Abu-Qamar Omar, Lewis Warren, Mendonca Luisa S M, De Sisternes Luis, Chin Adam, Alibhai A Yasin, Gendelman Isaac, Reichel Elias, Magazzeni Stephanie, Kubach Sophie, Durbin Mary, Witkin Andre J, Baumal Caroline R, Duker Jay S, Waheed Nadia K
New England Eye Center, Tufts Medical Center, 800 Washington St., Box 450, Boston, MA, 02111, USA.
Research and Development, Carl Zeiss Meditec, Dublin, CA, 94568, USA.
Int J Retina Vitreous. 2023 Oct 11;9(1):62. doi: 10.1186/s40942-023-00486-5.
This study aimed to develop a deep learning (DL) algorithm that enhances the quality of a single-frame enface OCTA scan to make it comparable to 4-frame averaged scan without the need for the repeated acquisitions required for averaging.
Each of the healthy eyes and eyes from diabetic subjects that were prospectively enrolled in this cross-sectional study underwent four repeated 6 × 6 mm macular scans (PLEX Elite 9000 SS-OCT), and the repeated scans of each eye were co-registered to produce 4-frame averages. This prospective dataset of original (single-frame) enface scans and their corresponding averaged scans was divided into a training dataset and a validation dataset. In the training dataset, a DL algorithm (named pseudoaveraging) was trained using original scans as input and 4-frame averages as target. In the validation dataset, the pseudoaveraging algorithm was applied to single-frame scans to produce pseudoaveraged scans, and the single-frame and its corresponding averaged and pseudoaveraged scans were all qualitatively compared. In a separate retrospectively collected dataset of single-frame scans from eyes of diabetic subjects, the DL algorithm was applied, and the produced pseudoaveraged scan was qualitatively compared against its corresponding original.
This study included 39 eyes that comprised the prospective dataset (split into 5 eyes for training and 34 eyes for validating the DL algorithm), and 105 eyes that comprised the retrospective test dataset. Of the total 144 study eyes, 58% had any level of diabetic retinopathy (with and without diabetic macular edema), and the rest were from healthy eyes or eyes of diabetic subjects but without diabetic retinopathy and without macular edema. Grading results in the validation dataset showed that the pseudoaveraged enface scan ranked best in overall scan quality, background noise reduction, and visibility of microaneurysms (p < 0.05). Averaged scan ranked best for motion artifact reduction (p < 0.05). Grading results in the test dataset showed that pseudoaveraging resulted in enhanced small vessels, reduction of background noise, and motion artifact in 100%, 82%, and 98% of scans, respectively. Rates of false-positive/-negative perfusion were zero.
Pseudoaveraging is a feasible DL approach to more efficiently improve enface OCTA scan quality without introducing notable image artifacts.
本研究旨在开发一种深度学习(DL)算法,以提高单帧眼底光学相干断层扫描血管造影(OCTA)图像的质量,使其无需进行平均所需的重复采集即可与四帧平均扫描图像相媲美。
前瞻性纳入本横断面研究的健康受试者和糖尿病患者的眼睛均接受了四次重复的6×6mm黄斑扫描(PLEX Elite 9000 SS-OCT),并将每只眼睛的重复扫描图像进行配准以生成四帧平均图像。这个原始(单帧)眼底扫描及其相应平均扫描的前瞻性数据集被分为训练数据集和验证数据集。在训练数据集中,使用原始扫描图像作为输入,四帧平均图像作为目标来训练一种DL算法(命名为伪平均算法)。在验证数据集中,将伪平均算法应用于单帧扫描图像以生成伪平均扫描图像,并对单帧扫描图像及其相应的平均扫描图像和伪平均扫描图像进行定性比较。在一个单独的从糖尿病患者眼睛回顾性收集的单帧扫描数据集中,应用DL算法,并将生成的伪平均扫描图像与其相应的原始图像进行定性比较。
本研究纳入了39只眼睛组成前瞻性数据集(分为5只眼睛用于训练,34只眼睛用于验证DL算法),以及105只眼睛组成回顾性测试数据集。在总共144只研究眼中,58%患有任何程度的糖尿病视网膜病变(有或没有糖尿病性黄斑水肿),其余来自健康眼睛或糖尿病患者的眼睛,但没有糖尿病视网膜病变且没有黄斑水肿。验证数据集中的分级结果表明,伪平均眼底扫描在整体扫描质量、背景噪声降低和微动脉瘤可见性方面排名最佳(p<0.05)。平均扫描在减少运动伪影方面排名最佳(p<0.05)。测试数据集中的分级结果表明,伪平均算法分别在100%、82%和98%的扫描中增强了小血管、降低了背景噪声并减少了运动伪影。假阳性/假阴性灌注率为零。
伪平均算法是一种可行的DL方法,能够更有效地提高眼底OCTA扫描质量,且不会引入明显的图像伪影。