首页> 外文会议>International Workshop on Ophthalmic Medical Image Analysis;International Conference on Medical Image Computing and Computer-Assisted Intervention >Deep-Learning-Based Estimation of 3D Optic-Nerve-Head Shape from 2D Color Fundus Photographs in Cases of Optic Disc Swelling
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Deep-Learning-Based Estimation of 3D Optic-Nerve-Head Shape from 2D Color Fundus Photographs in Cases of Optic Disc Swelling

机译:光盘膨胀情况下2D彩色眼罩3D光神经头形状的深度学习估计

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摘要

In cases of optic disc swelling, volumetric measurements and shape features are promising to evaluate the severity of the swelling and to differentiate the cause. However, previous studies have mostly focused on the use of volumetric spectral-domain optical coherence tomography (OCT), which is not always available in non-ophthalmic clinics and telemedical settings. In this work, we propose the use of a deep-learning-based approach (more specifically, an adaptation of a feature pyramid network, FPN) to obtain total-retinal-thickness (TRT) maps (as would normally be obtained from OCT) from more readily available 2D color fundus photographs. From only these thickness maps, we are able to compute both volumetric measures of swelling for quantification of the location/degree of swelling and 3D statistical shape measures for quantification of optic-nerve-head morphology. Evaluating our proposed approach (using nine-fold cross validation) on 102 paired color fundus photographs and OCT images (with the OCT acting as the ground truth) from subjects with various levels of optic disc swelling, we achieved significantly smaller errors and significantly larger linear correlations of both the volumetric measures and shape measures than that which would be obtained using a U-Net approach. The proposed method has great potential to make 3D ONH shape analysis possible even in situations where only color fundus photographs are available; these 3D shape measures can also be beneficial to help differentiate causes of optic disc swelling.
机译:在光盘膨胀的情况下,体积测量和形状特征是有希望评估肿胀的严重程度并区分原因。然而,之前的研究主要集中在使用体积谱域光学相干断层扫描(OCT)上,这在非眼科诊所和远程电流环境中并不总是可用。在这项工作中,我们建议使用基于深度学习的方法(更具体地,调整特征金字塔网络,FPN)以获得总视网膜厚度(TRT)地图(正如通常从OCT获得的那样)从更容易获得的2D颜色眼底照片。从只有这些厚度图,我们能够计算膨胀的膨胀量,以定量溶胀的位置/程度和3D统计形状措施,用于定量视神经头形态。评估我们提出的方法(使用九倍交叉验证)在102个成对的颜色眼底照片和OCT图像(随着OCT作为地面真理),来自各种含量的视神经椎间盘溶胀,我们的误差明显较小,线性显着更大体积措施和形状测量的相关性比使用U-Net方法获得的形状测量。即使在只有彩色眼底照片的情况下,所提出的方法也可能产生3D ONH形状分析;这些3D形状措施也有利于帮助区分视神经盘膨胀的原因。

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