Automated retinal boundary segmentation of optical coherence tomography images using an improved Canny operator

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作者
Jian Liu
Shixin Yan
Nan Lu
Dongni Yang
Hongyu Lv
Shuanglian Wang
Xin Zhu
Yuqian Zhao
Yi Wang
Zhenhe Ma
Yao Yu
机构
[1] Northeastern University at Qinhuangdao,School of Control Engineering
[2] Hebei Key Laboratory of Micro-Nano Precision Optical Sensing and Measurement Technology,Department of Ophthalmology
[3] The First Hospital of Qinhuangdao,Department of Ophthalmology
[4] Qinhuangdao Maternal and Child Health Hospital,Biomedical Information Engineering Lab
[5] Tangshan Maternal and Children Hospital,undefined
[6] The University of Aizu,undefined
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摘要
Retinal segmentation is a prerequisite for quantifying retinal structural features and diagnosing related ophthalmic diseases. Canny operator is recognized as the best boundary detection operator so far, and is often used to obtain the initial boundary of the retina in retinal segmentation. However, the traditional Canny operator is susceptible to vascular shadows, vitreous artifacts, or noise interference in retinal segmentation, causing serious misdetection or missed detection. This paper proposed an improved Canny operator for automatic segmentation of retinal boundaries. The improved algorithm solves the problems of the traditional Canny operator by adding a multi-point boundary search step on the basis of the original method, and adjusts the convolution kernel. The algorithm was used to segment the retinal images of healthy subjects and age-related macular degeneration (AMD) patients; eleven retinal boundaries were identified and compared with the results of manual segmentation by the ophthalmologists. The average difference between the automatic and manual methods is: 2–6 microns (1–2 pixels) for healthy subjects and 3–10 microns (1–3 pixels) for AMD patients. Qualitative method is also used to verify the accuracy and stability of the algorithm. The percentage of “perfect segmentation” and “good segmentation” is 98% in healthy subjects and 94% in AMD patients. This algorithm can be used alone or in combination with other methods as an initial boundary detection algorithm. It is easy to understand and improve, and may become a useful tool for analyzing and diagnosing eye diseases.
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