DIA-VXNET: A framework for automated diabetic eye disease detection using transfer learning with feature fusion network

被引:2
作者
Hasan, Md Najib [1 ]
Pial, Md Ehashan Rabbi [1 ]
Das, Sunanda [1 ]
Siddique, Nazmul [2 ]
Wang, Hui [3 ]
机构
[1] Khulna Univ Engn & Technol, Dept Comp Sci & Engn, Khulna 9203, Bangladesh
[2] Ulster Univ, Sch Comp Engn & Intelligent Syst, Londonderry BT48 7JL, North Ireland
[3] Queens Univ Belfast, Sch Elect Elect Engn & Comp Sci, Belfast BT9, North Ireland
关键词
Diabetic eye disease; Deep learning; Transfer learning; Image processing; Feature fusion; CONVOLUTIONAL NEURAL-NETWORKS; RETINOPATHY; CLASSIFICATION; CATARACT; IMAGES;
D O I
10.1016/j.bspc.2024.106907
中图分类号
R318 [生物医学工程];
学科分类号
0831 ;
摘要
Diabetic eye disease is a common and significant disorder that affects diabetic individuals, with potentially disastrous eyesight implications if left untreated. Early diagnosis is critical for effective therapy and preventing permanent visual loss. Although retinal fundus pictures are valuable for identifying retinal problems, manual detection can be time-consuming and labor-intensive for ophthalmologists. To solve this problem, a unique automated diagnosis method has been introduced using Deep Learning (DL) to automatically classify four types of diabetic eye disease: normal, cataract, glaucoma, and retina disease. A unique preprocessing method has been developed to enhance the quality of fundus images and improve the accuracy of disease classification. The proposed architecture combines two modern deep learning models, VGG16 and XceptionNET, to achieve great classification accuracy. A transition block is employed to accommodate the different output shapes of VGG16 and XceptionNet, specifically in the last input layer. An additional layer is introduced to retain the main features and merge them with the output of the transition block. Along with the proposed preprocessing technique and architecture, for batch size 128, the system can achieve accuracy, precision, and recall values of (99.76 +/- 0.008)%, (98.94 +/- 0.016)%, (98.85 +/- 0.016)% respectively for diabetic eye disease detection on 'IDRiD and HRF' Dataset. The technology solves the challenges ophthalmologists face in manually identifying diabetic eye disease. It reduces the effort needed and enhances the accuracy and speed of diagnosis, offering a practical and effective way to overcome these difficulties.
引用
收藏
页数:23
相关论文
共 53 条
[31]  
Lam Carson, 2018, AMIA Jt Summits Transl Sci Proc, V2017, P147
[32]   Epidemiology of diabetic retinopathy, diabetic macular edema and related vision loss [J].
Lee, Ryan ;
Wong, Tien Y. ;
Sabanayagam, Charumathi .
EYE AND VISION, 2015, 2
[33]   Automatic Detection of Diabetic Retinopathy in Retinal Fundus Photographs Based on Deep Learning Algorithm [J].
Li, Feng ;
Liu, Zheng ;
Chen, Hua ;
Jiang, Minshan ;
Zhang, Xuedian ;
Wu, Zhizheng .
TRANSLATIONAL VISION SCIENCE & TECHNOLOGY, 2019, 8 (06)
[34]   A Large-Scale Database and a CNN Model for Attention-Based Glaucoma Detection [J].
Li, Liu ;
Xu, Mai ;
Liu, Hanruo ;
Li, Yang ;
Wang, Xiaofei ;
Jiang, Lai ;
Wang, Zulin ;
Fan, Xiang ;
Wang, Ningli .
IEEE TRANSACTIONS ON MEDICAL IMAGING, 2020, 39 (02) :413-424
[35]   A survey and comparative study on the instruments for glaucoma detection [J].
Lim, Teik-Cheng ;
Chattopadhyay, Subhagata ;
Acharya, U. Rajendra .
MEDICAL ENGINEERING & PHYSICS, 2012, 34 (02) :129-139
[36]  
Murugan P, 2018, Arxiv, DOI arXiv:1801.01397
[37]   Thrombosis and Hemorrhage in Diabetic Retinopathy: A Perspective from an Inflammatory Standpoint [J].
Murugesan, Nivetha ;
Utunkaya, Tuna ;
Feener, Edward P. .
SEMINARS IN THROMBOSIS AND HEMOSTASIS, 2015, 41 (06) :659-664
[38]   Detection of Diabetic Eye Disease from Retinal Images Using a Deep Learning based CenterNet Model [J].
Nazir, Tahira ;
Nawaz, Marriam ;
Rashid, Junaid ;
Mahum, Rabbia ;
Masood, Momina ;
Mehmood, Awais ;
Ali, Farooq ;
Kim, Jungeun ;
Kwon, Hyuk-Yoon ;
Hussain, Amir .
SENSORS, 2021, 21 (16)
[39]   Evaluation of deep convolutional neural networks for glaucoma detection [J].
Phan, Sang ;
Satoh, Shin'ichi ;
Yoda, Yoshioki ;
Kashiwagi, Kenji ;
Oshika, Tetsuro ;
Oshika, Tetsuro ;
Hasegawa, Takashi ;
Kashiwagi, Kenji ;
Miyake, Masahiro ;
Sakamoto, Taiji ;
Yoshitomi, Takeshi ;
Inatani, Masaru ;
Yamamoto, Tetsuya ;
Sugiyama, Kazuhisa ;
Nakamura, Makoto ;
Tsujikawa, Akitaka ;
Sotozono, Chie ;
Sonoda, Koh-Hei ;
Terasaki, Hiroko ;
Ogura, Yuichiro ;
Fukuchi, Takeo ;
Shiraga, Fumio ;
Nishida, Kohji ;
Nakazawa, Toru ;
Aihara, Makoto ;
Yamashita, Hidetoshi ;
Hiyoyuki, Iijima .
JAPANESE JOURNAL OF OPHTHALMOLOGY, 2019, 63 (03) :276-283
[40]   Convolutional Neural Networks for Diabetic Retinopathy [J].
Pratt, Harry ;
Coenen, Frans ;
Broadbent, Deborah M. ;
Harding, Simon P. ;
Zheng, Yalin .
20TH CONFERENCE ON MEDICAL IMAGE UNDERSTANDING AND ANALYSIS (MIUA 2016), 2016, 90 :200-205