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Human Visual System-Based Fundus Image Quality Assessment of Portable Fundus Camera Photographs

机译:基于人类视觉系统的便携式眼底照相机照片的眼底图像质量评估

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Telemedicine and the medical “big data” era in ophthalmology highlight the use of non-mydriatic ocular fundus photography, which has given rise to indispensable applications of portable fundus cameras. However, in the case of portable fundus photography, non-mydriatic image quality is more vulnerable to distortions, such as uneven illumination, color distortion, blur, and low contrast. Such distortions are called generic quality distortions. This paper proposes an algorithm capable of selecting images of fair generic quality that would be especially useful to assist inexperienced individuals in collecting meaningful and interpretable data with consistency. The algorithm is based on three characteristics of the human visual system—multi-channel sensation, just noticeable blur, and the contrast sensitivity function to detect illumination and color distortion, blur, and low contrast distortion, respectively. A total of 536 retinal images, 280 from proprietary databases and 256 from public databases, were graded independently by one senior and two junior ophthalmologists, such that three partial measures of quality and generic overall quality were classified into two categories. Binary classification was implemented by the support vector machine and the decision tree, and receiver operating characteristic (ROC) curves were obtained and plotted to analyze the performance of the proposed algorithm. The experimental results revealed that the generic overall quality classification achieved a sensitivity of 87.45% at a specificity of 91.66%, with an area under the ROC curve of 0.9452, indicating the value of applying the algorithm, which is based on the human vision system, to assess the image quality of non-mydriatic photography, especially for low-cost ophthalmological telemedicine applications.
机译:远程医疗和眼科医学的“大数据”时代凸显了非散瞳眼底照相技术的使用,这已经引起了便携式眼底照相机的必不可少的应用。但是,在便携式眼底摄影的情况下,非散瞳图像质量更容易受到失真的影响,例如照明不均匀,颜色失真,模糊和对比度低。这种失真称为通用质量失真。本文提出了一种能够选择具有一般通用质量的图像的算法,该算法对于协助缺乏经验的个人一致地收集有意义且可解释的数据特别有用。该算法基于人类视觉系统的三个特征-多通道感觉,仅明显的模糊以及对比度灵敏度功能,分别检测照明和颜色失真,模糊和低对比度失真。一名高级和两名初级眼科医生对536张视网膜图像,来自专有数据库的280张图像和来自公共数据库的256张图像进行了独立分级,因此将三个部分质量测量值和通用总体质量分为两类。通过支持向量机和决策树进行二进制分类,获得并绘制了接收机工作特性曲线,以分析该算法的性能。实验结果表明,通用总体质量分类在91.66%的特异性下实现了87.45%的灵敏度,ROC曲线下的面积为0.9452,表明应用该算法的价值是基于人类视觉系统,评估非散瞳摄影的图像质量,尤其是对于低成本眼科远程医疗应用。

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