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Using Deep Learning in Automated Detection of Graft Detachment in Descemet Membrane Endothelial Keratoplasty: A Pilot Study

机译:使用深度学习在Desceet膜内皮角落成形术中的贪污脱落自动检测:试验研究

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Purpose: To evaluate a deep learning-based method to automatically detect graft detachment (GD) after Descemet membrane endothelial keratoplasty (DMEK) in anterior segment optical coherence tomography (AS-OCT). Methods: In this study, a total of 1172 AS-OCT images (609: attached graft; 563: detached graft) were used to train and test a deep convolutional neural network to automatically detect GD after DMEK surgery in AS-OCT images. GD was defined as a not completely attached graft. After training with 1072 of these images (559: attached graft; 513: detached graft), the created classifier was tested with the remaining 100 AS-OCT scans (50: attached graft; 50 detached: graft). Hereby, a probability score for GD (GD score) was determined for each of the tested OCT images. Results: The mean GD score was 0.88 +/- 0.2 in the GD group and 0.08 +/- 0.13 in the group with an attached graft. The differences between both groups were highly significant (P < 0.001). The sensitivity of the classifier was 98%, the specificity 94%, and the accuracy 96%. The coefficient of variation was 3.28 +/- 6.90% for the GD group and 2.82 +/- 3.81% for the graft attachment group. Conclusions: With the presented deep learning-based classifier, reliable automated detection of GD after DMEK is possible. Further work is needed to incorporate information about the size and position of GD and to develop a standardized approach regarding when rebubbling may be needed.
机译:目的:评估基于深度学习的方法,以在前段光学相干断层扫描(AS-OCT)中的去除膜内皮角膜形术(DMEK)后自动检测接枝脱离(GD)。方法:在本研究中,总共1172个AS-OCT图像(609:连接移植物; 563:分离的移植物)用于培训和测试深度卷积神经网络,以在AS-OCT图像中自动检测GD。 GD被定义为不是完全连接的移植物。在用1072个图像的训练之后(559:附加的移植物; 513:分离的移植物),用剩余的100 AS-OCT扫描(50:附着的移植物; 50分离:移植物)测试所产生的分类器。因此,针对每个测试的OCT图像确定GD(GD分数)的概率分数。结果:GD组的平均GD得分为0.88 +/- 0.2,其中组中的0.08 +/- 0.13,具有附着的移植物。两组之间的差异非常显着(P <0.001)。分类器的敏感性为98%,特异性为94%,精度为96%。 GD组的变异系数为3.28 +/- 6.90%,接枝连接组为2.82 +/- 3.81%。结论:随着基于深度学习的分类器,可以在DMEK之后可靠的GD自动检测。需要进一步的工作来纳入关于GD的大小和位置的信息,并在需要时开发有关有关的标准化方法。

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