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人类与人工智能:用于年龄相关性黄斑变性患者光学相干断层扫描图像中视网膜层和液体分割的深度学习模型的验证

Human versus Artificial Intelligence: Validation of a Deep Learning Model for Retinal Layer and Fluid Segmentation in Optical Coherence Tomography Images from Patients with Age-Related Macular Degeneration.

作者信息

Miranda Mariana, Santos-Oliveira Joana, Mendonça Ana Maria, Sousa Vânia, Melo Tânia, Carneiro Ângela

机构信息

Department of Surgery and Physiology, Faculty of Medicine of the University of Porto, 4200 Porto, Portugal.

Department of Ophthalmology, Centro Hospitalar Universitário of São João, 4200 Porto, Portugal.

出版信息

Diagnostics (Basel). 2024 May 8;14(10):975. doi: 10.3390/diagnostics14100975.

Abstract

Artificial intelligence (AI) models have received considerable attention in recent years for their ability to identify optical coherence tomography (OCT) biomarkers with clinical diagnostic potential and predict disease progression. This study aims to externally validate a deep learning (DL) algorithm by comparing its segmentation of retinal layers and fluid with a gold-standard method for manually adjusting the automatic segmentation of the Heidelberg Spectralis HRA + OCT software Version 6.16.8.0. A total of sixty OCT images of healthy subjects and patients with intermediate and exudative age-related macular degeneration (AMD) were included. A quantitative analysis of the retinal thickness and fluid area was performed, and the discrepancy between these methods was investigated. The results showed a moderate-to-strong correlation between the metrics extracted by both software types, in all the groups, and an overall near-perfect area overlap was observed, except for in the inner segment ellipsoid (ISE) layer. The DL system detected a significant difference in the outer retinal thickness across disease stages and accurately identified fluid in exudative cases. In more diseased eyes, there was significantly more disagreement between these methods. This DL system appears to be a reliable method for accessing important OCT biomarkers in AMD. However, further accuracy testing should be conducted to confirm its validity in real-world settings to ultimately aid ophthalmologists in OCT imaging management and guide timely treatment approaches.

摘要

近年来,人工智能(AI)模型因其能够识别具有临床诊断潜力的光学相干断层扫描(OCT)生物标志物并预测疾病进展而受到广泛关注。本研究旨在通过将深度学习(DL)算法对视网膜层和液体的分割与用于手动调整海德堡Spectralis HRA + OCT软件版本6.16.8.0自动分割的金标准方法进行比较,对该算法进行外部验证。总共纳入了60张健康受试者以及中度和渗出性年龄相关性黄斑变性(AMD)患者的OCT图像。对视网膜厚度和液体面积进行了定量分析,并研究了这些方法之间的差异。结果显示,在所有组中,两种软件类型提取的指标之间存在中度到强的相关性,除了内节椭圆体(ISE)层外,总体上观察到近乎完美的面积重叠。DL系统检测到疾病各阶段外视网膜厚度存在显著差异,并准确识别出渗出性病例中的液体。在病情更严重的眼睛中,这些方法之间的分歧明显更多。该DL系统似乎是一种获取AMD中重要OCT生物标志物的可靠方法。然而,应进行进一步的准确性测试,以确认其在实际环境中的有效性,最终帮助眼科医生进行OCT成像管理并指导及时的治疗方法。

https://cdn.ncbi.nlm.nih.gov/pmc/blobs/2216/11119996/f7115c57a948/diagnostics-14-00975-g001.jpg

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