首页> 外文会议>Conference on Medical Imaging 2008: Computer-Aided Diagnosis; 20080219-21; San Diego,CA(US) >Comparison of two algorithms in the automatic segmentation of blood vessels in fundus images
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Comparison of two algorithms in the automatic segmentation of blood vessels in fundus images

机译:眼底图像血管自动分割中两种算法的比较

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Effective timing and treatment are critical to saving the sight of patients with diabetes. Lack of screening, as well as a shortage of ophthalmologists, help contribute to approximately 8,000 cases per year of people who lose their sight to diabetic retinopathy, the leading cause of new cases of blindness [1] [2]. Timely treatment for diabetic retinopathy prevents severe vision loss in over 50% of eyes tested [1]. Fundus images can provide information for detecting and monitoring eye-related diseases, like diabetic retinopathy, which if detected early, may help prevent vision loss. Damaged blood vessels can indicate the presence of diabetic retinopathy [9]. So, early detection of damaged vessels in retinal images can provide valuable information about the presence of disease, thereby helping to prevent vision loss. Purpose: The purpose of this study was to compare the effectiveness of two blood vessel segmentation algorithms. Methods: Fifteen fundus images from the STARE database were used to develop two algorithms using the CVIPtools software environment. Another set of fifteen images were derived from the first fifteen and contained ophthalmologists' hand-drawn tracings over the retinal vessels. The ophthalmologists' tracings were used as the "gold standard" for perfect segmentation and compared with the segmented images that were output by the two algorithms. Comparisons between the segmented and the hand-drawn images were made using Pratt's Figure of Merit (FOM), Signal-to-Noise Ratio (SNR) and Root Mean Square (RMS) Error. Results: Algorithm 2 has an FOM that is 10% higher than Algorithm 1. Algorithm 2 has a 6%-higher SNR than Algorithm 1. Algorithm 2 has only 1.3% more RMS error than Algorithm 1. Conclusions: Algorithm 1 extracted most of the blood vessels with some missing intersections and bifurcations. Algorithm 2 extracted all the major blood vessels, but eradicated some vessels as well. Algorithm 2 outperformed Algorithm 1 in terms of visual clarity, FOM and SNR. The performances of these algorithms show that they have an appreciable amount of potential in helping ophthalmologists detect the severity of eye-related diseases and prevent vision loss.
机译:有效的时间安排和治疗对挽救糖尿病患者的视力至关重要。筛查的缺乏以及眼科医生的短缺,每年导致大约8,000例因糖尿病性视网膜病失明的人,这是导致新的失明病例的主要原因[1] [2]。及时治疗糖尿病性视网膜病可防止超过50%的被测眼严重视力丧失[1]。眼底图像可以为检测和监测与眼睛有关的疾病(例如糖尿病性视网膜病)提供信息,如果及早发现,可以帮助预防视力丧失。血管受损可表明存在糖尿病性视网膜病[9]。因此,视网膜图像中受损血管的早期检测可以提供有关疾病存在的有价值的信息,从而有助于防止视力丧失。目的:本研究的目的是比较两种血管分割算法的有效性。方法:使用CVIPtools软件环境,使用来自STARE数据库的15张眼底图像来开发两种算法。另一组十五张图像来自前十五张,其中包含眼科医生在视网膜血管上绘制的手绘描迹。眼科医生的描迹被用作完美分割的“黄金标准”,并与两种算法输出的分割图像进行了比较。使用Pratt的品质因数(FOM),信噪比(SNR)和均方根(RMS)误差对分段图像和手绘图像进行了比较。结果:算法2的FOM比算法1高10%。算法2的SNR比算法1高6%。算法2的RMS误差仅比算法1高1.3%。结论:算法1提取了大部分缺少一些交叉口和分叉的血管。算法2提取了所有主要血管,但也根除了一些血管。在视觉清晰度,FOM和SNR方面,算法2优于算法1。这些算法的性能表明,它们在帮助眼科医生检测与眼睛有关的疾病的严重程度并防止视力丧失方面具有相当大的潜力。

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