2022
DOI: 10.1167/tvst.11.1.22
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Diagnosis of Choroidal Disease With Deep Learning-Based Image Enhancement and Volumetric Quantification of Optical Coherence Tomography

Abstract: Purpose The purpose of this study was to quantify choroidal vessels (CVs) in pathological eyes in three dimensions (3D) using optical coherence tomography (OCT) and a deep-learning analysis. Methods A single-center retrospective study including 34 eyes of 34 patients (7 women and 27 men) with treatment-naïve central serous chorioretinopathy (CSC) and 33 eyes of 17 patients (7 women and 10 men) with Vogt-Koyanagi-Harada disease (VKH) or sympathetic ophthalmitis (SO) were… Show more

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Cited by 6 publications
(3 citation statements)
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References 37 publications
(42 reference statements)
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“… 18 This technique can achieve image quality comparable to 128× image averaging without extending the scan time. 18 , 19 Using this technique, we conducted automated delineation and 3D rendering of ICCs. We calculated the 3D (volume) and 2D (depth and length) metrics of ICCs from the 3D-rendered images of ICCs and investigated the correlation between these parameters and the baseline clinical characteristics including VF sensitivity.…”
Section: Introductionmentioning
confidence: 99%
“… 18 This technique can achieve image quality comparable to 128× image averaging without extending the scan time. 18 , 19 Using this technique, we conducted automated delineation and 3D rendering of ICCs. We calculated the 3D (volume) and 2D (depth and length) metrics of ICCs from the 3D-rendered images of ICCs and investigated the correlation between these parameters and the baseline clinical characteristics including VF sensitivity.…”
Section: Introductionmentioning
confidence: 99%
“…From 2015, there has been an exponential increase in the number of publications that use deep learning in the pathology field in Japan. Examples include gastrointestinal pathology, 122 precision medicine, 123 urothelial carcinoma, 124 ocular pathology, 125 esophageal cancer, 126 lung cancer, 127 thyroid cytology, 128 intestinal diseases, 122 , 129 - 135 sarcoma, 136 hematological, 137 - 140 among others. In the field of malignant lymphoma, Miyoshi H and Ohshima K et al showed how deep learning was capable of high-level computer-aided diagnosis based on H&E slides, including diffuse large B-cell lymphoma, follicular lymphoma, and reactive lymphoid hyperplasia; 141 and Hashimoto N and Takeuchi I et al analyzed several malignant lymphoma cases using immunohistochemical patterns.…”
Section: Artificial Intelligencementioning
confidence: 99%
“…Estimations of choroidal boundaries achieved high accuracy, fostering potential clinical benefits. Other studies have aimed to improve OCT image quality through denoising algorithms and image enhancement [180], expanding the scope of AI's role in choroidal analysis beyond segmentation and classification tasks.…”
Section: ) Classification Of Lesions and Vesselsmentioning
confidence: 99%