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深度神经网络在 AMD 中期患者的视网膜 OCT 中自动检测外丛状层下塌

Deep Neural Networks for Automated Outer Plexiform Layer Subsidence Detection on Retinal OCT of Patients With Intermediate AMD.

机构信息

Christian Doppler Laboratory for Artificial Intelligence in Retina, Department of Ophthalmology and Optometry, Medical University Vienna, Vienna, Austria.

Laboratory for Ophthalmic Image Analysis, Department of Ophthalmology and Optometry, Medical University of Vienna, Vienna, Austria.

出版信息

Transl Vis Sci Technol. 2024 Jun 3;13(6):7. doi: 10.1167/tvst.13.6.7.

Abstract

PURPOSE

The subsidence of the outer plexiform layer (OPL) is an important imaging biomarker on optical coherence tomography (OCT) associated with early outer retinal atrophy and a risk factor for progression to geographic atrophy in patients with intermediate age-related macular degeneration (AMD). Deep neural networks (DNNs) for OCT can support automated detection and localization of this biomarker.

METHODS

The method predicts potential OPL subsidence locations on retinal OCTs. A detection module (DM) infers bounding boxes around subsidences with a likelihood score, and a classification module (CM) assesses subsidence presence at the B-scan level. Overlapping boxes between B-scans are combined and scored by the product of the DM and CM predictions. The volume-wise score is the maximum prediction across all B-scans. One development and one independent external data set were used with 140 and 26 patients with AMD, respectively.

RESULTS

The system detected more than 85% of OPL subsidences with less than one false-positive (FP)/scan. The average area under the curve was 0.94 ± 0.03 for volume-level detection. Similar or better performance was achieved on the independent external data set.

CONCLUSIONS

DNN systems can efficiently perform automated retinal layer subsidence detection in retinal OCT images. In particular, the proposed DNN system detects OPL subsidence with high sensitivity and a very limited number of FP detections.

TRANSLATIONAL RELEVANCE

DNNs enable objective identification of early signs associated with high risk of progression to the atrophic late stage of AMD, ideally suited for screening and assessing the efficacy of the interventions aiming to slow disease progression.

摘要

目的

外丛状层(OPL)的下塌是光学相干断层扫描(OCT)的一个重要成像生物标志物,与早期外视网膜萎缩有关,也是中龄相关性黄斑变性(AMD)患者向地图样萎缩进展的一个危险因素。深度神经网络(DNN)可用于 OCT 来支持自动检测和定位该生物标志物。

方法

该方法预测视网膜 OCT 上 OPL 潜在下塌位置。检测模块(DM)通过似然评分推断下塌周围的边界框,分类模块(CM)评估 B 扫描水平的下塌存在情况。B 扫描之间重叠的框通过 DM 和 CM 预测的乘积进行组合和评分。体素水平的评分是所有 B 扫描中最大的预测值。分别使用一个开发数据集和一个独立外部数据集,每个数据集包含 140 名和 26 名 AMD 患者。

结果

该系统检测到超过 85%的 OPL 下塌,每个扫描的假阳性(FP)少于一个。体积水平检测的平均曲线下面积为 0.94±0.03。在独立外部数据集上也实现了类似或更好的性能。

结论

DNN 系统可以有效地在视网膜 OCT 图像中执行自动视网膜层下塌检测。特别是,所提出的 DNN 系统以非常低的 FP 检测率,高灵敏度检测到 OPL 下塌。

翻译

曹梦迪

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