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Erschienen in: Journal of Digital Imaging 6/2011

01.12.2011

Computerized Analysis of Pneumoconiosis in Digital Chest Radiography: Effect of Artificial Neural Network Trained with Power Spectra

verfasst von: Eiichiro Okumura, Ikuo Kawashita, Takayuki Ishida

Erschienen in: Journal of Imaging Informatics in Medicine | Ausgabe 6/2011

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Abstract

It is difficult for radiologists to classify pneumoconiosis with small nodules on chest radiographs. Therefore, we have developed a computer-aided diagnosis (CAD) system based on the rule-based plus artificial neural network (ANN) method for distinction between normal and abnormal regions of interest (ROIs) selected from chest radiographs with and without pneumoconiosis. The image database consists of 11 normal and 12 abnormal chest radiographs. These abnormal cases included five silicoses, four asbestoses, and three other pneumoconioses. ROIs (matrix size, 32 × 32) were selected from normal and abnormal lungs. We obtained power spectra (PS) by Fourier transform for the frequency analysis. A rule-based method using PS values at 0.179 and 0.357 cycles per millimeter, corresponding to the spatial frequencies of nodular patterns, were employed for identification of obviously normal or obviously abnormal ROIs. Then, ANN was applied for classification of the remaining normal and abnormal ROIs, which were not classified as obviously abnormal or normal by the rule-based method. The classification performance was evaluated by the area under the receiver operating characteristic curve (Az value). The Az value was 0.972 ± 0.012 for the rule-based plus ANN method, which was larger than that of 0.961 ± 0.016 for the ANN method alone (P ≤ 0.15) and that of 0.873 for the rule-based method alone. We have developed a rule-based plus pattern recognition technique based on the ANN for classification of pneumoconiosis on chest radiography. Our CAD system based on PS would be useful to assist radiologists in the classification of pneumoconiosis.
Literatur
1.
Zurück zum Zitat Chong S, Lee KS, Chung MJ, Han J, Kwon OJ, Kim TS: Pneumoconiosis: comparison of imaging and pathologic finding. Radiographics 26(1):59–77, 2006PubMedCrossRef Chong S, Lee KS, Chung MJ, Han J, Kwon OJ, Kim TS: Pneumoconiosis: comparison of imaging and pathologic finding. Radiographics 26(1):59–77, 2006PubMedCrossRef
2.
Zurück zum Zitat International Labour Organization (ILO): Guidelines for the use ILO international classification of radiographs of pneumoconiosis. ILO, Genva, 1980 International Labour Organization (ILO): Guidelines for the use ILO international classification of radiographs of pneumoconiosis. ILO, Genva, 1980
3.
Zurück zum Zitat Muir DC, Bernholz CD, Morgan WK, Roos JO, Chan J, Maehle W, Julian JA, Sebestyen A: Classification of chest radiographs for pneumoconiosis: a comparison of two methods of reading. Br J Ind Med 49:869–871, 1992PubMed Muir DC, Bernholz CD, Morgan WK, Roos JO, Chan J, Maehle W, Julian JA, Sebestyen A: Classification of chest radiographs for pneumoconiosis: a comparison of two methods of reading. Br J Ind Med 49:869–871, 1992PubMed
4.
Zurück zum Zitat Turner AF, Kruger RP, Thompson WB: Automated computer screening of chest radiographs for pneumoconiosis. Invest Radiol 11(4):258–66, 1976PubMedCrossRef Turner AF, Kruger RP, Thompson WB: Automated computer screening of chest radiographs for pneumoconiosis. Invest Radiol 11(4):258–66, 1976PubMedCrossRef
5.
Zurück zum Zitat Ledley RS, Huang HK, Rotolo LS: A texture analysis method in classification of coal workers’ pneumoconiosis. Comput Biol Med 5(1–2):53–67, 1975PubMedCrossRef Ledley RS, Huang HK, Rotolo LS: A texture analysis method in classification of coal workers’ pneumoconiosis. Comput Biol Med 5(1–2):53–67, 1975PubMedCrossRef
6.
Zurück zum Zitat Hall EL, Crawford Jr, WO, Roberts FE: Computer classification of pneumoconiosis from radiographs of coal workers. IEEE Trans Biomed Eng 22(6):518–527, 1975PubMedCrossRef Hall EL, Crawford Jr, WO, Roberts FE: Computer classification of pneumoconiosis from radiographs of coal workers. IEEE Trans Biomed Eng 22(6):518–527, 1975PubMedCrossRef
7.
Zurück zum Zitat Katsuragawa S, Doi K, MacMahon H: Image feature analysis and computer-aided diagnosis in digital radiography: detection and characterization of interstitial lung disease in digital chest radiographs. Med Phys 15(3):311–319, 1988PubMedCrossRef Katsuragawa S, Doi K, MacMahon H: Image feature analysis and computer-aided diagnosis in digital radiography: detection and characterization of interstitial lung disease in digital chest radiographs. Med Phys 15(3):311–319, 1988PubMedCrossRef
8.
Zurück zum Zitat Katsuragawa S, Doi K, Nakamori N, MacMahon H: Image feature analysis and computer-aided diagnosis in digital radiography: effect of digital parameters on the accuracy of computerized analysis of interstitial disease in digital chest radiographs. Med Phys 17(1):72–78, 1990PubMedCrossRef Katsuragawa S, Doi K, Nakamori N, MacMahon H: Image feature analysis and computer-aided diagnosis in digital radiography: effect of digital parameters on the accuracy of computerized analysis of interstitial disease in digital chest radiographs. Med Phys 17(1):72–78, 1990PubMedCrossRef
9.
Zurück zum Zitat Katsuragawa S, Doi K, MacMahon H, Nakamori N, Sasaki Y, Fennessy JJ: Quantitative computer-aided analysis of lung texture in chest radiographs. Radiographics 10(2):257–269, 1990PubMed Katsuragawa S, Doi K, MacMahon H, Nakamori N, Sasaki Y, Fennessy JJ: Quantitative computer-aided analysis of lung texture in chest radiographs. Radiographics 10(2):257–269, 1990PubMed
10.
Zurück zum Zitat Chen X, Doi K, Katsuragawa S, MacMahon H: Automated selection of regions of interest for quantitative analysis of lung textures in digital chest radiographs. Med Phys 20(4):975–982, 1993PubMedCrossRef Chen X, Doi K, Katsuragawa S, MacMahon H: Automated selection of regions of interest for quantitative analysis of lung textures in digital chest radiographs. Med Phys 20(4):975–982, 1993PubMedCrossRef
11.
Zurück zum Zitat Morishita J, Doi K, Katsuragawa S, Monnier-Cholley L, MacMahon H: Computer-aided diagnosis for interstitial infiltrates in chest radiographs: optical-density dependence of texture measures. Med Phys 22(9):1515–1522, 1995PubMedCrossRef Morishita J, Doi K, Katsuragawa S, Monnier-Cholley L, MacMahon H: Computer-aided diagnosis for interstitial infiltrates in chest radiographs: optical-density dependence of texture measures. Med Phys 22(9):1515–1522, 1995PubMedCrossRef
12.
Zurück zum Zitat Monnier-Cholley L, MacMahon H, Katsuragawa S, Morishita J, Ishida T, Doi K: Computer-aided diagnosis for detection of interstitial opacities on chest radiographs: Evaluation by means of ROC analysis. AJR Am J Roentgenol 171(6):1651–1656, 1998PubMed Monnier-Cholley L, MacMahon H, Katsuragawa S, Morishita J, Ishida T, Doi K: Computer-aided diagnosis for detection of interstitial opacities on chest radiographs: Evaluation by means of ROC analysis. AJR Am J Roentgenol 171(6):1651–1656, 1998PubMed
13.
Zurück zum Zitat Katsuragawa S, Doi K, MacMahon H, Monnier-Cholley L, Morishita J, Ishida T: Quantitative analysis of geometric-pattern features of interstitial infiltrates in digital chest radiographs: preliminary results. J Digit Imaging 9(3):137–144, 1996PubMedCrossRef Katsuragawa S, Doi K, MacMahon H, Monnier-Cholley L, Morishita J, Ishida T: Quantitative analysis of geometric-pattern features of interstitial infiltrates in digital chest radiographs: preliminary results. J Digit Imaging 9(3):137–144, 1996PubMedCrossRef
14.
Zurück zum Zitat Ishida T, Katsuragawa S, Kobayashi T, MacMahon H, Doi K: Computerized analysis of interstitial disease in chest radiographs: Improvement of geometric-pattern feature analysis. Med Phys 24:915–924, 1997PubMedCrossRef Ishida T, Katsuragawa S, Kobayashi T, MacMahon H, Doi K: Computerized analysis of interstitial disease in chest radiographs: Improvement of geometric-pattern feature analysis. Med Phys 24:915–924, 1997PubMedCrossRef
15.
Zurück zum Zitat Katsuragawa S, Doi K, MacMahon M, Monnier-Cholley L, Ishida T, Kobayashi T: Classification of normal and abnormal lung with interstitial disease by rule-based method and artificial neural networks. J Digit Imaging 10(3):108–114, 1997PubMedCrossRef Katsuragawa S, Doi K, MacMahon M, Monnier-Cholley L, Ishida T, Kobayashi T: Classification of normal and abnormal lung with interstitial disease by rule-based method and artificial neural networks. J Digit Imaging 10(3):108–114, 1997PubMedCrossRef
16.
Zurück zum Zitat Shiraishi J, Li F, Doi K: Computer-aided diagnosis for improved detection of lung nodules by use of posterior-anterior and lateral chest radiographs. Acad Radiol 14:28–37, 2007PubMedCrossRef Shiraishi J, Li F, Doi K: Computer-aided diagnosis for improved detection of lung nodules by use of posterior-anterior and lateral chest radiographs. Acad Radiol 14:28–37, 2007PubMedCrossRef
17.
Zurück zum Zitat Shiraishi J, Li Q, Suzuki K, Engelmann R, Doi K: Computer-aided diagnostic scheme for the detection of lung nodules on chest radiographs: localized search method based on anatomical classification. Med Phys 33:2642–2653, 2006PubMedCrossRef Shiraishi J, Li Q, Suzuki K, Engelmann R, Doi K: Computer-aided diagnostic scheme for the detection of lung nodules on chest radiographs: localized search method based on anatomical classification. Med Phys 33:2642–2653, 2006PubMedCrossRef
18.
Zurück zum Zitat Suzuki K, Armato SG, Li F, Sone S, Doi K: Massive training artificial neural network (MTANN) for reduction of false positive in computerized detection of lung nodules in low-dose computed tomography. Med Phys 30:1602–1617, 2003PubMedCrossRef Suzuki K, Armato SG, Li F, Sone S, Doi K: Massive training artificial neural network (MTANN) for reduction of false positive in computerized detection of lung nodules in low-dose computed tomography. Med Phys 30:1602–1617, 2003PubMedCrossRef
19.
Zurück zum Zitat Suzuki K, Shiraishi J, Abe H, MacMahon H, Doi K: False-positive reduction in computer-aided diagnostic scheme for detecting nodules in chest radiographs by means of massive training artificial neural network. Acad Radiol 12:191–201, 2005PubMedCrossRef Suzuki K, Shiraishi J, Abe H, MacMahon H, Doi K: False-positive reduction in computer-aided diagnostic scheme for detecting nodules in chest radiographs by means of massive training artificial neural network. Acad Radiol 12:191–201, 2005PubMedCrossRef
20.
Zurück zum Zitat Suzuki K, Doi K: How can a massive training artificial neural network (MTANN) be trained with a small number of cases in the distinction between nodules and vessels in thoracic CT? Acad Radiol 12:1333–1341, 2005PubMedCrossRef Suzuki K, Doi K: How can a massive training artificial neural network (MTANN) be trained with a small number of cases in the distinction between nodules and vessels in thoracic CT? Acad Radiol 12:1333–1341, 2005PubMedCrossRef
21.
Zurück zum Zitat Nakamura K, Yoshida H, Engelmann R, MacMahon H, Katsuragawa S, Ishida T, Ashizawa K, Doi K: Computerized analysis of the likelihood of malignancy in solitary pulmonary nodules with use of artificial neural networks. Radiology 214:823–830, 2000PubMed Nakamura K, Yoshida H, Engelmann R, MacMahon H, Katsuragawa S, Ishida T, Ashizawa K, Doi K: Computerized analysis of the likelihood of malignancy in solitary pulmonary nodules with use of artificial neural networks. Radiology 214:823–830, 2000PubMed
22.
Zurück zum Zitat Aoyama M, Li Q, Katsuragawa S, MacMahon H, Doi K: Automated computerized scheme for distinction between benign and malignant solitary pulmonary nodules on chest images. Med Phys 29(5):701–708, 2002PubMedCrossRef Aoyama M, Li Q, Katsuragawa S, MacMahon H, Doi K: Automated computerized scheme for distinction between benign and malignant solitary pulmonary nodules on chest images. Med Phys 29(5):701–708, 2002PubMedCrossRef
23.
Zurück zum Zitat Suzuki K, Li F, Sone S, Doi K: Computer-aided diagnostic scheme for distinction between benign and malignant nodules in thoracic low-dose CT by use of massive training artificial neural network. IEEE Trans Med Imaging 24:1138–1150, 2005PubMedCrossRef Suzuki K, Li F, Sone S, Doi K: Computer-aided diagnostic scheme for distinction between benign and malignant nodules in thoracic low-dose CT by use of massive training artificial neural network. IEEE Trans Med Imaging 24:1138–1150, 2005PubMedCrossRef
24.
Zurück zum Zitat Wu Y, Doi K, Giger ML, Hikawa RM: Computerized detection of clustered microcalcifications in digital mammograms: Applications of artificial neural networks. Med Phys 19(3):555–560, 1992PubMedCrossRef Wu Y, Doi K, Giger ML, Hikawa RM: Computerized detection of clustered microcalcifications in digital mammograms: Applications of artificial neural networks. Med Phys 19(3):555–560, 1992PubMedCrossRef
Metadaten
Titel
Computerized Analysis of Pneumoconiosis in Digital Chest Radiography: Effect of Artificial Neural Network Trained with Power Spectra
verfasst von
Eiichiro Okumura
Ikuo Kawashita
Takayuki Ishida
Publikationsdatum
01.12.2011
Verlag
Springer-Verlag
Erschienen in
Journal of Imaging Informatics in Medicine / Ausgabe 6/2011
Print ISSN: 2948-2925
Elektronische ISSN: 2948-2933
DOI
https://doi.org/10.1007/s10278-010-9357-7

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