تعداد نشریات | 44 |
تعداد شمارهها | 1,303 |
تعداد مقالات | 16,020 |
تعداد مشاهده مقاله | 52,485,747 |
تعداد دریافت فایل اصل مقاله | 15,213,150 |
تشخیص دیابت چشمی با استفاده از شبکههای عصبی کانولوشنال عمیق | ||
پردازش سیگنال پیشرفته | ||
مقاله 6، دوره 4، شماره 2 - شماره پیاپی 6، آذر 1399، صفحه 225-237 اصل مقاله (2.43 M) | ||
نوع مقاله: مقاله پژوهشی | ||
شناسه دیجیتال (DOI): 10.22034/jasp.2021.45134.1135 | ||
نویسندگان | ||
علی کارساز* 1؛ صبورا محمدیان روشن2 | ||
1گروه برق و مهندسی پزشکی، موسسه آموزش عالی خراسان، مشهد، ایران | ||
2گروه مهندسی برق و مهندسی پزشکی، موسسه آموزش عالی خراسان، مشهد، ایران | ||
چکیده | ||
دیابت چشمی به عنوان یکی از عوارض مهم دیابت، باعث آسیب به شبکیه چشم بیمار شده و تشخیص دیرهنگام آن حتی میتواند موجب نابینایی گردد. برخی از روشهای دستهبندی مبتنی بر یادگیری ماشین بر اساس استخراج دادههای تصاویر شبکیه به صورت دستی بوده و توسط متخصصین پردازش تصویر صورت میپذیرد. در سالهای اخیر روشی جدید برای تشخیص و طبقهبندی تصاویر شبکیه چشم بدون نیاز به استخراج ویژگیهای آن بهصورت دستی مبتنی بر شبکههای عصبی کانولوشنال (CNN) ارائه شده است. در زمینه تشخیص و تصویربرداری پزشکی، به علت کمبود دادههای طبقهبندی شده و زمانبر بودن فرآیند آموزش تا یک همگرایی مناسب، آموزش یک شبکه CNN از ابتدا دشوار بوده بنابراین یک روش متداول برای آموزش شبکههای CNN در حوزه پزشکی، بر اساس تنظیم مجدد شبکههای از پیش آموزش یافته، میباشد. برای این منظور در این مقاله، شبکه از پیش آموزش داده شده گوگلنت (GoogLeNet) به عنوان یکی از قویترین شبکههای عصبی کانولوشنال بر روی تصاویر شبکیه چشم بانک اطلاعات چشم پزشکی کگل (Kaggle Database) جهت تشخیص رتینوپاتی دیابتی اعمال میشود. همچنین جهت ارزیابی کلینیکی ساختار پیشنهادی، شبکه آموزش دیده جهت تشخیص دیابت چشمی بر روی 101 تصویر شبکیه از کلینیک تخصصی چشمپزشکی نوید دیدگان با موفقیت اعمال گردید. | ||
کلیدواژهها | ||
دیابت شبکیه؛ شبکههای عصبی کانولوشنال؛ شبکه گوگلنت؛ بانک اطلاعات چشم پزشکی کگل | ||
مراجع | ||
[1] X. Zhang and e. al., "Exudate detection in color retinal images for mass screening of diabetic retinopathy," Medical Image Analysis, vol. 18, pp. 1026-1043, October 2014. [2] K. S. Argade, K. A. Deshmukh, M. M. Narkhede, N. N. Sonawane, and S. Jore, "Automatic detection of diabetic retinopathy using image processing and data mining techniques," presented at the 2015 Int. Conference on Green Computing and Internet of Things, 2015. [3] H. M. Zheng Y, Congdon N, "The worldwide epidemic of dneaiabetic retinopathy," Indian J Ophthalmol, vol. 60, pp. 428-431, 2012. [4] B. Antal and A. Hajdu, "An ensemble-based system for Microaneurysm detection and diabetic retinopathy grading," IEEE Trans. Biomeical Engineering, vol. 59, pp. 1720–172, June 2012. [5] P. P. Conde, J. d. l. Calleja, A. Benitez, and M. A. Medina, "Image-based classification of diabetic retinopathy using machine learning," Int. Conf. Intell. Syst. Design and Applications, Nov., 2012. [6] M. U. Akram, S. Khalid, A. Tariq, and F. Azam, "Detection and classification of retinal lesions for grading of diabetic retinopathy," Computers in Biology and Med., vol. 45, pp. 161–171, Feb. 2014. [7] C. Sundhar and D. Archana, "Automatic screening of fundus images for detection of Diabetic Retinopathy," Int. J. Communication and Computer Technologies, vol. 2, April 2014. [8] A. F. M. Hani and H. A. Nugroho, "Gaussian Bayes classifier for medical diagnosis and grading: Application to diabetic retinopathy," IEEE Conf. Biomedical Engineering and Sciences, Nov. 2010. [9] B. v. G. M. Niemeijer, Michael J. Cree, "Retinopathy online challenge: Automatic detection of Microaneurysms in digital color Fundus photographs," IEEE Trans. Medical Imaging, vol. 29, pp. 185-195, Jan. 2010. [10] S. S. Rahim, C. Jayne, V. Palade, and J. Shuttleworth, "Automatic detection of microaneurysms in colour fundus images for diabetic retinopathy screening," Neural Computing and Applications, 2015. [11] L. G. L. Giancardo, F. Meriaudeaub, T. P. Karnowskic, Y. L. G. Kenneth W. Tobin, J. C. EdwardChaumd, "Exudate-based diabetic macular edema detection in fundus images using publicly available datasets," Medical Image Analysis, vol. 16, pp. 216–226, Jan. 2012. [12] C. Jayakumari and T. Santhanam, "Detection of hard exudates for diabetic retinopathy using contextual clustering and fuzzy art neural network," J. Information Technology, vol. 6, pp. 842-846, 2012. [13] A. Osareh, B. Shadgar, and R. Markham, "A computational-intelligence-based approach for detection of exudates in diabetic retinopathy images," IEEE Trans. Information Technology in Biomedicine, vol. 13, pp. 535–545, July 2009. [14] S. Franklin and S. Rajan, "Diagnosis of diabetic retinopathy by employing image processing technique to detect exudates in retinal images," IET Image Process., vol. 8, no. 10, pp. 601-609, 2014. [15] G. B. Kande, T. S. Savithri, and P. V. Subbaiah, "Automatic detection of Microaneurysms and hemorrhages in digital Fundus images," J. Digital Imaging, vol. 23, pp. 430–437, November 2009. [16] M. U. Akram, S. Khalid, A. Tariq, and M. Y. Javed, "Detection of neovascularization in retinal images using multivariate m-mediods based classifier," Computerized Medical Imaging and Graphics, vol. 37, pp. 346–357, July 2013. [17] A. P. Bhatkar and G. U. Kharat, "Detection of diabetic Retinopathy in retinal images using MLP Classifier," IEEE Int. Symposium on Nanoelectronic and Information Syst., Dec. 2015. [18] R. Priya and P. Aruna, "Diagnosis of diabetic retinopathy using machine learning techniques," J. Soft Computing, vol. 3, pp. 563–575, July 2013. [19] K. Saranya, B. Ramasubramanian, and S. K. Mohideen, "A novel approach for the detection of new vessels in the retinal images for screening diabetic Retinopathy," Int. Conf. Communication and Signal Processing, April 2012. [20] W. Zhang, R. Li, H. Deng, L. Wang, "Deep convolutional neural networks for multi-modality isointense infant brain image segmentation," NeuroImage, vol. 108, pp. 214-224, 2015. [21] J. Y. Tajbakhsh, Suryakanth and R. Gurudu, "Convolutional neural networks for medical image analysis: fine tuning or full training?," IEEE Trans. Medical Imag., vol. 35, pp. 1299–1312, May 2016. [22] D. Nie, L. Wang, E. Adeli, C. Lao, W. Lin and D. Shen, "3-D fully convolutional networks for multimodal isointense infant brain image segmentation," IEEE Trans. Cybern., vol. PP, no. 99, pp. 1-14, 2018. [23] L. L. olger R. Roth, A. Farag, H. Shin, J. Liu, E. Turkbey and R. M. Summers, "Deeporgan: multi-level deep convolutional networks for automated pancreas segmentation," Medical Image Computing and Computer-Assisted. Lecture Notes in Computer Science, 2015. [24] Y. Wanga, G. Caoa, B. Weib and G. Yang, "Hierarchical retinal blood vessel segmentation based on feature and ensemble learning," J. Neurocomput., vol. 149, pp. 708–717, Feb. 2015. [25] F. C. Harry Pratta, Deborah M. Broadbentc, P. Simon P. Hardingac and Y. Zhengac, "Convolutional neural networks for diabetic retinopathy," International Conference On Medical Imaging Understanding and Analysis, July 2016. [26] H. H. Vo and A. Verma, "New deep neural nets for fine-grained diabetic retinopathy recognition on hybrid color space," IEEE Int. Symposium on Multimedia, Dec. 2016. [27] Y. M. S. Reddy, R. E. Ravindran and K. H. Kishore, "Diabetic retinopathy through retinal image analysis: A review," Int. J. of Engineering Technology, vol. 7, no. 1-5, p. 19, 2017. [28] B. a. Antal and A. a. Hajdu, "An ensemble-based system for automatic screening of diabetic retinopathy," Knowledge-Based Systems, Elsevier, vol. 60, pp. 20-27, April 2014. [29] L. Ryan, T. Y. Wong, and C. Sabanayagam. “Epidemiology of diabetic retinopathy, diabetic macular edema and related vision loss,” Eye and Vision 2 (2015): 17. PMC. Web. 5 Sept. 2017. [30] D. H. Hubel and T. N. Wiesel, "Receptive fields and functional architecture of monkey striate cortex," J. Physiol, vol. 195, pp. 215–24, Jun. 1968. [31] K. Fukushima, "Neocognitron: A self-organizing neural network model for a mechanism of pattern recognition unaffected by shift in position," Biological Cybernetics, vol. 36, no. 4, pp. 193–202, 1980. [32] A. Krizhevsky, I. Sutskever, and G. E. Hinton, "ImageNet classification with deep convolutional neural networks," Conf. Neural Inf. Processing Syst. (NIPS), 2012. [33] Y. LeCun, L. Bottou, Y. Bengio, and P. Haffner, "Gradient based learning applied to document recognition," Proc. IEEE, vol. 86, pp. 2278–2324, 1998. [34] [Online]. Available: https://arxiv.org/abs/ 1207.0580. Accessed: Nov. 10, 2016. [35] C. Szegedy et al., "Going deeper with convolutions," IEEE Conf. on computer Vision and Pattern Recognition (CVPR), 2015. [36] C. Szegedy et al., "Rethinking the Inception Architecture for Computer Vision," IEEE Conf. on Computer Vision, Dec. 2015. [37] T. Fawcett, "An introduction to ROC analysis," Pattern Recognition Letters, vol. 27, no. 6, pp. 861-874, Jun. 2006. [38] [Online]. Available: https://kaggle2.blob. core. windows.net/forummessage attachments/88655 /2795/ competitionreport.pdf. Accessed: Jul. 5, 2017.
| ||
آمار تعداد مشاهده مقاله: 706 تعداد دریافت فایل اصل مقاله: 504 |