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ACCV: automatic classification algorithm of cataract video based on deep learning

机译:ACCV:基于深度学习的白内障视频自动分类算法

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A real-time automatic cataract-grading algorithm based on cataract video is proposed. In this retrospective study, we set the video of the eye lens section as the research target. A method is proposed to use YOLOv3 to assist in positioning, to automatically identify the position of the lens and classify the cataract after color space conversion. The data set is a cataract video file of 38 people's 76 eyes collected by a slit lamp. Data were collected using five random manner, the method aims to reduce the influence on the collection algorithm accuracy. The video length is within 10?s, and the classified picture data are extracted from the video file. A total of 1520 images are extracted from the image data set, and the data set is divided into training set, validation set and test set according to the ratio of 7:2:1. We verified it on the 76-segment clinical data test set and achieved the accuracy of 0.9400, with the AUC of 0.9880, and the F1 of 0.9388. In addition, because of the color space recognition method, the detection per frame can be completed within 29 microseconds and thus the detection efficiency has been improved significantly. With the efficiency and effectiveness of this algorithm, the lens scan video is used as the research object, which improves the accuracy of the screening. It is closer to the actual cataract diagnosis and treatment process, and can effectively improve the cataract inspection ability of non-ophthalmologists. For cataract screening in poor areas, the accessibility of ophthalmology medical care is also increased.
机译:提出了一种基于白变型视频的实时自动白内障分级算法。在此回顾性研究中,我们将眼镜部分的视频设置为研究目标。提出了一种方法来使用YOLOV3来帮助定位,自动识别镜片的位置并在彩色空间转换后对白内障进行分类。数据集是一个由狭缝灯收集的38个人的76只眼睛的白内障视频文件。使用五种随机方式收集数据,该方法旨在减少对收集算法精度的影响。视频长度在10?s之内,并且从视频文件中提取分类图像数据。从图像数据集中提取了总共1520个图像,并且数据集被分为训练集,验证集和测试集,根据7:2:1的比率。我们在76段临床数据测试组上验证了它,并达到了0.9400的精度,AUC为0.9880,F1为0.9388。另外,由于颜色空间识别方法,每帧的检测可以在29微秒内完成,因此检测效率显着提高。随着该算法的效率和有效性,镜头扫描视频用作研究对象,从而提高了筛选的准确性。它更接近实际的白内障诊断和治疗过程,可以有效地改善非眼科医生的白内障检查能力。对于贫困地区的白内障筛查,眼科医疗的可及性也增加。

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