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A computer-aided healthcare system for cataract classification and grading based on fundus image analysis

机译:基于眼底图像分析的白内障分级计算机辅助医疗系统

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This paper presents a fundus image analysis based computer aided system for automatic classification and grading of cataract, which provides great potentials to reduce the burden of well-experienced ophthalmologists (the scarce resources) and help cataract patients in under-developed areas to know timely their cataract conditions and obtain treatment suggestions from doctors. The system is composed of fundus image pre-processing, image feature extraction, and automatic cataract classification and grading. The wavelet transform and the sketch based methods are investigated to extract from fundus image the features suitable for cataract classification and grading. After feature extraction, a multiclass discriminant analysis algorithm is used for cataract classification, including two-class (cataract or non-cataract) classification and cataract grading in mild, moderate, and severe. A real-world dataset, including fundus image samples with mild, moderate, and severe cataract, is used for training and testing. The preliminary results show that, for the wavelet transform based method, the correct classification rates of two-class classification and cataract grading are 90.9% and 77.1%, respectively. The correct classification rates of two-class classification and cataract grading are 86.1% and 74.0% for the sketch based method, which is comparable to the wavelet transform based method. The pilot study demonstrates that our research on fundus image analysis for cataract classification and grading is very helpful for improving the efficiency of fundus image review and ophthalmic healthcare quality. We believe that this work can serve as an important reference for the development of similar health information system to solve other medical diagnosis problems. (C) 2014 Elsevier B.V. All rights reserved.
机译:本文介绍了一种基于眼底图像分析的计算机辅助系统,用于白内障的自动分类和分级,它具有巨大的潜力,可以减轻经验丰富的眼科医生的负担(资源稀缺),并帮助欠发达地区的白内障患者及时了解他们的病情。白内障情况并向医生寻求治疗建议。该系统由眼底图像预处理,图像特征提取以及白内障自动分类和分级组成。研究了小波变换和基于草图的方法,从眼底图像中提取了适合白内障分类和分级的特征。特征提取后,将多类判别分析算法用于白内障分类,包括轻度,中度和重度的两类(白内障或非白内障)分类和白内障分级。真实世界的数据集,包括具有轻度,中度和严重白内障的眼底图像样本,被用于训练和测试。初步结果表明,对于基于小波变换的方法,两类分类和白内障分级的正确分类率分别为90.9%和77.1%。基于草图的方法的两类分类和白内障分级的正确分类率分别为86.1%和74.0%,与基于小波变换的方法相当。初步研究表明,我们对用于白内障分类和分级的眼底图像分析的研究对于提高眼底图像检查的效率和眼科医疗质量非常有帮助。我们相信这项工作可以为开发类似的健康信息系统以解决其他医学诊断问题提供重要参考。 (C)2014 Elsevier B.V.保留所有权利。

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