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Erschienen in: Journal of Digital Imaging 1/2021

06.11.2020 | Original Paper

Computer-Aided Diagnosis Scheme for Distinguishing Between Benign and Malignant Masses on Breast DCE-MRI Images Using Deep Convolutional Neural Network with Bayesian Optimization

verfasst von: Akiyoshi Hizukuri, Ryohei Nakayama, Mayumi Nara, Megumi Suzuki, Kiyoshi Namba

Erschienen in: Journal of Imaging Informatics in Medicine | Ausgabe 1/2021

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Abstract

Although magnetic resonance imaging (MRI) has a higher sensitivity of early breast cancer than mammography, the specificity is lower. The purpose of this study was to develop a computer-aided diagnosis (CAD) scheme for distinguishing between benign and malignant breast masses on dynamic contrast material-enhanced MRI (DCE-MRI) by using a deep convolutional neural network (DCNN) with Bayesian optimization. Our database consisted of 56 DCE-MRI examinations for 56 patients, each of which contained five sequential phase images. It included 26 benign and 30 malignant masses. In this study, we first determined a baseline DCNN model from well-known DCNN models in terms of classification performance. The optimum architecture of the DCNN model was determined by changing the hyperparameters of the baseline DCNN model such as the number of layers, the filter size, and the number of filters using Bayesian optimization. As the input of the proposed DCNN model, rectangular regions of interest which include an entire mass were selected from each of DCE-MRI images by an experienced radiologist. Three-fold cross validation method was used for training and testing of the proposed DCNN model. The classification accuracy, the sensitivity, the specificity, the positive predictive value, and the negative predictive value were 92.9% (52/56), 93.3% (28/30), 92.3% (24/26), 93.3% (28/30), and 92.3% (24/26), respectively. These results were substantially greater than those with the conventional method based on handcrafted features and a classifier. The proposed DCNN model achieved high classification performance and would be useful in differential diagnoses of masses in breast DCE-MRI images as a diagnostic aid.
Literatur
1.
Zurück zum Zitat Siegel RL, Miller KD, Jemal A, et al: Cancer statistics, 2017. CA: a cancer journal for clinicians 2017; 67(1): 7–30 Siegel RL, Miller KD, Jemal A, et al: Cancer statistics, 2017. CA: a cancer journal for clinicians 2017; 67(1): 7–30
2.
Zurück zum Zitat Reynolds HE, Jackson VP: Self-referred mammography patients: analysis of patients' characteristics. American Journal of Roentgenology 1991; 157: 481-484CrossRef Reynolds HE, Jackson VP: Self-referred mammography patients: analysis of patients' characteristics. American Journal of Roentgenology 1991; 157: 481-484CrossRef
3.
Zurück zum Zitat Kuhl CK, Schild HH: Dynamic image interpretation of MRI of the breast. Journal of Magnetic Resonance Imaging 2000; 12(6): 965-974CrossRef Kuhl CK, Schild HH: Dynamic image interpretation of MRI of the breast. Journal of Magnetic Resonance Imaging 2000; 12(6): 965-974CrossRef
4.
Zurück zum Zitat Gubern-Mérida A, Martí R, Melendez J, Hauth JL, Mann RM, Karssemeijer N, Platel B, et al: Automated localization of breast cancer in DCE-MRI. Medical image analysis 2015; 20(1): 265-274CrossRef Gubern-Mérida A, Martí R, Melendez J, Hauth JL, Mann RM, Karssemeijer N, Platel B, et al: Automated localization of breast cancer in DCE-MRI. Medical image analysis 2015; 20(1): 265-274CrossRef
5.
Zurück zum Zitat Leach MO, Boggis CR, Dixon AK, et al: Screening with magnetic resonance imaging and mammography of a UK population at high familial risk of breast cancer: a prospective multicentre cohort study (MARIBS), LANCET 2005; 365: 1769-1778CrossRef Leach MO, Boggis CR, Dixon AK, et al: Screening with magnetic resonance imaging and mammography of a UK population at high familial risk of breast cancer: a prospective multicentre cohort study (MARIBS), LANCET 2005; 365: 1769-1778CrossRef
6.
Zurück zum Zitat Peters NH, Borel Rinkes IH, Zuithoff NP, Mali WP, Moons KG, Peeters PH, et al: Meta-analysis of MR imaging in the diagnosis of breast lesions. Radiology 2008; 246(1): 116-124CrossRef Peters NH, Borel Rinkes IH, Zuithoff NP, Mali WP, Moons KG, Peeters PH, et al: Meta-analysis of MR imaging in the diagnosis of breast lesions. Radiology 2008; 246(1): 116-124CrossRef
7.
Zurück zum Zitat Sardanelli F, Podo F, D'Agnolo G, et al: Multicenter comparative multimodality surveillance of women at genetic-familial high risk for breast cancer (HIBCRIT study): interim results. Radiology 2007; 242(3): 698-715CrossRef Sardanelli F, Podo F, D'Agnolo G, et al: Multicenter comparative multimodality surveillance of women at genetic-familial high risk for breast cancer (HIBCRIT study): interim results. Radiology 2007; 242(3): 698-715CrossRef
8.
Zurück zum Zitat Kuhl CK, Schrading S, Leutner CC, et al: Mammography, breast ultrasound, and magnetic resonance imaging for surveillance of women at high familial risk for breast cancer. Journal of Clinical Oncology 2005; 23: 8469–8476CrossRef Kuhl CK, Schrading S, Leutner CC, et al: Mammography, breast ultrasound, and magnetic resonance imaging for surveillance of women at high familial risk for breast cancer. Journal of Clinical Oncology 2005; 23: 8469–8476CrossRef
9.
Zurück zum Zitat Pisano ED, Hendrick RE, Yaffe MJ, Baum JK, Acharyya S, Cormack JB, D'Orsi CJ, et al: Diagnostic accuracy of digital versus film mammography: exploratory analysis of selected population subgroups in DMIST. Radiology 2008; 246(2): 376-383CrossRef Pisano ED, Hendrick RE, Yaffe MJ, Baum JK, Acharyya S, Cormack JB, D'Orsi CJ, et al: Diagnostic accuracy of digital versus film mammography: exploratory analysis of selected population subgroups in DMIST. Radiology 2008; 246(2): 376-383CrossRef
10.
Zurück zum Zitat Nie K, Chen JH, Yu HJ, Chu Y, Nalcioglu O, Su MY: Quantitative analysis of lesion morphology and texture features for diagnostic prediction in breast MRI. Academic Radiology 2008; 15(12): 1513–1525CrossRef Nie K, Chen JH, Yu HJ, Chu Y, Nalcioglu O, Su MY: Quantitative analysis of lesion morphology and texture features for diagnostic prediction in breast MRI. Academic Radiology 2008; 15(12): 1513–1525CrossRef
11.
Zurück zum Zitat Siegmann KC, Kra¨mer B, Claussen C, et al: Current status and new developments in breast MRI. Breast Care (Basel) 2011; 6(2): 87–92CrossRef Siegmann KC, Kra¨mer B, Claussen C, et al: Current status and new developments in breast MRI. Breast Care (Basel) 2011; 6(2): 87–92CrossRef
12.
Zurück zum Zitat Fusco R, Sansone M, Filice S, Carone G, Amato DM, Sansone C, Petrillo A, et al: Pattern recognition approaches for breast cancer DCE-MRI classification: a systematic review. Journal of medical and biological engineering 2016; 36(4): 449-459CrossRef Fusco R, Sansone M, Filice S, Carone G, Amato DM, Sansone C, Petrillo A, et al: Pattern recognition approaches for breast cancer DCE-MRI classification: a systematic review. Journal of medical and biological engineering 2016; 36(4): 449-459CrossRef
13.
Zurück zum Zitat Berg WA, Blume JD, Cormack JB, et al.: Combined screening with ultrasound and mammography vs mammography alone in women at elevated risk of breast cancer. The Journal of the American Medical Association 2008; 299(18): 2151-2163CrossRef Berg WA, Blume JD, Cormack JB, et al.: Combined screening with ultrasound and mammography vs mammography alone in women at elevated risk of breast cancer. The Journal of the American Medical Association 2008; 299(18): 2151-2163CrossRef
14.
Zurück zum Zitat Chae EY, Kim HH, Cha JH, Shin HJ, Kim H, et al: Evaluation of Screening Whole‐Breast Sonography as a Supplemental Tool in Conjunction with Mammography in Women With Dense Breasts. Journal of Ultrasound in Medicine 2013; 32(9): 1573-1578CrossRef Chae EY, Kim HH, Cha JH, Shin HJ, Kim H, et al: Evaluation of Screening Whole‐Breast Sonography as a Supplemental Tool in Conjunction with Mammography in Women With Dense Breasts. Journal of Ultrasound in Medicine 2013; 32(9): 1573-1578CrossRef
15.
Zurück zum Zitat Doi K, MacMahon H, Katsuragawa S, Nishikawa RM, Jiang Y, et al: Computer-aided diagnosis in radiology: potential and pitfalls. European journal of Radiology 1999; 31(2): 97–109 Doi K, MacMahon H, Katsuragawa S, Nishikawa RM, Jiang Y, et al: Computer-aided diagnosis in radiology: potential and pitfalls. European journal of Radiology 1999; 31(2): 97–109
16.
Zurück zum Zitat Doi K: Computer-aided diagnosis in medical imaging: historical review, current status and future potential. Computerized medical imaging and graphics 2007; 31(4–5): 198–211 Doi K: Computer-aided diagnosis in medical imaging: historical review, current status and future potential. Computerized medical imaging and graphics 2007; 31(4–5): 198–211
17.
Zurück zum Zitat Hizukuri A, Nakayama R, Kashikura Y, Takase H, Kawanaka H, Ogawa T, Tsuruoka S, et al: Computerized determination scheme for histological classification of breast mass using objective features corresponding to clinicians’ subjective impressions on ultrasonographic images. Journal of digital imaging 2013; 26(5): 958-970CrossRef Hizukuri A, Nakayama R, Kashikura Y, Takase H, Kawanaka H, Ogawa T, Tsuruoka S, et al: Computerized determination scheme for histological classification of breast mass using objective features corresponding to clinicians’ subjective impressions on ultrasonographic images. Journal of digital imaging 2013; 26(5): 958-970CrossRef
18.
Zurück zum Zitat Hizukuri A, Nakayama R: Computer-Aided Diagnosis Scheme for Determining Histological Classification of Breast Lesions on Ultrasonographic Images Using Convolutional Neural Network. Diagnostics 2018; 8(3): 1-9CrossRef Hizukuri A, Nakayama R: Computer-Aided Diagnosis Scheme for Determining Histological Classification of Breast Lesions on Ultrasonographic Images Using Convolutional Neural Network. Diagnostics 2018; 8(3): 1-9CrossRef
19.
Zurück zum Zitat Honda E, Nakayama R, Koyama H, Yamashita A, et al: Computer-aided diagnosis scheme for distinguishing between benign and malignant masses in breast DCE-MRI. Journal of digital imaging 2016; 29(3): 388-393CrossRef Honda E, Nakayama R, Koyama H, Yamashita A, et al: Computer-aided diagnosis scheme for distinguishing between benign and malignant masses in breast DCE-MRI. Journal of digital imaging 2016; 29(3): 388-393CrossRef
20.
Zurück zum Zitat Krizhevsky A, Sutskever I, Hinton GE: Imagenet classification with deep convolutional neural networks. In Advances in Neural Information Processing Systems 2012; 1097–1105 Krizhevsky A, Sutskever I, Hinton GE: Imagenet classification with deep convolutional neural networks. In Advances in Neural Information Processing Systems 2012; 1097–1105
21.
Zurück zum Zitat Zeiler MD, Fergus R: Visualizing and understanding convolutional networks. In European conference on computer vision, Springer, Cham, 2014; 818-833 Zeiler MD, Fergus R: Visualizing and understanding convolutional networks. In European conference on computer vision, Springer, Cham, 2014; 818-833
22.
Zurück zum Zitat Simonyan K, Zisserman A: Very deep convolutional networks for large-scale image recognition. Int. Conf. on Learning Representations 2015; San Diego, CA Simonyan K, Zisserman A: Very deep convolutional networks for large-scale image recognition. Int. Conf. on Learning Representations 2015; San Diego, CA
23.
Zurück zum Zitat Christian S, et.al.: Going deeper with convolutions, Proceedings of the IEEE conference on computer vision and pattern recognition. 2015 Christian S, et.al.: Going deeper with convolutions, Proceedings of the IEEE conference on computer vision and pattern recognition. 2015
24.
Zurück zum Zitat Russakovsky O, Deng J, Su H, Krause J, Satheesh S, Ma S, Huang Z, Karpathy A, Khosla A, Bernstein M, Berg AC, Fei-Fei L, et al: ImageNet Large Scale Visual Recognition Challenge, International Journal of Computer Vision, 2015; 115(3); 211-252CrossRef Russakovsky O, Deng J, Su H, Krause J, Satheesh S, Ma S, Huang Z, Karpathy A, Khosla A, Bernstein M, Berg AC, Fei-Fei L, et al: ImageNet Large Scale Visual Recognition Challenge, International Journal of Computer Vision, 2015; 115(3); 211-252CrossRef
25.
Zurück zum Zitat LeCun Y, Bengio Y, Hinton G, et al: Deep learning. nature 2015; 521(7553): 436PubMed LeCun Y, Bengio Y, Hinton G, et al: Deep learning. nature 2015; 521(7553): 436PubMed
26.
Zurück zum Zitat Litjens G, Kooi T, Bejnordi BE, Setio AAA, Ciompi F, Ghafoorian M, Sánchez CI, et al: A survey on deep learning in medical image analysis, Medical image analysis 2017; 42: 60-88CrossRef Litjens G, Kooi T, Bejnordi BE, Setio AAA, Ciompi F, Ghafoorian M, Sánchez CI, et al: A survey on deep learning in medical image analysis, Medical image analysis 2017; 42: 60-88CrossRef
27.
Zurück zum Zitat Sahiner B, Pezeshk A, Hadjiiski LM, Wang X, Drukker K, Cha KH, Summers RM, Giger ML, et al: Deep learning in medical imaging and radiation therapy, Medical Physics 2019; 46(1) Sahiner B, Pezeshk A, Hadjiiski LM, Wang X, Drukker K, Cha KH, Summers RM, Giger ML, et al: Deep learning in medical imaging and radiation therapy, Medical Physics 2019; 46(1)
28.
Zurück zum Zitat Bayramoglu N, Juho K, Janne H, et al: Deep learning for magnification independent breast cancer histopathology image classification, 23rd International conference on pattern recognition (ICPR), 2016; 2440–2445 Bayramoglu N, Juho K, Janne H, et al: Deep learning for magnification independent breast cancer histopathology image classification, 23rd International conference on pattern recognition (ICPR), 2016; 2440–2445
29.
Zurück zum Zitat Jadoon MM, Zhang Q, Haq IU, Butt S, Jadoon A, et al: Three-class mammogram classification based on descriptive CNN features, BioMed Research International, 2017, 1–11 Jadoon MM, Zhang Q, Haq IU, Butt S, Jadoon A, et al: Three-class mammogram classification based on descriptive CNN features, BioMed Research International, 2017, 1–11
30.
Zurück zum Zitat Li Q, Cai W, Wang X, Zhou Y, Feng DD, Chen M, et al: Medical image classification with convolutional neural network, 13th International Conference on Control Automation Robotics & Vision (ICARCV), 2014, 844–848 Li Q, Cai W, Wang X, Zhou Y, Feng DD, Chen M, et al: Medical image classification with convolutional neural network, 13th International Conference on Control Automation Robotics & Vision (ICARCV), 2014, 844–848
31.
Zurück zum Zitat Nejad EM, Affendey LS, Latip RB, Bin Ishak, et al: Classification of histopathology images of breast into benign and malignant using a single-layer convolutional neural network, Proceedings of the International Conference on Imaging, Signal Processing and Communication, 2017, 50–53 Nejad EM, Affendey LS, Latip RB, Bin Ishak, et al: Classification of histopathology images of breast into benign and malignant using a single-layer convolutional neural network, Proceedings of the International Conference on Imaging, Signal Processing and Communication, 2017, 50–53
32.
Zurück zum Zitat Rasmussen CE: Gaussian processes in machine learning. In Summer School on Machine Learning, Springer, Berlin, Heidelberg, 2003, 63-71 Rasmussen CE: Gaussian processes in machine learning. In Summer School on Machine Learning, Springer, Berlin, Heidelberg, 2003, 63-71
33.
Zurück zum Zitat Le HT, Phung SL, Bouzerdoum A, Tivive FHC, et al: Human motion classification with micro-doppler radar and bayesian-optimized convolutional neural networks. In 2018 IEEE International Conference on Acoustics, Speech and Signal Processing (ICASSP) , 2018, 2961–2965 Le HT, Phung SL, Bouzerdoum A, Tivive FHC, et al: Human motion classification with micro-doppler radar and bayesian-optimized convolutional neural networks. In 2018 IEEE International Conference on Acoustics, Speech and Signal Processing (ICASSP) , 2018, 2961–2965
34.
Zurück zum Zitat Snoek J, Larochelle H, Adams RP: Practical Bayesian optimization of machine learning algorithms. In Advances in Neural Information Processing Systems, 2012, 2951–2959 Snoek J, Larochelle H, Adams RP: Practical Bayesian optimization of machine learning algorithms. In Advances in Neural Information Processing Systems, 2012, 2951–2959
35.
Zurück zum Zitat Dernoncourt F, Lee JY: Optimizing neural network hyperparameters with Gaussian processes for dialog act classification. In 2016 IEEE Spoken Language Technology Workshop (SLT), 2016, 406–413 Dernoncourt F, Lee JY: Optimizing neural network hyperparameters with Gaussian processes for dialog act classification. In 2016 IEEE Spoken Language Technology Workshop (SLT), 2016, 406–413
36.
Zurück zum Zitat Metz CE: ROC methodology in radiologic imaging. Investigative Radiology 1986; 21: 720–733CrossRef Metz CE: ROC methodology in radiologic imaging. Investigative Radiology 1986; 21: 720–733CrossRef
37.
Zurück zum Zitat Peng Y, Jiang Y, Antic T, Giger ML, Eggener SE, Oto A, et al: Validation of quantitative analysis of multiparametric prostate MR images for prostate cancer detection and aggressiveness assessment: a cross-imager study. Radiology 2014; 271(2): 461-471CrossRef Peng Y, Jiang Y, Antic T, Giger ML, Eggener SE, Oto A, et al: Validation of quantitative analysis of multiparametric prostate MR images for prostate cancer detection and aggressiveness assessment: a cross-imager study. Radiology 2014; 271(2): 461-471CrossRef
38.
Zurück zum Zitat Cireşan DC, Meier U, Gambardella LM, Schmidhuber J, et al: Deep, big, simple neuralnets for handwritten digit recognition. Neural computation 2010; 22(12): 3207-3220 Cireşan DC, Meier U, Gambardella LM, Schmidhuber J, et al: Deep, big, simple neuralnets for handwritten digit recognition. Neural computation 2010; 22(12): 3207-3220
39.
Zurück zum Zitat Langlotz CP: Fundamental measures of diagnostic examination performance: Usefulness for clinicaldecision making and research. Radiology 2003; 228: 3–9CrossRef Langlotz CP: Fundamental measures of diagnostic examination performance: Usefulness for clinicaldecision making and research. Radiology 2003; 228: 3–9CrossRef
40.
Zurück zum Zitat Otsu N: A Threshold Selection Method from Gray-Level Histograms. IEEE Transactions on Systems, Man, and Cybernetics 1979; 9(1): 62–66CrossRef Otsu N: A Threshold Selection Method from Gray-Level Histograms. IEEE Transactions on Systems, Man, and Cybernetics 1979; 9(1): 62–66CrossRef
41.
Zurück zum Zitat Nakayama R, Uchiyama Y, Watanabe R, Katsuragawa S, Namba K, Doi K, et al: Computer‐aided diagnosis scheme for histological classification of clustered microcalcifications on magnification mammograms. Medical physics 2004; 31(4): 789–799 Nakayama R, Uchiyama Y, Watanabe R, Katsuragawa S, Namba K, Doi K, et al: Computer‐aided diagnosis scheme for histological classification of clustered microcalcifications on magnification mammograms. Medical physics 2004; 31(4): 789–799
42.
Zurück zum Zitat Nakayama R, Watanabe R, Namba K, Takeda K, Yamamoto K, Katsuragawa S, Doi K, et al: Computer-aided diagnosis scheme for identifying histological classification of clustered microcalcifications by use of follow-up magnification mammograms. Academic radiology 2006; 13(10): 1219–1228 Nakayama R, Watanabe R, Namba K, Takeda K, Yamamoto K, Katsuragawa S, Doi K, et al: Computer-aided diagnosis scheme for identifying histological classification of clustered microcalcifications by use of follow-up magnification mammograms. Academic radiology 2006; 13(10): 1219–1228
Metadaten
Titel
Computer-Aided Diagnosis Scheme for Distinguishing Between Benign and Malignant Masses on Breast DCE-MRI Images Using Deep Convolutional Neural Network with Bayesian Optimization
verfasst von
Akiyoshi Hizukuri
Ryohei Nakayama
Mayumi Nara
Megumi Suzuki
Kiyoshi Namba
Publikationsdatum
06.11.2020
Verlag
Springer International Publishing
Erschienen in
Journal of Imaging Informatics in Medicine / Ausgabe 1/2021
Print ISSN: 2948-2925
Elektronische ISSN: 2948-2933
DOI
https://doi.org/10.1007/s10278-020-00394-2

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