A Systematic Review on Deep Learning Techniques for Diabetic Retinopathy Segmentation and Detection Using Ocular Imaging Modalities

被引:0
作者
Richa Vij
Sakshi Arora
机构
[1] Shri Mata Vaishno Devi University,School of Computer Science and Engineering
来源
Wireless Personal Communications | 2024年 / 134卷
关键词
Diabetic retinopathy; Fundus retinal images; Retinal lesions; DR segmentation; Detection; Deep learning;
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学科分类号
摘要
Diabetic Retinopathy (DR) is a rapidly growing consequence of diabetes mellitus globally. DR causes lesions that can cause blindness if untreated. The significant advancement in deep learning (DL) approaches have proven to be superior to traditional detection methods. This systematic review provides a comprehensive overview of development of DL based approach for DR segmentation and detection (SD) through ocular imaging that help ophthalmologists diagnose DR at early stage. Advances in ocular imaging has developed its contribution towards early detection of DR. Articles on ocular imaging for SD of DR were identified by following PRISMA guidelines using query “Deep Learning”, “Diabetic Retinopathy”, “retinal imaging” alone and in combination in PubMed, Google Scholar, IEEE Xplore, and Research Gate databases until 2021. Approximately 1000 publications were searched and 153 relevant studies focused on the DL approaches for SD of utilizing ocular imaging were chosen for study. According to the survey, 66% of researchers employed DL approaches for Blood vessel (BV) segmentation, 36% of researchers used DL approaches for lesion detection, 15% of researchers have used DL approaches for optic disc and optic cup (OD and OC) segmentation for DR Diagnosis. This systematic review provided detailed literature of the state of the art relevant articles for SD of BV, Lesions, OD and OC for non-proliferative DR diagnosis at the early stage and discusses future directions to improve the performance of DL approaches for DR diagnosis and to overcome research challenges. Finally, this article highlights the outline of the proposed work to improve the accuracy of existing models.
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页码:1153 / 1229
页数:76
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共 692 条
[1]  
Fisher DE(2016)Mortality in older persons with retinopathy and concomitant health conditions: The age, gene/environment susceptibility-Reykjavik study Ophthalmology 123 1570-1580
[2]  
Jonasson F(2019)Recent development on detection methods for the diagnosis of diabetic retinopathy Symmetry 11 749-62
[3]  
Klein R(2016)Automated screening system for retinal health using bi-dimensional empirical mode decomposition and integrated index Computers in Biology and Medicine 75 54-579
[4]  
Jonsson PV(2019)Deep learning for retinopathy of prematurity screening British Journal of Ophthalmology 103 577-176
[5]  
Eiriksdottir G(2017)Performance analysis of descriptive statistical features in retinal vessel segmentation via fuzzy logic, ANN, SVM, and classifier fusion Knowledge-Based Systems 118 165-205
[6]  
Launer LJ(2016)Convolutional neural networks for diabetic retinopathy Procedia Computer Science 90 200-33
[7]  
Gudnason V(2011)Role of early screening for diabetic retinopathy in patients with diabetes mellitus: An overview Indian Journal of Community Medicine: Official Publication of Indian Association of Preventive & Social Medicine 36 247-41
[8]  
Cotch MF(2020)Stock market forecasting using computational intelligence: A survey Archives of Computational Methods in Engineering 28 1-31
[9]  
Qureshi I(2020)A survey of knee osteoarthritis assessment based on gait Archives of Computational Methods in Engineering 28 1-34884
[10]  
Ma J(2022)A systematic survey of advances in retinal imaging modalities for Alzheimer’s disease diagnosis Metabolic Brain Disease 37 1-292