This study examined and compared outcomes of deep learning (DL) in identifying swept-source optical coherence tomography (OCT) images without myopic macular lesions [i.e., no high myopia (nHM) vs. high myopia (HM)], and OCT images with myopic macular lesions [e.g., myopic choroidal neovascularization (mCNV) and retinoschisis (RS)]. A total of 910 SS-OCT images were included in the study as follows and analyzed by k-fold cross-validation (k = 5) using DL's renowned model, Visual Geometry Group-16: nHM, 146 images; HM, 531 images; mCNV, 122 images; and RS, 111 images (n = 910). The binary classification of OCT images with or without myopic macular lesions; the binary classification of HM images and images with myopic macular lesions (i.e., mC...
Background: The ability of deep learning (DL) algorithms to identify eyes with neovascular age-relat...
Computer-aided diagnosis has the potential to replace or at least support medical personnel in their...
PURPOSE: To validate the generalizability of a deep learning system (DLS) that detects diabetic macu...
We aimed to investigate the detection of idiopathic macular holes (MHs) using ultra-wide-field fundu...
Purpose. Although optical coherence tomography (OCT) is essential for ophthalmologists, reading of f...
Background and Objective. To determine if using a multi-input deep learning approach in the image an...
PurposeOptical coherence tomography (OCT) is widely used in the management of retinal pathologies, i...
Recently, researchers have built new deep learning (DL) models using a single image modality to diag...
PURPOSE: To apply a deep learning algorithm for automated, objective, and comprehensive quantificati...
IMPORTANCE: As currently used, microperimetry is a burdensome clinical testing modality for testing...
Artificial intelligence is having an important effect on different areas of medicine, and ophthalmol...
Imaging plays a pivotal role in eye assessment. With the introduction of advanced machine learning a...
IMPORTANCE: Quantitative volumetric measures of retinal disease in optical coherence tomography (O...
There are many eye diseases but the most two common retinal diseases are Age-Related Macular Degener...
Purpose: To assess the performance of deep learning algorithms for different tasks in retinal fundus...
Background: The ability of deep learning (DL) algorithms to identify eyes with neovascular age-relat...
Computer-aided diagnosis has the potential to replace or at least support medical personnel in their...
PURPOSE: To validate the generalizability of a deep learning system (DLS) that detects diabetic macu...
We aimed to investigate the detection of idiopathic macular holes (MHs) using ultra-wide-field fundu...
Purpose. Although optical coherence tomography (OCT) is essential for ophthalmologists, reading of f...
Background and Objective. To determine if using a multi-input deep learning approach in the image an...
PurposeOptical coherence tomography (OCT) is widely used in the management of retinal pathologies, i...
Recently, researchers have built new deep learning (DL) models using a single image modality to diag...
PURPOSE: To apply a deep learning algorithm for automated, objective, and comprehensive quantificati...
IMPORTANCE: As currently used, microperimetry is a burdensome clinical testing modality for testing...
Artificial intelligence is having an important effect on different areas of medicine, and ophthalmol...
Imaging plays a pivotal role in eye assessment. With the introduction of advanced machine learning a...
IMPORTANCE: Quantitative volumetric measures of retinal disease in optical coherence tomography (O...
There are many eye diseases but the most two common retinal diseases are Age-Related Macular Degener...
Purpose: To assess the performance of deep learning algorithms for different tasks in retinal fundus...
Background: The ability of deep learning (DL) algorithms to identify eyes with neovascular age-relat...
Computer-aided diagnosis has the potential to replace or at least support medical personnel in their...
PURPOSE: To validate the generalizability of a deep learning system (DLS) that detects diabetic macu...