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首页> 外文期刊>Biomedical Engineering, IEEE Transactions on >Automatic Feature Learning to Grade Nuclear Cataracts Based on Deep Learning
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Automatic Feature Learning to Grade Nuclear Cataracts Based on Deep Learning

机译:基于深度学习的自动特征学习对核白内障进行分级

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摘要

: Cataracts are a clouding of the lens and the leading cause of blindness worldwide. Assessing the presence and severity of cataracts is essential for diagnosis and progression monitoring, as well as to facilitate clinical research and management of the disease. Existing automatic methods for cataract grading utilize a predefined set of image features that may provide an incomplete, redundant, or even noisy representation. In this study, we propose a system to automatically learn features for grading the severity of nuclear cataracts from slit-lamp images. Local filters are first acquired through clustering of image patches from lenses within the same grading class. The learned filters are fed into a convolutional neural network, followed by a set of recursive neural networks, to further extract higher order features. With these features, support vector regression is applied to determine the cataract grade. The proposed system is validated on a large population-based dataset of images, where it outperforms the state of the art by yielding with respect to clinical grading a mean absolute error () of , a exact integral agreement ratio (), an decimal grading error (), and a decimal grading error ().
机译::白内障是晶状体混浊,是世界范围内失明的主要原因。评估白内障的存在和严重性对于诊断和进展监测以及促进该疾病的临床研究和管理至关重要。现有的用于白内障分级的自动方法利用一组预定义的图像特征,这些图像特征可以提供不完整,冗余甚至噪声的表示。在这项研究中,我们提出了一种系统,可以从裂隙灯图像中自动学习用于对核性白内障严重程度进行分级的功能。首先通过对来自相同等级等级的镜片的图像斑块进行聚类来获取局部滤波器。所学习的滤波器被馈送到卷积神经网络,然后是一组递归神经网络,以进一步提取高阶特征。利用这些功能,可以应用支持向量回归来确定白内障等级。拟议的系统在基于人口的大型图像数据集上得到了验证,在此方面,它在临床等级上的平均绝对误差(),精确的整体一致性比率(),十进制等级误差等方面优于临床水平()和十进制分级错误()。

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