自动血管分割算法的比较研究

Owais Ali, Nazeer Muhammad, Zainab Jadoon, Bibi Misbah Kazmi, Nayab Muzamil, Z. Mahmood
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引用次数: 4

摘要

血管的外观及其形态特征对许多疾病的及时治疗起着至关重要的作用,如静脉闭塞和糖尿病视网膜病变。本文详细比较了最近开发的三种血管分割算法在两个公开可用的DRIVE和STARE数据集上的准确性(Acc)、灵敏度(Se)和特异性(Sp)。我们的模拟表明,对于400×500像素或更高的高图像分辨率,在DRIVE数据集上,基于frangi和Otsu阈值的血管分割算法产生最高的精度。而在STARE数据集上,基于Unet的卷积神经网络血管分割算法以更高的计算时间为代价优于对比算法。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
A Comparative Study of Automatic Vessel Segmentation Algorithms
Vessels appearance and their morphological features play a vital part in timely treatment of numerous diseases, such as vein occlusions and diabetic retinopathy. This paper presents a detailed comparison of three recently developed vessel segmentation algorithms in terms of Accuracy (Acc), Sensitivity (Se), and Specificity (Sp) on two publicly available DRIVE and STARE datasets. Our simulations indicate that for high image resolution of 400×500 pixels or above and on DRIVE dataset the frangi and Otsu thresholding based vessel segmentation algorithm yields the highest Accuracy. Whereas on STARE dataset, Unet based convolutional neural network based vessel segmentation algorithm outperforms the compared algorithms at the cost of higher computational time.
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