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Erschienen in: Cognitive Neurodynamics 4/2020

11.04.2020 | Research Article

Detecting prostate cancer using deep learning convolution neural network with transfer learning approach

verfasst von: Adeel Ahmed Abbasi, Lal Hussain, Imtiaz Ahmed Awan, Imran Abbasi, Abdul Majid, Malik Sajjad Ahmed Nadeem, Quratul-Ain Chaudhary

Erschienen in: Cognitive Neurodynamics | Ausgabe 4/2020

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Abstract

Prostate Cancer in men has become one of the most diagnosed cancer and also one of the leading causes of death in United States of America. Radiologists cannot detect prostate cancer properly because of complexity in masses. In recent past, many prostate cancer detection techniques were developed but these could not diagnose cancer efficiently. In this research work, robust deep learning convolutional neural network (CNN) is employed, using transfer learning approach. Results are compared with various machine learning strategies (Decision Tree, SVM different kernels, Bayes). Cancer MRI database are used to train GoogleNet model and to train Machine Learning classifiers, various features such as Morphological, Entropy based, Texture, SIFT (Scale Invariant Feature Transform), and Elliptic Fourier Descriptors are extracted. For the purpose of performance evaluation, various performance measures such as specificity, sensitivity, Positive predictive value, negative predictive value, false positive rate and receive operating curve are calculated. The maximum performance was found with CNN model (GoogleNet), using Transfer learning approach. We have obtained reasonably good results with various Machine Learning Classifiers such as Decision Tree, Support Vector Machine RBF kernel and Bayes, however outstanding results were obtained by using deep learning technique.

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Literatur
Zurück zum Zitat Akin O, Sala E, Moskowitz CS, Kuroiwa K, Ishill NM, Pucar D, Scardino PT, Hricak H (2006) Transition zone prostate cancers: features, detection, localization, and staging at endorectal MR imaging. Radiology 239:784–792PubMed Akin O, Sala E, Moskowitz CS, Kuroiwa K, Ishill NM, Pucar D, Scardino PT, Hricak H (2006) Transition zone prostate cancers: features, detection, localization, and staging at endorectal MR imaging. Radiology 239:784–792PubMed
Zurück zum Zitat Asvadi NH, Afshari Mirak S, Mohammadian Bajgiran A, Khoshnoodi P, Wibulpolprasert P, Margolis D, Sisk A, Reiter RE, Raman SS (2018) 3T multiparametric MR imaging, PIRADSv2-based detection of index prostate cancer lesions in the transition zone and the peripheral zone using whole mount histopathology as reference standard. Abdom Radiol 43:3117–3124 Asvadi NH, Afshari Mirak S, Mohammadian Bajgiran A, Khoshnoodi P, Wibulpolprasert P, Margolis D, Sisk A, Reiter RE, Raman SS (2018) 3T multiparametric MR imaging, PIRADSv2-based detection of index prostate cancer lesions in the transition zone and the peripheral zone using whole mount histopathology as reference standard. Abdom Radiol 43:3117–3124
Zurück zum Zitat Bengio Y (2013) Deep learning of representations: looking forward. In: Lecture notes in computer science (including its subseries lecture notes in artificial intelligence and lecture notes in bioinformatics), 7978 LNAI, pp 1–37 Bengio Y (2013) Deep learning of representations: looking forward. In: Lecture notes in computer science (including its subseries lecture notes in artificial intelligence and lecture notes in bioinformatics), 7978 LNAI, pp 1–37
Zurück zum Zitat Bengio Y, Courville AC, Vincent P (2012) Unsupervised feature learning and deep learning: A review and new perspectives. CoRR. arxiv:1206.5538 Bengio Y, Courville AC, Vincent P (2012) Unsupervised feature learning and deep learning: A review and new perspectives. CoRR. arxiv:​1206.​5538
Zurück zum Zitat Bonzon P (2017) Towards neuro-inspired symbolic models of cognition: linking neural dynamics to behaviors through asynchronous communications. Cogn Neurodyn 11:327–353PubMedPubMedCentral Bonzon P (2017) Towards neuro-inspired symbolic models of cognition: linking neural dynamics to behaviors through asynchronous communications. Cogn Neurodyn 11:327–353PubMedPubMedCentral
Zurück zum Zitat Cameron A, Modhafar A, Khalvati F, Lui D, Shafiee MJ, Wong A, Haider M (2014) Multiparametric MRI prostate cancer analysis via a hybrid morphological-textural model. In: Conference proceedings: annual international conference of the IEEE engineering in medicine and biology society. IEEE engineering in medicine and biology society. Conference 2014, pp 3357–3360 Cameron A, Modhafar A, Khalvati F, Lui D, Shafiee MJ, Wong A, Haider M (2014) Multiparametric MRI prostate cancer analysis via a hybrid morphological-textural model. In: Conference proceedings: annual international conference of the IEEE engineering in medicine and biology society. IEEE engineering in medicine and biology society. Conference 2014, pp 3357–3360
Zurück zum Zitat Chen W, Zheng R, Baade PD, Zhang S, Zeng H, Bray F, Jemal A, Yu XQ, He J (2016) Cancer statistics in China. CA Cancer J Clin 66:115–132PubMed Chen W, Zheng R, Baade PD, Zhang S, Zeng H, Bray F, Jemal A, Yu XQ, He J (2016) Cancer statistics in China. CA Cancer J Clin 66:115–132PubMed
Zurück zum Zitat Chesnais AL, Niaf E, Bratan F, Mège-Lechevallier F, Roche S, Rabilloud M, Colombel M, Rouvière O (2013) Differentiation of transitional zone prostate cancer from benign hyperplasia nodules: evaluation of discriminant criteria at multiparametric MRI. Clin Radiol 68:e323–e330PubMed Chesnais AL, Niaf E, Bratan F, Mège-Lechevallier F, Roche S, Rabilloud M, Colombel M, Rouvière O (2013) Differentiation of transitional zone prostate cancer from benign hyperplasia nodules: evaluation of discriminant criteria at multiparametric MRI. Clin Radiol 68:e323–e330PubMed
Zurück zum Zitat Chou R, Croswell JM, Dana T, Bougatsos C, Blazina I, Fu R (2011) Review annals of internal medicine screening for prostate cancer: a review of the evidence for the U.S. preventive services task force. Ann Intern Med 155:375–386PubMed Chou R, Croswell JM, Dana T, Bougatsos C, Blazina I, Fu R (2011) Review annals of internal medicine screening for prostate cancer: a review of the evidence for the U.S. preventive services task force. Ann Intern Med 155:375–386PubMed
Zurück zum Zitat Costa DN, Pedrosa I, Donato F, Roehrborn CG, Rofsky NM (2015) MR imaging-transrectal US fusion for targeted prostate biopsies: implications for diagnosis and clinical management. RadioGraphics 35:696–708PubMed Costa DN, Pedrosa I, Donato F, Roehrborn CG, Rofsky NM (2015) MR imaging-transrectal US fusion for targeted prostate biopsies: implications for diagnosis and clinical management. RadioGraphics 35:696–708PubMed
Zurück zum Zitat Doyle S, Madabhushi A, Feldman M, Tomaszeweski J (2006) A boosting cascade for automated detection of prostate cancer from digitized histology. In: Medical image computing and computer-assisted intervention—MICCAI 2006, Pt 2 4191, pp 504–511 Doyle S, Madabhushi A, Feldman M, Tomaszeweski J (2006) A boosting cascade for automated detection of prostate cancer from digitized histology. In: Medical image computing and computer-assisted intervention—MICCAI 2006, Pt 2 4191, pp 504–511
Zurück zum Zitat Eggener SE, Badani K, Barocas DA et al (2015) Gleason 6 prostate cancer: translating biology into population health. J Urol 194:626–634PubMedPubMedCentral Eggener SE, Badani K, Barocas DA et al (2015) Gleason 6 prostate cancer: translating biology into population health. J Urol 194:626–634PubMedPubMedCentral
Zurück zum Zitat Eigen D, Puhrsch C, Fergus R (2014) Depth map prediction from a single image using a multi-scale deep network. In: NIPS, pp 1–9 Eigen D, Puhrsch C, Fergus R (2014) Depth map prediction from a single image using a multi-scale deep network. In: NIPS, pp 1–9
Zurück zum Zitat Fan Y, Shen D, Gur RC, Gur RE, Davatzikos C (2007) COMPARE: classification of morphological patterns using adaptive regional elements. IEEE Trans Med Imaging 26:93–105PubMed Fan Y, Shen D, Gur RC, Gur RE, Davatzikos C (2007) COMPARE: classification of morphological patterns using adaptive regional elements. IEEE Trans Med Imaging 26:93–105PubMed
Zurück zum Zitat Girshick R, Donahue J, Darrell T, Berkeley UC, Malik J (2012) Girshick_Rich_Feature_Hierarchies_2014_CVPR_paper.pdf. 2–9 Girshick R, Donahue J, Darrell T, Berkeley UC, Malik J (2012) Girshick_Rich_Feature_Hierarchies_2014_CVPR_paper.pdf. 2–9
Zurück zum Zitat Goodfellow I, Bengio Y, Courville A (2016) Deep learning. Nature 521:800 Goodfellow I, Bengio Y, Courville A (2016) Deep learning. Nature 521:800
Zurück zum Zitat Gutstein S, Fuentes O, Freudenthal E (2008) Knowledge transfer in deep convolutional neural nets. Int J Artif Intell Tools 17:555–567 Gutstein S, Fuentes O, Freudenthal E (2008) Knowledge transfer in deep convolutional neural nets. Int J Artif Intell Tools 17:555–567
Zurück zum Zitat Hajian-Tilaki K (2013) Receiver operating characteristic (ROC) curve analysis for medical diagnostic test evaluation. Casp J Intern Med 4:627–635 Hajian-Tilaki K (2013) Receiver operating characteristic (ROC) curve analysis for medical diagnostic test evaluation. Casp J Intern Med 4:627–635
Zurück zum Zitat Han SM, Lee HJ, Choi JY (2008) Computer-aided prostate cancer detection using texture features and clinical features in ultrasound image. J Digit Imaging 21:121–133PubMedCentral Han SM, Lee HJ, Choi JY (2008) Computer-aided prostate cancer detection using texture features and clinical features in ultrasound image. J Digit Imaging 21:121–133PubMedCentral
Zurück zum Zitat He K, Zhang X, Ren S, Sun J (2016) Deep residual learning for image recognition, pp 770–778 He K, Zhang X, Ren S, Sun J (2016) Deep residual learning for image recognition, pp 770–778
Zurück zum Zitat Hinton GE, Osindero S, Teh Y-W (2006) Communicated by Yann Le Cun A Fast learning algorithm for deep belief nets 500 units 500 units. Neural Comput 18:1527–1554PubMed Hinton GE, Osindero S, Teh Y-W (2006) Communicated by Yann Le Cun A Fast learning algorithm for deep belief nets 500 units 500 units. Neural Comput 18:1527–1554PubMed
Zurück zum Zitat Hinton G, Deng L, Yu D et al (2012) Deep neural networks for acoustic modeling in speech recognition: the shared views of four research groups. IEEE Signal Process Mag 29:82–97 Hinton G, Deng L, Yu D et al (2012) Deep neural networks for acoustic modeling in speech recognition: the shared views of four research groups. IEEE Signal Process Mag 29:82–97
Zurück zum Zitat Homma T, Atlas L, Marks RJ II (1988) An artificial neural network for spatio-temporal bipolar patters: application to phoneme classification. Adv Neural Inf Process Syst 1(1):31–40 Homma T, Atlas L, Marks RJ II (1988) An artificial neural network for spatio-temporal bipolar patters: application to phoneme classification. Adv Neural Inf Process Syst 1(1):31–40
Zurück zum Zitat Hricak H, Choyke PL, Eberhardt SC, Leibel S, Scardino PT (2007) Imaging prostate cancer: a multidisciplinary perspective 1. Radiology 243:28–53PubMed Hricak H, Choyke PL, Eberhardt SC, Leibel S, Scardino PT (2007) Imaging prostate cancer: a multidisciplinary perspective 1. Radiology 243:28–53PubMed
Zurück zum Zitat Hussain L (2018) Detecting epileptic seizure with different feature extracting strategies using robust machine learning classification techniques by applying advance parameter optimization approach. Cogn Neurodyn 12:271–294PubMedPubMedCentral Hussain L (2018) Detecting epileptic seizure with different feature extracting strategies using robust machine learning classification techniques by applying advance parameter optimization approach. Cogn Neurodyn 12:271–294PubMedPubMedCentral
Zurück zum Zitat Hussain L, Aziz W, Alowibdi JSJSJS, Habib N, Rafique M, Saeed S, Kazmi SZHSZ (2017) Symbolic time series analysis of electroencephalographic (EEG) epileptic seizure and brain dynamics with eye-open and eye-closed subjects during resting states. J Physiol Anthropol 36:21PubMedPubMedCentral Hussain L, Aziz W, Alowibdi JSJSJS, Habib N, Rafique M, Saeed S, Kazmi SZHSZ (2017) Symbolic time series analysis of electroencephalographic (EEG) epileptic seizure and brain dynamics with eye-open and eye-closed subjects during resting states. J Physiol Anthropol 36:21PubMedPubMedCentral
Zurück zum Zitat Hussain L, Ahmed A, Saeed S, Rathore S, Awan IA, Shah SA, Majid A, Idris A, Awan AA (2018a) Prostate cancer detection using machine learning techniques by employing combination of features extracting strategies. Cancer Biomark 21:393–413PubMed Hussain L, Ahmed A, Saeed S, Rathore S, Awan IA, Shah SA, Majid A, Idris A, Awan AA (2018a) Prostate cancer detection using machine learning techniques by employing combination of features extracting strategies. Cancer Biomark 21:393–413PubMed
Zurück zum Zitat Hussain L, Saeed S, Awan IA, Idris A, Nadeem MSAA, Chaudhary Q-A, Chaudhry Q-A (2018b) Detecting brain tumor using machine learning techniques based on different features extracting strategies. Curr Med Imaging Former Curr Med Imaging Rev 14:595–606 Hussain L, Saeed S, Awan IA, Idris A, Nadeem MSAA, Chaudhary Q-A, Chaudhry Q-A (2018b) Detecting brain tumor using machine learning techniques based on different features extracting strategies. Curr Med Imaging Former Curr Med Imaging Rev 14:595–606
Zurück zum Zitat Hussain L, Ali A, Rathore S, Saeed S, Idris A, Usman MU, Iftikhar MA, Suh DY (2018c) Applying bayesian network approach to determine the association between morphological features extracted from prostate cancer images. IEEE Access 7:1586–1601 Hussain L, Ali A, Rathore S, Saeed S, Idris A, Usman MU, Iftikhar MA, Suh DY (2018c) Applying bayesian network approach to determine the association between morphological features extracted from prostate cancer images. IEEE Access 7:1586–1601
Zurück zum Zitat Hussain L, Aziz W, Alshdadi AA, Ahmed Nadeem MS, Khan IR, Chaudhry Q-U-A (2019) Analyzing the dynamics of lung cancer imaging data using refined fuzzy entropy methods by extracting different features. IEEE Access 7:64704–64721 Hussain L, Aziz W, Alshdadi AA, Ahmed Nadeem MS, Khan IR, Chaudhry Q-U-A (2019) Analyzing the dynamics of lung cancer imaging data using refined fuzzy entropy methods by extracting different features. IEEE Access 7:64704–64721
Zurück zum Zitat Isselmou AEK, Zhang S, Xu G (2016) A novel approach for brain tumor detection using MRI images. J Biomed Sci Eng 09:44–52 Isselmou AEK, Zhang S, Xu G (2016) A novel approach for brain tumor detection using MRI images. J Biomed Sci Eng 09:44–52
Zurück zum Zitat Karpathy A, Li FF (2015) Deep visual-semantic alignments for generating image descriptions. In: Proceedings of the IEEE computer society conference on computer vision and pattern recognition, pp 3128–3137 Karpathy A, Li FF (2015) Deep visual-semantic alignments for generating image descriptions. In: Proceedings of the IEEE computer society conference on computer vision and pattern recognition, pp 3128–3137
Zurück zum Zitat Karpathy A, Toderici G, Shetty S, Leung T, Sukthankar R, Fei-Fei L (2014) Large-scale video classification with convolutional neural networks. In: IEEE conference on computer vision and pattern recognition (CVPR), 2014, pp 1725–1732 Karpathy A, Toderici G, Shetty S, Leung T, Sukthankar R, Fei-Fei L (2014) Large-scale video classification with convolutional neural networks. In: IEEE conference on computer vision and pattern recognition (CVPR), 2014, pp 1725–1732
Zurück zum Zitat Kattan MW, Potters L, Blasko JC, Beyer DC, Fearn P, Cavanagh W, Leibel S, Scardino PT (2001) CME article brachytherapy in prostate cancer. Urology 4295:393–399 Kattan MW, Potters L, Blasko JC, Beyer DC, Fearn P, Cavanagh W, Leibel S, Scardino PT (2001) CME article brachytherapy in prostate cancer. Urology 4295:393–399
Zurück zum Zitat Khaki-Khatibi F, Nourazarian A, Ahmadi F, Farhoudi M, Savadi-Oskouei D, Pourostadi M, Asgharzadeh M (2019) Relationship between the use of electronic devices and susceptibility to multiple sclerosis. Cogn Neurodyn 13:287–292PubMedPubMedCentral Khaki-Khatibi F, Nourazarian A, Ahmadi F, Farhoudi M, Savadi-Oskouei D, Pourostadi M, Asgharzadeh M (2019) Relationship between the use of electronic devices and susceptibility to multiple sclerosis. Cogn Neurodyn 13:287–292PubMedPubMedCentral
Zurück zum Zitat Krizhevsky A, Sutskever I, Hinton GE (2012) ImageNet classification with deep convolutional neural networks. Adv Neural Inf Process Syst 1097–1105 Krizhevsky A, Sutskever I, Hinton GE (2012) ImageNet classification with deep convolutional neural networks. Adv Neural Inf Process Syst 1097–1105
Zurück zum Zitat Lemaitre L, Puech P, Poncelet E, Bouyé S, Leroy X, Biserte J, Villers A (2009) Dynamic contrast-enhanced MRI of anterior prostate cancer: morphometric assessment and correlation with radical prostatectomy findings. Eur Radiol 19:470–480PubMed Lemaitre L, Puech P, Poncelet E, Bouyé S, Leroy X, Biserte J, Villers A (2009) Dynamic contrast-enhanced MRI of anterior prostate cancer: morphometric assessment and correlation with radical prostatectomy findings. Eur Radiol 19:470–480PubMed
Zurück zum Zitat Li J, Weng Z, Xu H, Zhang Z, Miao H, Chen W, Liu Z (2018) Support Vector Machines (SVM) classification of prostate cancer Gleason score in central gland using multiparametric magnetic resonance images: a cross-validated study. Eur J Radiol 98:61–67PubMed Li J, Weng Z, Xu H, Zhang Z, Miao H, Chen W, Liu Z (2018) Support Vector Machines (SVM) classification of prostate cancer Gleason score in central gland using multiparametric magnetic resonance images: a cross-validated study. Eur J Radiol 98:61–67PubMed
Zurück zum Zitat Liu S, Liu S, Cai W, Pujol S, Kikinis R, Feng D (2014) Early diagnosis of Alzheimer’s disease with deep learning. In: 2014 IEEE 11th international symposium on biomedical imaging. IEEE, pp 1015–1018 Liu S, Liu S, Cai W, Pujol S, Kikinis R, Feng D (2014) Early diagnosis of Alzheimer’s disease with deep learning. In: 2014 IEEE 11th international symposium on biomedical imaging. IEEE, pp 1015–1018
Zurück zum Zitat Liu Y, Yang G, Mirak SA, Hosseiny M, Azadikhah A, Zhong X, Reiter RE, Lee Y, Raman SS, Sung K (2019) Automatic prostate zonal segmentation using fully convolutional network with feature pyramid attention. IEEE Access 7:163626–163632 Liu Y, Yang G, Mirak SA, Hosseiny M, Azadikhah A, Zhong X, Reiter RE, Lee Y, Raman SS, Sung K (2019) Automatic prostate zonal segmentation using fully convolutional network with feature pyramid attention. IEEE Access 7:163626–163632
Zurück zum Zitat Mooij G, Bagulho I, Huisman H (2018) Automatic segmentation of prostate zones Mooij G, Bagulho I, Huisman H (2018) Automatic segmentation of prostate zones
Zurück zum Zitat Oto A, Kayhan A, Jiang Y, Tretiakova M, Yang C, Antic T, Dahi F, Shalhav AL, Karczmar G, Stadler WM (2010) Prostate cancer: differentiation of central gland cancer from benign prostatic hyperplasia by using diffusion-weighted and dynamic contrast-enhanced MR imaging. Radiology 257:715–723PubMed Oto A, Kayhan A, Jiang Y, Tretiakova M, Yang C, Antic T, Dahi F, Shalhav AL, Karczmar G, Stadler WM (2010) Prostate cancer: differentiation of central gland cancer from benign prostatic hyperplasia by using diffusion-weighted and dynamic contrast-enhanced MR imaging. Radiology 257:715–723PubMed
Zurück zum Zitat Perez IM, Toivonen J, Movahedi P, Kiviniemi A, Pahikkala T, Aronen HJ, Jambor I (2016) Diffusion weighted imaging of prostate cancer: prediction of cancer using texture features from the parametric maps of the monoexponential and kurtosis functions using a grid approach. 0–7 Perez IM, Toivonen J, Movahedi P, Kiviniemi A, Pahikkala T, Aronen HJ, Jambor I (2016) Diffusion weighted imaging of prostate cancer: prediction of cancer using texture features from the parametric maps of the monoexponential and kurtosis functions using a grid approach. 0–7
Zurück zum Zitat Pinto A, Alves V, Silva CA (2016) Brain tumor segmentation using convolutional neural networks in MRI images. IEEE Trans Med Imaging 35:1240–1251PubMed Pinto A, Alves V, Silva CA (2016) Brain tumor segmentation using convolutional neural networks in MRI images. IEEE Trans Med Imaging 35:1240–1251PubMed
Zurück zum Zitat Rathore S, Hussain M, Khan A (2015) Automated colon cancer detection using hybrid of novel geometric features and some traditional features. Comput Biol Med 65:279–296PubMed Rathore S, Hussain M, Khan A (2015) Automated colon cancer detection using hybrid of novel geometric features and some traditional features. Comput Biol Med 65:279–296PubMed
Zurück zum Zitat Ronneberger O, Fischer P, Brox T (2015) U-net: convolutional networks for biomedical image segmentation. In: Lecture notes in computer science (including its subseries lecture notes in artificial intelligence and lecture notes in bioinformatic). Springer, pp 234–241 Ronneberger O, Fischer P, Brox T (2015) U-net: convolutional networks for biomedical image segmentation. In: Lecture notes in computer science (including its subseries lecture notes in artificial intelligence and lecture notes in bioinformatic). Springer, pp 234–241
Zurück zum Zitat Schröder FH, Hugosson J, Roobol MJ et al (2009) Screening and prostate-cancer mortality in a randomized european study. N Engl J Med 360:1320–1328PubMed Schröder FH, Hugosson J, Roobol MJ et al (2009) Screening and prostate-cancer mortality in a randomized european study. N Engl J Med 360:1320–1328PubMed
Zurück zum Zitat Seltzer SE, Getty DJ, Tempany CM, Pickett RM, Schnall MD, McNeil BJ, Swets JA (1997) Staging prostate cancer with MR imaging: a combined radiologist-computer system. Radiology 202:219–226PubMed Seltzer SE, Getty DJ, Tempany CM, Pickett RM, Schnall MD, McNeil BJ, Swets JA (1997) Staging prostate cancer with MR imaging: a combined radiologist-computer system. Radiology 202:219–226PubMed
Zurück zum Zitat Shelhamer E, Long J, Darrell T (2017) Fully convolutional networks for semantic segmentation. IEEE Trans Pattern Anal Mach Intell 39:640–651PubMed Shelhamer E, Long J, Darrell T (2017) Fully convolutional networks for semantic segmentation. IEEE Trans Pattern Anal Mach Intell 39:640–651PubMed
Zurück zum Zitat Siegel RL, Miller KD, Fedewa SA, Ahnen DJ, Meester RGS, Barzi A, Jemal A (2017) Colorectal cancer statistics, 2017. CA Cancer J Clin 67:177–193PubMed Siegel RL, Miller KD, Fedewa SA, Ahnen DJ, Meester RGS, Barzi A, Jemal A (2017) Colorectal cancer statistics, 2017. CA Cancer J Clin 67:177–193PubMed
Zurück zum Zitat Szegedy C, Liu W, Jia Y, Sermanet P, Reed S, Anguelov D, Erhan D, Vanhoucke V, Rabinovich A (2015) Going deeper with convolutions, pp 1–9 Szegedy C, Liu W, Jia Y, Sermanet P, Reed S, Anguelov D, Erhan D, Vanhoucke V, Rabinovich A (2015) Going deeper with convolutions, pp 1–9
Zurück zum Zitat Taigman Y, Yang M, Ranzato M, Wolf L (2014) DeepFace: closing the gap to human-level performance in face verification. In: Proccedings of the computer society conference on computer vision and pattern recognition, pp 1701–1708 Taigman Y, Yang M, Ranzato M, Wolf L (2014) DeepFace: closing the gap to human-level performance in face verification. In: Proccedings of the computer society conference on computer vision and pattern recognition, pp 1701–1708
Zurück zum Zitat Talcott JA, Manola J, Chen RC, Clark JA, Kaplan I, D’Amico AV, Zietman AL (2014) Using patient-reported outcomes to assess and improve prostate cancer brachytherapy. BJU Int 114:511–516PubMed Talcott JA, Manola J, Chen RC, Clark JA, Kaplan I, D’Amico AV, Zietman AL (2014) Using patient-reported outcomes to assess and improve prostate cancer brachytherapy. BJU Int 114:511–516PubMed
Zurück zum Zitat Vos PC, Hambrock T, Barenstz JO, Huisman HJ (2010) Computer-assisted analysis of peripheral zone prostate lesions using T2-weighted and dynamic contrast enhanced T1-weighted MRI. Phys Med Biol 55:1719–1734PubMed Vos PC, Hambrock T, Barenstz JO, Huisman HJ (2010) Computer-assisted analysis of peripheral zone prostate lesions using T2-weighted and dynamic contrast enhanced T1-weighted MRI. Phys Med Biol 55:1719–1734PubMed
Zurück zum Zitat Wall WA, Wiechert L, Comerford A, Rausch S (2010) Towards a comprehensive computationalmodel for the respiratory system. Int J Numer Methods Biomed Eng 26:807–827 Wall WA, Wiechert L, Comerford A, Rausch S (2010) Towards a comprehensive computationalmodel for the respiratory system. Int J Numer Methods Biomed Eng 26:807–827
Zurück zum Zitat Yu KK, Hricak H (2000) Imaging prostate cancer. J Urol 38:59–85 Yu KK, Hricak H (2000) Imaging prostate cancer. J Urol 38:59–85
Zurück zum Zitat Zabihollahy F, Schieda N, Krishna Jeyaraj S, Ukwatta E (2019) Automated segmentation of prostate zonal anatomy on T2-weighted (T2W) and apparent diffusion coefficient (ADC) map MR images using U-Nets. Med Phys 46:3078–3090PubMed Zabihollahy F, Schieda N, Krishna Jeyaraj S, Ukwatta E (2019) Automated segmentation of prostate zonal anatomy on T2-weighted (T2W) and apparent diffusion coefficient (ADC) map MR images using U-Nets. Med Phys 46:3078–3090PubMed
Metadaten
Titel
Detecting prostate cancer using deep learning convolution neural network with transfer learning approach
verfasst von
Adeel Ahmed Abbasi
Lal Hussain
Imtiaz Ahmed Awan
Imran Abbasi
Abdul Majid
Malik Sajjad Ahmed Nadeem
Quratul-Ain Chaudhary
Publikationsdatum
11.04.2020
Verlag
Springer Netherlands
Erschienen in
Cognitive Neurodynamics / Ausgabe 4/2020
Print ISSN: 1871-4080
Elektronische ISSN: 1871-4099
DOI
https://doi.org/10.1007/s11571-020-09587-5

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