Ruiz-Lozano Raul E, Soifer Matias, Zemborain Zane Z, Azar Nadim S, Quiroga-Garza Manuel E, Murillo Sofia, Ma Symon, Komai Seitaro, Horne Anupama, Khodor Ali, Rodriguez-Gutierrez Luis A, Stinnett Sandra S, Farsiu Sina, Perez Victor L
Department of Ophthalmology, Foster Center for Ocular Immunology at Duke Eye Center, Duke University School of Medicine, Durham, NC, USA; Bascom Palmer Eye Institute, University of Miami, Miami, FL, USA.
Department of Biomedical Engineering, Duke University, Durham, NC, USA.
Ocul Surf. 2024 Oct;34:241-246. doi: 10.1016/j.jtos.2024.08.002. Epub 2024 Aug 2.
To evaluate and compare subbasal corneal nerve parameters of the inferior whorl in patients with dry eye disease (DED), neuropathic corneal pain (NCP), and controls using a novel deep-learning-based algorithm to analyze in-vivo confocal microscopy (IVCM) images.
Subbasal nerve plexus (SNP) images of the inferior whorl of patients with DED (n = 49, 77 eyes), NCP (n = 14, 24 eyes), and controls (n = 41, 59 eyes) were taken with IVCM and further analyzed using an open-source artificial intelligence (AI)-based algorithm previously developed by our group. This algorithm automatically segments nerves, immune cells, and neuromas in the SNP. The following parameters were compared between groups: nerve area density, average nerve thickness, average nerve segment tortuosity, junction point density, neuroma density, and immune cell density.
160 eyes of 104 patients (63 % females), aged 56.8 ± 15.4 years, were included. The mean nerve area density was significantly lower in the DED (P = 0.012) and NCP (P < 0.001) groups compared to the control group. The junction point density was lower in the NCP group compared with control (P = 0.001) and DED (P = 0.004) groups. The immune cell density was higher in the DED group compared with controls (P < 0.001).
Deep-learning-based analysis of IVCM images of the corneal SNP inferior whorl distinguished a decreased mean nerve area density in patients with DED and NCP compared with controls and an increased immune cell density in patients with oGVHD- and SS-associated DED. These findings suggest that the inferior whorl could be used as landmark to distinguish between patients with DED and NCP.
使用一种基于深度学习的新型算法分析体内共焦显微镜(IVCM)图像,以评估和比较干眼疾病(DED)、神经性角膜疼痛(NCP)患者以及对照组患者下角膜神经的参数。
对DED患者(n = 49,77眼)、NCP患者(n = 14,24眼)和对照组(n = 41,59眼)的下角膜螺旋神经丛(SNP)图像进行IVCM采集,并使用我们团队之前开发的基于开源人工智能(AI)的算法进行进一步分析。该算法可自动分割SNP中的神经、免疫细胞和神经瘤。比较各组之间的以下参数:神经面积密度、平均神经厚度、平均神经节段曲折度、连接点密度、神经瘤密度和免疫细胞密度。
纳入104例患者的160只眼(63%为女性),年龄56.8±15.4岁。与对照组相比,DED组(P = 0.012)和NCP组(P < 0.001)的平均神经面积密度显著降低。与对照组(P = 0.001)和DED组(P = 0.004)相比,NCP组的连接点密度较低。与对照组相比,DED组的免疫细胞密度较高(P < 0.001)。
基于深度学习对角膜SNP下角膜图像的分析表明,与对照组相比,DED和NCP患者的平均神经面积密度降低,而oGVHD和SS相关DED患者的免疫细胞密度增加。这些发现表明,下角膜螺旋可作为区分DED和NCP患者的标志。