基于深度学习技术的青光眼眼底图像鲁棒筛选方法

Fatemeh Maadi, N. Faraji, Mohammadreza Hassannejad Bibalan
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引用次数: 3

摘要

本文对视盘和视杯进行了分割,建立了基于杯盘比(CDR)的青光眼诊断方法。为此,使用预先训练的SE-ResNet50作为下采样层的改进U-Net架构实现分割。最后,根据从所提出的分割步骤中获得的杯状和盘状区域,对CDR进行评估。该模型在Drishti-GS1和RIM-ONE v3数据库上进行训练,并在Drishti-GS1数据库的测试图像上进行测试。此外,为了证明所提出方法在不同数据集上的鲁棒性,在REFUGE数据库的验证图像上进行了测试阶段。按照f1评分标准,Drishti-GS1数据库对视杯和视盘的分割结果分别为0.926和0.977,REFUGE数据库对视杯和视盘的分割结果分别为0.79和0.91。在Drishti-GS1数据库中,本文方法的CDR与地面真实值CDR的相关系数为0.94,在REFUGE数据库中,该方法的相关系数为0.81。最后,Drishti-GS1和REFUGE数据库的AUC值分别为0.94和0.939,后者的结果显示了所提出的诊断模型的稳健性。
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A Robust Glaucoma Screening Method for Fundus Images Using Deep Learning Technique
In this paper, the optic disc and optic cup are segmented for a cup to disc ratio (CDR) based glaucoma diagnosis. For this purpose, segmentation is implemented by a modified U-Net architecture employing the pre-trained SE-ResNet50 as its downsampling layers. Finally, due to cup and disc areas obtained from the proposed segmentation step, CDR is evaluated. This model is trained on Drishti-GS1 and RIM-ONE v3 databases and is tested on test images of the Drishti-GS1 database. Additionally, to demonstrate the robustness of the proposed method across different datasets the test phase is performed on validation images of the REFUGE database. In terms of F1-score criteria, segmentation results of the optic cup and optic disc are respectively 0.926 and 0.977 for the Drishti-GS1 database and 0.79 and 0.91 for the REFUGE database. Also, the correlation coefficient between the proposed method CDR and the ground truth CDR is 0.94 for the Drishti-GS1 database and is 0.81 for the REFUGE database. Finally, the AUC value is obtained 0.94 and 0.939 for Drishti-GS1 and REFUGE databases, respectively, where the latter result shows the robustness of the proposed diagnosis model.
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