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Localization and diagnosis framework for pediatric cataracts based on slit-lamp images using deep features of a convolutional neural network

机译:基于卷积神经网络深度特征的裂隙灯图像的小儿白内障定位和诊断框架

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摘要

Slit-lamp images play an essential role for diagnosis of pediatric cataracts. We present a computer vision-based framework for the automatic localization and diagnosis of slit-lamp images by identifying the lens region of interest (ROI) and employing a deep learning convolutional neural network (CNN). First, three grading degrees for slit-lamp images are proposed in conjunction with three leading ophthalmologists. The lens ROI is located in an automated manner in the original image using two successive applications of Candy detection and the Hough transform, which are cropped, resized to a fixed size and used to form pediatric cataract datasets. These datasets are fed into the CNN to extract high-level features and implement automatic classification and grading. To demonstrate the performance and effectiveness of the deep features extracted in the CNN, we investigate the features combined with support vector machine (SVM) and softmax classifier and compare these with the traditional representative methods. The qualitative and quantitative experimental results demonstrate that our proposed method offers exceptional mean accuracy, sensitivity and specificity: classification (97.07%, 97.28%, and 96.83%) and a three-degree grading area (89.02%, 86.63%, and 90.75%), density (92.68%, 91.05%, and 93.94%) and location (89.28%, 82.70%, and 93.08%). Finally, we developed and deployed a potential automatic diagnostic software for ophthalmologists and patients in clinical applications to implement the validated model.
机译:裂隙灯图像对小儿白内障的诊断起着至关重要的作用。我们提出了一种基于计算机视觉的框架,用于通过识别感兴趣的晶状体区域(ROI)并采用深度学习卷积神经网络(CNN)来自动定位和诊断裂隙灯图像。首先,与三位主要的眼科医生一起提出了裂隙灯图像的三个等级。使用Candy检测和Hough变换的两个连续应用将镜头的ROI自动定位在原始图像中,将其裁剪,调整为固定大小并用于形成小儿白内障数据集。这些数据集被送入CNN,以提取高级特征并实现自动分类和分级。为了证明CNN中提取的深层特征的性能和有效性,我们研究了结合支持向量机(SVM)和softmax分类器的特征,并将其与传统的代表性方法进行了比较。定性和定量实验结果表明,我们提出的方法具有出色的平均准确度,灵敏度和特异性:分类(97.07%,97.28%和96.83%)和三度分级区域(89.02%,86.63%和90.75%) ,密度(92.68%,91.05%和93.94%)和位置(8​​9.28%,82.70%和93.08%)。最后,我们为临床应用中的眼科医生和患者开发并部署了潜在的自动诊断软件,以实施经过验证的模型。

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