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Published in: Journal of Digital Imaging 1/2014

01-02-2014

Support Vector Machine Model for Diagnosing Pneumoconiosis Based on Wavelet Texture Features of Digital Chest Radiographs

Authors: Biyun Zhu, Hui Chen, Budong Chen, Yan Xu, Kuan Zhang

Published in: Journal of Imaging Informatics in Medicine | Issue 1/2014

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Abstract

This study aims to explore the classification ability of decision trees (DTs) and support vector machines (SVMs) to discriminate between the digital chest radiographs (DRs) of pneumoconiosis patients and control subjects. Twenty-eight wavelet-based energy texture features were calculated at the lung fields on DRs of 85 healthy controls and 40 patients with stage I and stage II pneumoconiosis. DTs with algorithm C5.0 and SVMs with four different kernels were trained by samples with two combinations of the texture features to classify a DR as of a healthy subject or of a patient with pneumoconiosis. All of the models were developed with fivefold cross-validation, and the final performances of each model were compared by the area under receiver operating characteristic (ROC) curve. For both SVM (with a radial basis function kernel) and DT (with algorithm C5.0), areas under ROC curves (AUCs) were 0.94 ± 0.02 and 0.86 ± 0.04 (P = 0.02) when using the full feature set and 0.95 ± 0.02 and 0.88 ± 0.04 (P = 0.05) when using the selected feature set, respectively. When built on the selected texture features, the SVM with a polynomial kernel showed a higher diagnostic performance with an AUC value of 0.97 ± 0.02 than SVMs with a linear kernel, a radial basis function kernel and a sigmoid kernel with AUC values of 0.96 ± 0.02 (P = 0.37), 0.95 ± 0.02 (P = 0.24), and 0.90 ± 0.03 (P = 0.01), respectively. The SVM model with a polynomial kernel built on the selected feature set showed the highest diagnostic performance among all tested models when using either all the wavelet texture features or the selected ones. The model has a good potential in diagnosing pneumoconiosis based on digital chest radiographs.
Literature
1.
go back to reference International Labor Organization (ILO): Guidelines for the use of the ILO international classification of radiographs of pneumoconiosis. Occupational Safety and Health Series, No. 22 (Rev.). International Labor Office, Geneva Switzerland, 1980. International Labor Organization (ILO): Guidelines for the use of the ILO international classification of radiographs of pneumoconiosis. Occupational Safety and Health Series, No. 22 (Rev.). International Labor Office, Geneva Switzerland, 1980.
2.
go back to reference Savol AM, Li CC, Hoy RJ: Computer-aided recognition of small rounded pneumoconiosis opacities in chest X-rays. IEEE Trans Pattern Anal Mach Intell 2:479–482, 1980CrossRef Savol AM, Li CC, Hoy RJ: Computer-aided recognition of small rounded pneumoconiosis opacities in chest X-rays. IEEE Trans Pattern Anal Mach Intell 2:479–482, 1980CrossRef
3.
go back to reference Hall EL, Crawford WO, Roberts FE: Computer classification of pneumoconiosis from radiographs of coal workers. IEEE Trans Biomed Eng 22:518–527, 1975PubMedCrossRef Hall EL, Crawford WO, Roberts FE: Computer classification of pneumoconiosis from radiographs of coal workers. IEEE Trans Biomed Eng 22:518–527, 1975PubMedCrossRef
4.
go back to reference Yu P, Xu H, Zhu Y, Yang C, Sun X, Zhao J, et al: An automatic computer-aided detection scheme for pneumoconiosis on digital chest radiographs. J Digit Imaging 24:382–393, 2011PubMedCentralPubMedCrossRef Yu P, Xu H, Zhu Y, Yang C, Sun X, Zhao J, et al: An automatic computer-aided detection scheme for pneumoconiosis on digital chest radiographs. J Digit Imaging 24:382–393, 2011PubMedCentralPubMedCrossRef
5.
go back to reference Xu H, Tao X, Sundararajan R, et al.: Computer aided detection for pneumoconiosis screening on digital chest radiographs. Proc. Third International Workshop on Pulmonary Image Analysis, 129–138, 2010. Xu H, Tao X, Sundararajan R, et al.: Computer aided detection for pneumoconiosis screening on digital chest radiographs. Proc. Third International Workshop on Pulmonary Image Analysis, 129–138, 2010.
6.
go back to reference Okumura E, Kawashita I, Ishida T: Computerized analysis of pneumoconiosis in digital chest radiography: effect of artificial neural network trained with power spectra. J Digit Imaging 24:1126–1132, 2011PubMedCentralPubMedCrossRef Okumura E, Kawashita I, Ishida T: Computerized analysis of pneumoconiosis in digital chest radiography: effect of artificial neural network trained with power spectra. J Digit Imaging 24:1126–1132, 2011PubMedCentralPubMedCrossRef
7.
go back to reference Cai C, Zhu B, Chen H: Computer-aided diagnosis for pneumoconiosis based on texture analysis on digital chest radiographs. Proceedings of International Conference on Electronic, Communication and Computer Science. Guilin, China, 2012 June 15–17. Cai C, Zhu B, Chen H: Computer-aided diagnosis for pneumoconiosis based on texture analysis on digital chest radiographs. Proceedings of International Conference on Electronic, Communication and Computer Science. Guilin, China, 2012 June 15–17.
8.
go back to reference Chen H, Zhang J, Xu Y, Chen B, Zhang K: Performance comparison of artificial neural network and logistic regression model for differentiating lung nodules on CT scans. Expert Syst Appl 39:11503–11509, 2012CrossRef Chen H, Zhang J, Xu Y, Chen B, Zhang K: Performance comparison of artificial neural network and logistic regression model for differentiating lung nodules on CT scans. Expert Syst Appl 39:11503–11509, 2012CrossRef
9.
go back to reference Zhu B, Chen H: Morphological reconstruction based segmentation of lung fields on digital radiographs. Proceedings of International Conference on Electronic, Communication and Computer Science. Guilin, China, 2012 June 15–17. Zhu B, Chen H: Morphological reconstruction based segmentation of lung fields on digital radiographs. Proceedings of International Conference on Electronic, Communication and Computer Science. Guilin, China, 2012 June 15–17.
10.
go back to reference Arivazhagan S, Ganesan L: Texture segmentation using wavelet transform. Pattern Recogn Lett 24:3197–3203, 2003CrossRef Arivazhagan S, Ganesan L: Texture segmentation using wavelet transform. Pattern Recogn Lett 24:3197–3203, 2003CrossRef
11.
go back to reference Kociołek M, Materka A, Strzelecki M, Szczypiński P: Discrete wavelet transform-derived features for digital image texture analysis. Proceedings of International Conference on Signals and Electronic Systems. Lodz, Poland, 2001 September 18–21. Kociołek M, Materka A, Strzelecki M, Szczypiński P: Discrete wavelet transform-derived features for digital image texture analysis. Proceedings of International Conference on Signals and Electronic Systems. Lodz, Poland, 2001 September 18–21.
12.
go back to reference Quinlan JR: Induction decision tree. Mach Learn 1:81–106, 1986 Quinlan JR: Induction decision tree. Mach Learn 1:81–106, 1986
13.
go back to reference Li C, Zhi X, Ma J, Cui Z, Zhu Z, Zhang C, et al: Performance comparison between logistic regression, decision trees, and multilayer perceptron in predicting peripheral neuropathy in type 2 diabetes mellitus. Chin Med J (Engl) 125:851–857, 2012 Li C, Zhi X, Ma J, Cui Z, Zhu Z, Zhang C, et al: Performance comparison between logistic regression, decision trees, and multilayer perceptron in predicting peripheral neuropathy in type 2 diabetes mellitus. Chin Med J (Engl) 125:851–857, 2012
14.
go back to reference Maimon O, Rokach L: Data Mining and Knowledge Discovery Handbook, 2nd edition. Springer, New York, 2010CrossRef Maimon O, Rokach L: Data Mining and Knowledge Discovery Handbook, 2nd edition. Springer, New York, 2010CrossRef
15.
go back to reference Zhu Y, Tan Y, Hua Y, Wang M, Zhang G, Zhang J: Feature selection and performance evaluation of support vector machine (SVM)-based classifier for differentiating benign and malignant pulmonary nodules by computed tomography. J Digit Imaging 23:51–65, 2010PubMedCentralPubMedCrossRef Zhu Y, Tan Y, Hua Y, Wang M, Zhang G, Zhang J: Feature selection and performance evaluation of support vector machine (SVM)-based classifier for differentiating benign and malignant pulmonary nodules by computed tomography. J Digit Imaging 23:51–65, 2010PubMedCentralPubMedCrossRef
16.
go back to reference Shawe-Taylor J, Cristianini N: Kernel Methods for Pattern Analysis. Cambridge University Press, Cambridge, 2004CrossRef Shawe-Taylor J, Cristianini N: Kernel Methods for Pattern Analysis. Cambridge University Press, Cambridge, 2004CrossRef
17.
go back to reference Olson DL, Delen D: Advanced Data Mining Techniques. Springer, LLC, Berlin, 2008 Olson DL, Delen D: Advanced Data Mining Techniques. Springer, LLC, Berlin, 2008
18.
go back to reference Kondo H, Zhao B, Mino M: Automated quantitative analysis for pneumoconiosis. Proceedings of International Symposium on Multispectral Image Processing. Wuhan, China, 1998 Oct 21–23. Kondo H, Zhao B, Mino M: Automated quantitative analysis for pneumoconiosis. Proceedings of International Symposium on Multispectral Image Processing. Wuhan, China, 1998 Oct 21–23.
19.
go back to reference Chen X, Toriwaki J, Hasegawa J: Automated classification of pneumoconiosis radiographs based on recognition of small rounded opacities. Syst Comput Jpn 21:33–44, 1990CrossRef Chen X, Toriwaki J, Hasegawa J: Automated classification of pneumoconiosis radiographs based on recognition of small rounded opacities. Syst Comput Jpn 21:33–44, 1990CrossRef
20.
go back to reference Murray V, Pattichis MS, Davis H, Barriga ES, Soliz P: Multiscale AM-FM analysis of pneumoconiosis x-ray images. Proceedings of IEEE International Conference on Image Processing. Kochi, India, 2009 Nov 7–10. Murray V, Pattichis MS, Davis H, Barriga ES, Soliz P: Multiscale AM-FM analysis of pneumoconiosis x-ray images. Proceedings of IEEE International Conference on Image Processing. Kochi, India, 2009 Nov 7–10.
21.
go back to reference Delen D, Walker G, Kadam A: Predicting breast cancer survivability: a comparison of three data mining methods. Artif Intell Med 34:113–127, 2005PubMedCrossRef Delen D, Walker G, Kadam A: Predicting breast cancer survivability: a comparison of three data mining methods. Artif Intell Med 34:113–127, 2005PubMedCrossRef
22.
go back to reference McLaren CE, Chen WP, Nie K, Su MY: Prediction of malignant breast lesions from MRI features: a comparison of artificial neural network and logistic regression techniques. Acad Radiol 16:842–851, 2009PubMedCentralPubMedCrossRef McLaren CE, Chen WP, Nie K, Su MY: Prediction of malignant breast lesions from MRI features: a comparison of artificial neural network and logistic regression techniques. Acad Radiol 16:842–851, 2009PubMedCentralPubMedCrossRef
23.
go back to reference Mohamed MM, Abdel-Galil TK, Salama MA, EI-Saadany EF, Kamel M, Fenster A, Downey DB, Rizkalla K: Prostate cancer diagnosis based on Gabor filter texture segmentation of ultrasound image. Proc IEEE Can Conf Electr Comput Eng 3:1485–1488, 2003 Mohamed MM, Abdel-Galil TK, Salama MA, EI-Saadany EF, Kamel M, Fenster A, Downey DB, Rizkalla K: Prostate cancer diagnosis based on Gabor filter texture segmentation of ultrasound image. Proc IEEE Can Conf Electr Comput Eng 3:1485–1488, 2003
24.
go back to reference Bárbara B, Pineda-Bautista JA, Carrasco-Ochoa J: Fco Martínez-Trinidad: General framework for class-specific feature selection. Expert Syst Appl 38:10018–10024, 2011CrossRef Bárbara B, Pineda-Bautista JA, Carrasco-Ochoa J: Fco Martínez-Trinidad: General framework for class-specific feature selection. Expert Syst Appl 38:10018–10024, 2011CrossRef
25.
go back to reference Hastie T, Tibshirani R, Friedman J: The Elements of Statistical Learning, 2nd edition. Springer, New York, 2009CrossRef Hastie T, Tibshirani R, Friedman J: The Elements of Statistical Learning, 2nd edition. Springer, New York, 2009CrossRef
26.
go back to reference Lim T, Loh W, Shih Y: A comparison of prediction accuracy, complexity, and training time of thirty-three old and new classification algorithms. Mach Learn 40:203–228, 2000CrossRef Lim T, Loh W, Shih Y: A comparison of prediction accuracy, complexity, and training time of thirty-three old and new classification algorithms. Mach Learn 40:203–228, 2000CrossRef
27.
go back to reference Elangovan M, Sugumaran V, Ramachandran KI, Ravikumar S: Effect of SVM kernel functions on classification of vibration signals of a single point cutting tool. Expert Syst Appl 38:15202–15207, 2011CrossRef Elangovan M, Sugumaran V, Ramachandran KI, Ravikumar S: Effect of SVM kernel functions on classification of vibration signals of a single point cutting tool. Expert Syst Appl 38:15202–15207, 2011CrossRef
28.
go back to reference Islam T, Rico-Ramirez MA, Han D, Srivastava PK: Artificial intelligence techniques for clutter identification with polarimetric radar signatures. Atmos Res 109:95–113, 2012CrossRef Islam T, Rico-Ramirez MA, Han D, Srivastava PK: Artificial intelligence techniques for clutter identification with polarimetric radar signatures. Atmos Res 109:95–113, 2012CrossRef
29.
go back to reference Marjanovic M, Kovacevic M, Bajat B, Vozenilek V: Landslide susceptibility assessment using SVM machine learning algorithm. Eng Geol 123:225–234, 2011CrossRef Marjanovic M, Kovacevic M, Bajat B, Vozenilek V: Landslide susceptibility assessment using SVM machine learning algorithm. Eng Geol 123:225–234, 2011CrossRef
30.
go back to reference Han J, Kamber M: Data Mining: Concepts and Techniques, 2nd edition. Elsevier, Maryland Heights, 2006 Han J, Kamber M: Data Mining: Concepts and Techniques, 2nd edition. Elsevier, Maryland Heights, 2006
31.
go back to reference Way TW, Sahiner B, Hadjiiski LM, Chan HP: Effect of finite sample size on feature selection and classification: a simulation study. Med Phys 37:907–920, 2010PubMedCrossRef Way TW, Sahiner B, Hadjiiski LM, Chan HP: Effect of finite sample size on feature selection and classification: a simulation study. Med Phys 37:907–920, 2010PubMedCrossRef
32.
go back to reference Sahiner B, Chan HP, Hadjiiski L: Classifier performance prediction for computer-aided diagnosis using a limited dataset. Med Phys 35:1559–1570, 2008PubMedCrossRef Sahiner B, Chan HP, Hadjiiski L: Classifier performance prediction for computer-aided diagnosis using a limited dataset. Med Phys 35:1559–1570, 2008PubMedCrossRef
Metadata
Title
Support Vector Machine Model for Diagnosing Pneumoconiosis Based on Wavelet Texture Features of Digital Chest Radiographs
Authors
Biyun Zhu
Hui Chen
Budong Chen
Yan Xu
Kuan Zhang
Publication date
01-02-2014
Publisher
Springer US
Published in
Journal of Imaging Informatics in Medicine / Issue 1/2014
Print ISSN: 2948-2925
Electronic ISSN: 2948-2933
DOI
https://doi.org/10.1007/s10278-013-9620-9

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