Akpek Esen Karamursel, Li Gavin, Aldave Anthony J, Amescua Guillermo, Colby Kathryn A, Cortina Maria S, de la Cruz Jose, Parel Jean-Marie A, Schmiedel Thomas
The Ocular Surface Disease Clinic, The Wilmer Eye Institute, The Johns Hopkins University School of Medicine, Baltimore, MD, USA.
Icahn School of Medicine at Mount Sinai, New York, NY, USA.
Transl Vis Sci Technol. 2025 Jun 2;14(6):1. doi: 10.1167/tvst.14.6.1.
The purpose of this study was to assess the utility of artificial intelligence (AI) assisted analysis of anterior segment optical coherence tomography (AS-OCT) imaging of the device-cornea joint in predicting outcomes of an intrastromal synthetic cornea device in a rabbit model.
Sixteen rabbits underwent intrastromal synthetic cornea implantation. Baseline anterior lamellar thickness was established using AS-OCT intraoperatively. Monthly postoperative clinical examinations and AS-OCT imaging were performed, focusing on the peri-optic zone. A convolutional neural network was trained using a subset of manually marked images to automatically detect anterior lamellar tissue. Images were aligned manually using reference coordinates. The tissue volume data were evaluated as both absolute volume and percentage change from baseline using AI.
Sixteen rabbits were observed for 6 (n = 8) and 12 (n = 8) months. Mild focal anterior lamella thinning without retraction was seen near tight sutures in 2 rabbits (2/8) in the 6-month cohort, whereas 2 rabbits (2/8) in the 12-month cohort showed mild focal retraction from the optic stem with thinning. AI-assisted AS-OCT image analyses detected tissue volume reduction up to 3 months before clinical examination, with a reliable threshold of 5% change in tissue volume.
AI-assisted AS-OCT can detect peri-prosthetic tissue loss and predicting postoperative complications following an intrastromal synthetic cornea implantation in a rabbit model. Further studies are warranted to explore its clinical utility in human patients.
AI-assisted monitoring of peri-optic corneal tissue volume may be a useful screening modality to detect subclinical thinning after artificial corneal implantation and inform clinical decision making.
本研究旨在评估人工智能(AI)辅助分析眼前节光学相干断层扫描(AS-OCT)成像中装置-角膜连接处情况,以预测兔模型中基质内人工合成角膜装置的预后。
16只兔子接受基质内人工合成角膜植入术。术中使用AS-OCT确定前板层厚度基线。术后每月进行临床检查和AS-OCT成像,重点关注视周区域。使用手动标记图像的子集训练卷积神经网络,以自动检测前板层组织。图像使用参考坐标进行手动对齐。使用AI将组织体积数据评估为绝对体积和相对于基线的百分比变化。
16只兔子分别观察了6个月(n = 8)和12个月(n = 8)。在6个月组中,2只兔子(2/8)在紧密缝线附近出现轻度局灶性前板层变薄且无退缩,而在12个月组中,2只兔子(2/8)表现为从视茎处出现轻度局灶性退缩并伴有变薄。AI辅助的AS-OCT图像分析在临床检查前3个月就能检测到组织体积减少,组织体积变化的可靠阈值为5%。
AI辅助的AS-OCT可检测兔模型中基质内人工合成角膜植入术后假体周围组织丢失并预测术后并发症。有必要进一步研究其在人类患者中的临床应用价值。
AI辅助监测视周角膜组织体积可能是一种有用的筛查方式,可检测人工角膜植入术后的亚临床变薄情况并为临床决策提供依据。