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首页> 外文期刊>PLoS One >Automated detection of a nonperfusion area caused by retinal vein occlusion in optical coherence tomography angiography images using deep learning
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Automated detection of a nonperfusion area caused by retinal vein occlusion in optical coherence tomography angiography images using deep learning

机译:利用深度学习自动检测光学相干断层造影血管造影图像中的视网膜静脉闭塞引起的非蓄水区

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We aimed to assess the ability of deep learning (DL) and support vector machine (SVM) to detect a nonperfusion area (NPA) caused by retinal vein occlusion (RVO) with optical coherence tomography angiography (OCTA) images. The study included 322 OCTA images (normal: 148; NPA owing to RVO: 174 [128 branch RVO images and 46 central RVO images]). Training to construct the DL model using deep convolutional neural network (DNN) algorithms was provided using OCTA images. The SVM used a scikit-learn library with a radial basis function kernel. The area under the curve (AUC), sensitivity and specificity for detecting an NPA were examined. We compared the diagnostic ability (sensitivity, specificity and average required time) between the DNN, SVM and seven ophthalmologists. Heat maps were generated. With regard to the DNN, the mean AUC, sensitivity, specificity and average required time for distinguishing RVO OCTA images with an NPA from normal OCTA images were 0.986, 93.7%, 97.3% and 176.9 s, respectively. With regard to SVM, the mean AUC, sensitivity, and specificity were 0.880, 79.3%, and 81.1%, respectively. With regard to the seven ophthalmologists, the mean AUC, sensitivity, specificity and average required time were 0.962, 90.8%, 89.2%, and 700.6 s, respectively. The DNN focused on the foveal avascular zone and NPA in heat maps. The performance of the DNN was significantly better than that of SVM in all parameters (p 0.01, all) and that of the ophthalmologists in AUC and specificity ( p 0.01, all). The combination of DL and OCTA images had high accuracy for the detection of an NPA, and it might be useful in clinical practice and retinal screening.
机译:我们旨在评估深度学习(DL)和支持向量机(SVM)检测由视网膜静脉闭塞(RVO)引起的非植物静脉阻塞(RVO)与光学相干断层造影血管造影(OctA)图像引起的非薄发区域(NPA)的能力。该研究包括322个Octa图像(正常:148;由于RVO:174 [128分支RVO图像和46中央RVO图像])。使用Octa图像提供使用深卷积神经网络(DNN)算法构建DL模型的训练。 SVM使用带有径向基函数内核的Scikit-Searn库。检查曲线(AUC)下的面积,检测NPA的敏感性和特异性。比较DNN,SVM和七位眼科医生之间的诊断能力(敏感性,特异性和平均时间)。产生热图。关于DNN,将RVO Octa图像与来自正常Octa图像中的NPA区分的平均AUC,敏感性,特异性和平均所需时间分别为0.986,93.7%,97.3%和176.9秒。关于SVM,平均AUC,敏感性和特异性分别为0.880,79.3%和81.1%。关于七位眼科医生,平均AUC,敏感性,特异性和平均所需时间分别为0.962,90.8%,89.2%和700.6秒。 DNN聚焦在热图中的温度血管区和NPA。 DNN的性能明显优于所有参数中的SVM(P <0.01,所有)和AUC和特异性的眼科医生(P <0.01,全部)。 D1和Octa图像的组合对于检测NPA具有高精度,并且在临床实践和视网膜筛选中可能有用。

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