:  2008-05       Impact factor: 3.173

4.  3D deep learning for detecting pulmonary nodules in CT scans.

Authors:  Ross Gruetzemacher; Ashish Gupta; David Paradice
Journal:  J Am Med Inform Assoc       Date:  2018-10-01       Impact factor: 4.497

5.  Max-AUC feature selection in computer-aided detection of polyps in CT colonography.

Authors:  Jian-Wu Xu; Kenji Suzuki
Journal:  IEEE J Biomed Health Inform       Date:  2014-03       Impact factor: 5.772

6.  Learning with distribution of optimized features for recognizing common CT imaging signs of lung diseases.

Authors:  Ling Ma; Xiabi Liu; Baowei Fei
Journal:  Phys Med Biol       Date:  2016-12-29       Impact factor: 3.609

Review 7.  Computer-assisted detection of infectious lung diseases: a review.

Authors:  Ulaş Bağcı; Mike Bray; Jesus Caban; Jianhua Yao; Daniel J Mollura
Journal:  Comput Med Imaging Graph       Date:  2011-07-01       Impact factor: 4.790

8.  Automated detection of sclerotic metastases in the thoracolumbar spine at CT.

Authors:  Joseph E Burns; Jianhua Yao; Tatjana S Wiese; Hector E Muñoz; Elizabeth C Jones; Ronald M Summers
Journal:  Radiology       Date:  2013-02-28       Impact factor: 11.105

9.  Computer-aided detection of lung nodules on multidetector row computed tomography using three-dimensional analysis of nodule candidates and their surroundings.

Authors:  Sumiaki Matsumoto; Yoshiharu Ohno; Hitoshi Yamagata; Daisuke Takenaka; Kazuro Sugimura
Journal:  Radiat Med       Date:  2008-11-22

10.  Pixel-based machine learning in medical imaging.

Authors:  Kenji Suzuki
Journal:  Int J Biomed Imaging       Date:  2012-02-28
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