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Deep Neural Network-Based Method for Detecting Central Retinal Vein Occlusion Using Ultrawide-Field Fundus Ophthalmoscopy

机译:基于深度神经网络的眼底镜检出视网膜中央静脉阻塞的方法

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摘要

The aim of this study is to assess the performance of two machine-learning technologies, namely, deep learning (DL) and support vector machine (SVM) algorithms, for detecting central retinal vein occlusion (CRVO) in ultrawide-field fundus images. Images from 125 CRVO patients (n=125 images) and 202 non-CRVO normal subjects (n=238 images) were included in this study. Training to construct the DL model using deep convolutional neural network algorithms was provided using ultrawide-field fundus images. The SVM uses scikit-learn library with a radial basis function kernel. The diagnostic abilities of DL and the SVM were compared by assessing their sensitivity, specificity, and area under the curve (AUC) of the receiver operating characteristic curve for CRVO. For diagnosing CRVO, the DL model had a sensitivity of 98.4% (95% confidence interval (CI), 94.3–99.8%) and a specificity of 97.9% (95% CI, 94.6–99.1%) with an AUC of 0.989 (95% CI, 0.980–0.999). In contrast, the SVM model had a sensitivity of 84.0% (95% CI, 76.3–89.3%) and a specificity of 87.5% (95% CI, 82.7–91.1%) with an AUC of 0.895 (95% CI, 0.859–0.931). Thus, the DL model outperformed the SVM model in all indices assessed (P < 0.001 for all). Our data suggest that a DL model derived using ultrawide-field fundus images could distinguish between normal and CRVO images with a high level of accuracy and that automatic CRVO detection in ultrawide-field fundus ophthalmoscopy is possible. This proposed DL-based model can also be used in ultrawide-field fundus ophthalmoscopy to accurately diagnose CRVO and improve medical care in remote locations where it is difficult for patients to attend an ophthalmic medical center.
机译:这项研究的目的是评估两种机器学习技术的性能,即深度学习(DL)和支持向量机(SVM)算法,用于检测超广域眼底图像中的中央视网膜静脉阻塞(CRVO)。这项研究包括来自125位CRVO患者的图像(n = 125张图像)和202位非CRVO正常受试者的图像(n = 238张图像)。使用超广角眼底图像提供了使用深度卷积神经网络算法构建DL模型的培训。 SVM使用带有径向基函数内核的scikit-learn库。通过评估DL和SVM的敏感性,特异性和CRVO接收器工作特征曲线的曲线下面积(AUC),比较了DL和SVM的诊断能力。对于CRVO的诊断,DL模型的灵敏度为98.4%(95%置信区间(CI),94.3–99.8%),特异性为97.9%(95%CI,94.6–99.1%),AUC为0.989(95 %CI,0.980-0.999)。相比之下,SVM模型的灵敏度为84.0%(95%CI,76.3–89.3%),特异性为87.5%(95%CI,82.7–91.1%),AUC为0.895(95%CI,0.859–98)。 0.931)。因此,在所有评估指标中,DL模型均优于SVM模型(所有P均<0.001)。我们的数据表明,使用超广角眼底图像导出的DL模型可以以较高的准确度区分正常图像和CRVO图像,并且可以在超广角眼底检眼镜中进行自动CRVO检测。该提议的基于DL的模型还可以用于超广角眼底检眼镜检查,以准确诊断CRVO并改善偏远地区的医疗服务,因为偏远地区患者很难去眼科医疗中心。

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