Department of Biomedical Engineering, Faculty of Life and Medical Sciences, Doshisha University, Kyotanabe, Japan.
Department of Biomedical Sciences and Informatics, Faculty of Life and Medical Sciences, Doshisha University, Kyotanabe, Japan; and.
Cornea. 2022 Jul 1;41(7):901-907. doi: 10.1097/ICO.0000000000002956. Epub 2021 Dec 3.
The purpose of this study was to assess the U-Net-based convolutional neural network performance for segmenting corneal endothelium and guttae of Fuchs endothelial corneal dystrophy.
Twenty-eight images of corneal endothelial cells and guttae of Col8a2L450W/L450W knock-in mice were obtained by specular microscopy. We used 20 images as training data to develop the U-Net for analyzing guttae and cell borders. The proposed network was validated using independent test data of 8 images. Cell density, hexagonality, and coefficient of variation were calculated from the predicted cell borders and compared with ground truth.
U-Net allowed the prediction of cell borders and guttae, and overlays of those segmentations on specular microscopy images highly corresponded to ground truth. The average number of guttae per field was 6.25 ± 8.07 for ground truth and 6.25 ± 7.87 when predicted by the network (Pearson correlation coefficient 0.989, P = 3.25 × 10 -6 ). The guttae areas were 1.60% ± 1.79% by manual determination and 1.90% ± 2.02% determined by the network (Pearson correlation coefficient 0.970, P = 6.72 × 10 -5 ). Cell density, hexagonality, and coefficient of variation analyzed by the proposed network for cell borders showed very strong correlations with ground truth (Pearson correlation coefficient 0.989, P = 3.23 × 10 -6 , Pearson correlation coefficient 0.978, P = 2.66 × 10 -5 , and Pearson correlation coefficient 0.936, P = 6.20 × 10 -4 , respectively).
We demonstrated proof of concept for application of U-Net for objective analysis of corneal endothelial cells and guttae in Fuchs endothelial corneal dystrophy, based on limited ground truth data.
本研究旨在评估基于 U-Net 的卷积神经网络在分割 Fuchs 内皮角膜营养不良角膜内皮细胞和 Guttae 中的性能。
通过共聚焦显微镜获得 Col8a2L450W/L450W 敲入小鼠的 28 张角膜内皮细胞和 Guttae 图像。我们使用 20 张图像作为训练数据来开发用于分析 Guttae 和细胞边界的 U-Net。使用 8 张独立测试图像验证所提出的网络。从预测的细胞边界计算细胞密度、六边形度和变异系数,并与地面真实值进行比较。
U-Net 允许预测细胞边界和 Guttae,并且这些分割的叠加与地面真实值高度对应。通过手动确定的每个视野中的 Guttae 数为 6.25 ± 8.07,通过网络预测的为 6.25 ± 7.87(皮尔逊相关系数 0.989,P = 3.25×10-6)。手动确定的 Guttae 面积为 1.60%±1.79%,通过网络确定的为 1.90%±2.02%(皮尔逊相关系数 0.970,P = 6.72×10-5)。通过所提出的网络用于细胞边界的细胞密度、六边形度和变异系数与地面真实值显示出非常强的相关性(皮尔逊相关系数 0.989,P = 3.23×10-6,皮尔逊相关系数 0.978,P = 2.66×10-5,皮尔逊相关系数 0.936,P = 6.20×10-4)。
我们基于有限的地面真实数据,证明了 U-Net 在 Fuchs 内皮角膜营养不良的角膜内皮细胞和 Guttae 的客观分析中的应用概念验证。