Department of Biomedical Science and Engineering, Gwangju Institute of Science and Technology, Gwangju, South Korea.
Department of Ophthalmology, Yeouido St. Mary's Hospital, College of Medicine, The Catholic University of Korea, Seoul, South Korea.
Ocul Surf. 2022 Oct;26:283-294. doi: 10.1016/j.jtos.2022.06.006. Epub 2022 Jun 24.
Develop a deep learning-based automated method to segment meibomian glands (MG) and eyelids, quantitatively analyze the MG area and MG ratio, estimate the meiboscore, and remove specular reflections from infrared images.
A total of 1600 meibography images were captured in a clinical setting. 1000 images were precisely annotated with multiple revisions by investigators and graded 6 times by meibomian gland dysfunction (MGD) experts. Two deep learning (DL) models were trained separately to segment areas of the MG and eyelid. Those segmentation were used to estimate MG ratio and meiboscores using a classification-based DL model. A generative adversarial network was implemented to remove specular reflections from original images.
The mean ratio of MG calculated by investigator annotation and DL segmentation was consistent 26.23% vs 25.12% in the upper eyelids and 32.34% vs. 32.29% in the lower eyelids, respectively. Our DL model achieved 73.01% accuracy for meiboscore classification on validation set and 59.17% accuracy when tested on images from independent center, compared to 53.44% validation accuracy by MGD experts. The DL-based approach successfully removes reflection from the original MG images without affecting meiboscore grading.
DL with infrared meibography provides a fully automated, fast quantitative evaluation of MG morphology (MG Segmentation, MG area, MG ratio, and meiboscore) which are sufficiently accurate for diagnosing dry eye disease. Also, the DL removes specular reflection from images to be used by ophthalmologists for distraction-free assessment.
开发一种基于深度学习的自动化方法来分割睑板腺(MG)和眼睑,定量分析 MG 区域和 MG 比例,估计 meiboscore,并从红外图像中去除镜面反射。
共采集了 1600 张睑板腺图像。1000 张图像由研究人员进行了多次精确注释,并由睑板腺功能障碍(MGD)专家进行了 6 次分级。分别训练了两个深度学习(DL)模型来分割 MG 和眼睑区域。这些分割用于使用基于分类的 DL 模型估计 MG 比例和 meiboscores。实施生成对抗网络从原始图像中去除镜面反射。
研究人员注释和 DL 分割计算的上眼睑 MG 平均比例分别为 26.23%和 25.12%,下眼睑分别为 32.34%和 32.29%。我们的 DL 模型在验证集上对 meiboscore 分类的准确率为 73.01%,在独立中心的图像上测试的准确率为 59.17%,而 MGD 专家的验证准确率为 53.44%。基于 DL 的方法成功地从原始 MG 图像中去除了反射,而不会影响 meiboscore 分级。
基于红外睑板腺照相术的 DL 提供了一种全自动、快速的 MG 形态定量评估(MG 分割、MG 区域、MG 比例和 meiboscore),对于诊断干眼症足够准确。此外,DL 还可以从图像中去除镜面反射,供眼科医生进行无干扰评估。