An AMDOCT-NET for Automated AMD Detection under Evaluations of Different Image Size, Denoising and Cropping
Journal
3rd IEEE Eurasia Conference on Biomedical Engineering, Healthcare and Sustainability, ECBIOS 2021
ISBN
9781728193045
Date Issued
2021-01-01
Author(s)
You, Hong Yu
Wei, Hsu Ting
Lin, Cheng Hung
Ji, Jie Yi
Liu, Yu Heng
Lu, Cheng Kai
Huang, Tzu Lun
Abstract
This paper proposed a novel deep learning architecture, called the AMDOCT-NET architecture, to accurately detect age-related macular degeneration (AMD) on optical coherence tomography (OCT) images. Using the AMDOCT-NET architecture, the performance of various image processing, such as resizing, denoising, and cropping has been evaluated. The simulation results show that the AMDOCT-NET architecture with an input size of 224×224 pixels, no cropping, and no denoising achieves the accuracy of 99.09% to automatically detect the AMD. Compared with the well-known deep learning architecture, VGG16, the AMDOCT-NET improves accuracy by 2.09% and reduces the model size by 53.7%.
Subjects
Age-related macular degeneration | Deep learning technology | Optical coherence tomography
Type
conference paper