Research Article |
A Diabetic Retinopathy Detection Using Customized Convolutional Neural Network
Author(s): Deepak Mane1*, Sunil Sangve2, Prashant Kumbharkar3, Snehal Ratnaparkhi4, Gopal Upadhye5 and Santosh Borde6
Published In : International Journal of Electrical and Electronics Research (IJEER) Volume 11, Issue 2
Publisher : FOREX Publication
Published : 30 June 2023
e-ISSN : 2347-470X
Page(s) : 609-615
Abstract
The disease, Diabetic Retinopathy (DR) causes due to damage to retinal blood vessels in diabetic patients. DR occurs if you have type 1 or 2 diabetes along with high blood sugar. When the retinal blood vessels are damaged, they can become clogged, some of which can block the blood supply to the retina leading to blood loss, these new blood vessels may leak, and the creation of scar tissue can lead to loss of vision. It takes a lot of time and effort to examine and analyse fundus images the old-fashioned way to find differences in how the eyes are shaped. In this modern era, technology has evolved so fleet which has the solution to every problem. In this paper, we have proposed a Customized Convolutional Neural Network (CCNN) deep learning technique for Diabetic Retinopathy Detection. We have clung to traditional strategies mainly containing input Data retrieval, pre-processing of data, segmentation, trait measurement, feature extraction, model creation, model training, model testing, consequence, and interpretation of the model. Performance evaluation is done on standard MESSIDOR Dataset in which 560 images for training phase whereas 163 images for testing phase. The experiment results achieved the highest test accuracy of 97.24% which is effectively higher than that of existing algorithms.
Keywords: SCSA
, BP
, Photoplethysmography
, CNN
, Non-invasive
, Cuff-less
.
Deepak Mane*, Vishwakarma Institute of Technology, Pune-411037, Maharashtra, India; Email: dtmane@gmail.com
Sunil Sangve, JSPM’S RajarshiShahu College of Engineering, Pune-411033, Maharashtra, India; Email: sunilsangve@gmail.com
Prashant Kumbharkar, JSPM’S RajarshiShahu College of Engineering, Pune-411033, Maharashtra, India; Email: pbk.rscoe@gmail.com
Snehal Ratnaparkhi, Rvichi Solvere Pvt Ltd, Austin, TX, USA 78641, India; Email: snehal@rvichi.com
Gopal Upadhye, Vishwakarma Institute of Technology, Pune-411037, Maharashtra, India; Email: gopalupadhye@gmail.com
Santosh Borde, JSPM’S Rajarshi Shahu College of Engineering, Pune-411033, Maharashtra, India; Email: santoshborde@yahoo.com
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[1] Thiagarajan, Aswin Shriram et al.: Diabetic Retinopathy Detection using Deep Learning Techniques. Journal of Computer Science, vol. 16, pp. 305-313(2020). [Cross Ref]
-
[2] Akhilesh Kumar Gangwar and Vadlamani Ravi: Diabetic Retinopathy Detection Using Transfer Learning and Deep Learning. Evolution in Computational Intelligence, Advances in Intelligent Systems and Computing 1176, (2020). [Cross Ref]
-
[3] Heisler, Morgan et al.: Ensemble Deep Learning for Diabetic Retinopathy Detection Using Optical Coherence Tomography Angiography. Translational Vision Science & Technology, vol. 9, no.2 (2020). [Cross Ref]
-
[4] Wu, Yu-chen and Ze Hu: Recognition of Diabetic Retinopathy Basedon Transfer Learning. In: IEEE 4th International Conference on Cloud Computing and Big Data Analysis (ICCCBDA), pp. 398-401(2019). [Cross Ref]
-
[5] Arora, Mamta and MrinalPandey: Deep Neural Network for Diabetic Retinopathy Detection. In: International Conference on Machine Learning, Big Data, Cloud and Parallel Computing (COMITCon). Pp. 189-193(2019). [Cross Ref]
-
[6] Herliana, Asti et al.: Feature Selection of Diabetic Retinopathy Disease Using Particle Swarm Optimization and Neural Network. In: 6th International Conference on Cyber and IT Service Management (CITSM), pp. 1-4 (2018). [Cross Ref]
-
[7] Yu, Shuang et al.: Exudate detection for diabetic retinopathy with convolutional neural networks. In: 39th Annual International Conference of the IEEE Engineering in Medicine and Biology Society (EMBC), pp. 1744-1747(2017). [Cross Ref]
-
[8] Jadhav, A. et al.: Optimal feature selection-based diabetic retinopathy detection using improved rider optimization algorithm enabled with deep learning. Evolutionary Intelligence, pp.1-18 (2020). [Cross Ref]
-
[9] Shankar, K. et al.: Automated detection and classification of fundus diabetic retinopathy images using synergic deep learning model. Pattern Recognition Letters, vol. 133, pp. 210-216 (2020). [Cross Ref]
-
[10] Roychowdhury, Sohini et al.: Automated detection of neovascularization for proliferative diabetic retinopathy screening. In: 38th Annual International Conference of the IEEE Engineering in Medicine and Biology Society (EMBC), pp. 1300-1303(2016). [Cross Ref]
-
[11] GeethaRamani, R. et al.: Automatic Diabetic Retinopathy Detection Through Ensemble Classification Techniques Automated Diabetic Retionapthy Classification. In: IEEE International Conference on Computational Intelligence and Computing Research, pp. 1-4 (2017). [Cross Ref]
-
[12] Kumar, S. and B. Kumar: Diabetic Retinopathy Detection by Extracting Area and Number of Microaneurysm from Colour Fundus Image. In 5th International Conference on Signal Processing and Integrated Networks (SPIN), pp. 359-364 (2018). [Cross Ref]
-
[13] Roy, Arisha et al.: Filter and fuzzy c means based feature extraction and classification of diabetic retinopathy using support vector machines. In: International Conference on Communication and Signal Processing (ICCSP), pp. 1844-1848 (2016). [Cross Ref]
-
[14] Chetoui, Mohamed and M. Akhloufi: Explainable Diabetic Retinopathy using EfficientNET*. In: 42nd International Conference of the IEEE Engineering in Medicine & Biology Society, pp. 1966-1969 (2020). [Cross Ref]
-
[15] Alzami, F. et al.: Diabetic Retinopathy Grade Classification based on Fractal Analysis and Random Forest. In: International Seminar on Application for Technology of Information and Communication (iSemantic) pp. 272-276(2019). [Cross Ref]
-
[16] Mane, D.T., Tapdiya, R. & Shinde, S.V. Handwritten Marathi numeral recognition using stacked ensemble neural network. Int. j. inf. tecnol. 13, 1993–1999 (2021). https://doi.org/10.1007/s41870-021-00723-w. [Cross Ref]
-
[17] Mane, D. T. & Kulkarni, U. V. (2020). A Survey on Supervised Convolutional Neural Network and Its Major Applications. In I. Management Association (Ed.), Deep Learning and Neural Networks: Concepts, Methodologies, Tools, and Applications (pp. 1058-1071). IGI Global. https://doi.org/10.4018/978-1-7998-0414-7.ch059. [Cross Ref]
-
[18] Dr. J. S. Awati, Prof. S.S. Patil and Dr. M.S. Kumbhar (2021), Smart Heart Disease Detection using Particle Swarm Optimization and Support Vector Machine. IJEER 9(4), 120-124. DOI: 10.37391/IJEER.090405. [Cross Ref]
-
[19] Menaouer, B., Dermane, Z., El HoudaKebir, N., & Matta, N. (2022). Diabetic Retinopathy Classification Using Hybrid Deep Learning Approach. SN Computer Science, Vol.3, Issue-367, 2022. [Cross Ref]
-
[20] Yasashvini, R. et. al. 2022). Diabetic Retinopathy Classification Using CNN and Hybrid Deep Convolutional Neural Networks. Symmetry, Vol. 14, 1932, pp-1-13. [Cross Ref]
-
[21] Yang, B., Li, T., Xie, H., Liao, Y., & Chen, Y.P. (2022). Classification of Diabetic Retinopathy Severity Based on GCA Attention Mechanism. IEEE Access, vol. 10, pp. 2729-2739. [Cross Ref]
-
[22] S., Sudha, et al. (2023). Detection and Classification of Diabetic Retinopathy Using Image Processing Algorithms, Convolutional Neural Network, and Signal Processing Techniques. Handbook of Research on Computer Vision and Image Processing in the Deep Learning Era, IGI Global, 2023, pp. 270-280. [Cross Ref]
-
[23] Messidor dataset: https://www.kaggle.com/competitions/diabetic-retinopathy-detection/data.