OCT Angiography Artifacts in Glaucoma.
Alireza Kamalipour, Sasan Moghimi, Huiyuan Hou, Rafaella C Penteado, Won Hyuk Oh, James A Proudfoot, Nevin El-Nimri, Eren Ekici, Jasmin Rezapour, Linda M Zangwill, Christopher Bowd, Robert N Weinreb
Summary
OCTA artifacts associated with poor-quality images are frequent, and their prevalence is affected by ocular and patient characteristics.
Abstract
PURPOSE
To determine the prevalence of different types of artifacts seen in OCT angiography (OCTA) images of healthy and glaucoma eyes and evaluate the characteristics associated with poor-quality images.
DESIGN
Retrospective study.
PARTICIPANTS
A total of 649 eyes of 368 healthy, glaucoma suspect, and glaucoma patients.
METHODS
Angiovue (Optovue Inc) high-density (HD) and non-HD optic nerve head and macula OCTA images of participants were evaluated by 4 expert reviewers for the presence of different artifacts, including eye movement, defocus, shadow, decentration, segmentation error, blink, and Z offset in the superficial vascular layer. Each OCTA scan was designated to have good or poor quality based on the presence of artifacts. The association of demographic and ocular characteristics with the likelihood of obtaining poor-quality OCTA images was evaluated.
MAIN OUTCOME MEASURES
The prevalence of OCTA artifacts and the factors associated with increased likelihood of capturing poor-quality OCTA images.
RESULTS
A total of 5263 OCTA images were evaluated. Overall, 33.9% of the OCTA images had poor quality. The majority of images with acceptable quality scores (QS ≥ 4) had no artifacts (76.6%). Other images had 1 (13.6%) or 2 or more artifacts (9.8%). Older age (P < 0.001), male gender (P = 0.045), worse visual field mean deviation (P < 0.001), absence of eye tracking (P < 0.001), and macular scan area (P < 0.001) were associated with a higher likelihood of obtaining poor-quality images. In images with acceptable QS, the commercially available quality measures including QS and signal strength index had the area under the receiver operating characteristic curves of 0.65 (95% confidence interval [CI], 0.62-0.69) and 0.70 (95% CI, 0.68-0.73) to detect good-quality images, respectively.
CONCLUSIONS
OCTA artifacts associated with poor-quality images are frequent, and their prevalence is affected by ocular and patient characteristics. One should not rely solely on the quantitative assessments that are provided automatically by OCTA instruments. A systematic scan review should be conducted to ensure appropriate interpretation of OCTA images. Given the high prevalence of poor-quality OCTA images, the images should be reacquired whenever an apparent and correctable artifact is present on a captured image.
Keywords
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Discussion
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