A Deep Ensemble Learning-Based CNN Architecture for Multiclass Retinal Fluid Segmentation in OCT Images

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Date

2023

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Institute of Electrical and Electronics Engineers Inc.

Abstract

Retinal Fluids (fluid collections) develop because of the accumulation of fluid in the retina, which may be caused by several retinal disorders, and can lead to loss of vision. Optical coherence tomography (OCT) provides non-invasive cross-sectional images of the retina and enables the visualization of different retinal abnormalities. The identification and segmentation of retinal cysts from OCT scans is gaining immense attention since the manual analysis of OCT data is time consuming and requires an experienced ophthalmologist. Identification and categorization of the retinal cysts aids in establishing the pathophysiology of various retinal diseases, such as macular edema, diabetic macular edema, and age-related macular degeneration. Hence, an automatic algorithm for the segmentation and detection of retinal cysts would be of great value to the ophthalmologists. In this study, we have proposed a convolutional neural network-based deep ensemble architecture that can segment the three different types of retinal cysts from the retinal OCT images. The quantitative and qualitative performance of the model was evaluated using the publicly available RETOUCH challenge dataset. The proposed model outperformed the state-of-the-art methods, with an overall improvement of 1.8%. © 2013 IEEE.

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Keywords

Aldehydes, Deep learning, Image segmentation, Medical imaging, Network architecture, Neural networks, Ophthalmology, Cross sectional image, Ensemble approaches, Ensemble learning, Intra-retinal fluids, Macular edema, Medical image segmentation, Pigment epithelial detachment, Retinal cyst, Sub retinal fluid, Optical tomography

Citation

IEEE Access, 2023, 11, , pp. 17241-17251

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