access icon free Deep Learning and Its Application in Diabetic Retinopathy Screening

Deep learning (DL), especially Convolutional neural networks (CNN), has gained wide popularity in various image processing tasks. With the significant achievements obtained in DL, it has provided many successful solutions for real-world applications as well as in medical domain. Automated retinal images analysis has been widely applied to screening Diabetic retinopathy (DR), which can greatly help preventing the occurrence of complete blindness when used in the early screening. In this paper, we mainly focus on DL, and we will give an overview of the deep learning-based methods for DR screening. Finally, we will discuss the main issues encountered in the DR screening systems.

Inspec keywords: medical image processing; diseases; convolutional neural nets; eye; learning (artificial intelligence); biomedical optical imaging; reviews

Other keywords: convolutional neural networks; complete blindness; deep learning; automated retinal image analysis; diabetic retinopathy screening systems

Subjects: Neural computing techniques; Biology and medical computing; Reviews and tutorial papers; resource letters; Optical and laser radiation (biomedical imaging/measurement); Optical and laser radiation (medical uses); Patient diagnostic methods and instrumentation; Computer vision and image processing techniques; Optical, image and video signal processing

http://iet.metastore.ingenta.com/content/journals/10.1049/cje.2020.09.001
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