A single-pixel and non-redundant branching-based algorithm for nailfold capillary skeleton line extraction.

IF 2.9 2区 医学 Q2 RADIOLOGY, NUCLEAR MEDICINE & MEDICAL IMAGING Quantitative Imaging in Medicine and Surgery Pub Date : 2024-10-01 Epub Date: 2024-09-26 DOI:10.21037/qims-24-847
Bin Zhou, Hao Yin, Yanxiong Wu, Qianyao Ye, Jianan Lin, Cong Ye, Mugui Xie, Xiaosong Li, Wei Bin, Zhimin Yang
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Abstract

Background: Static nailfold capillary parameters are important parameters that reflect the health of the human body. Disease onset or progression is often accompanied by changes in the physiological parameters of the nailfold. Hence, the physiological parameters of the nailfold are closely related to the study of disease, with their automated and high-precision measurements playing a crucial role in these studies. Currently, manually measured values of the nailfold's parameters are the gold standard; however, they are time consuming and labor intensive, making the development of automated measurement methods essential. Most automated measurement methods use skeleton lines; however, current skeleton-thinning algorithms have non-single pixels and redundant branches that lead to reduced measurement accuracy. This study proposes a single-pixel and non-redundant branching-based skeleton line extraction algorithm for nailfold capillaries, which is then applied to nailfold static parameter calculations to improve accuracy.

Methods: The algorithm includes deletion and restoration templates combined with the depth-first search method to obtain single-pixel skeleton lines without redundant branches. These lines are applied to the static nailfold capillary parameter measurement method based on digital image processing to calculate the blood vessel diameter.

Results: The results show that the proposed method can obtain the single-pixel skeleton line without the redundant branches that are required for the parameter calculations and improve the accuracy of the nailfold capillary diameter measurement. Experiments showed that the root mean square errors (RMSEs) of the labeled apical diameter, arterial limb diameter, and venous limb diameter were 0.794, 0.756, and 0.830 µm, respectively, when the calculated results were compared with those of the manual calculations. According to the accuracy formula, the accuracy of the method in this study is 90%. We calculated the P values of the algorithmic and manual measurements to P<0.001 and found that the difference in the measurements of the proposed algorithm is statistically significant. Therefore, the method in this study has high sensitivity and specificity for the measurement of normal nailfold capillaries.

Conclusions: The proposed algorithm could obtain single-pixel skeleton lines without redundant branches, thereby improving the nailfold static parameter measurement accuracy.

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基于单像素和非冗余分支的甲襞毛细血管骨架线提取算法。
背景:静态甲襞毛细血管参数是反映人体健康状况的重要参数。疾病的发生或发展往往伴随着甲襞生理参数的变化。因此,甲襞生理参数与疾病研究密切相关,其自动化和高精度测量在这些研究中发挥着至关重要的作用。目前,人工测量甲襞参数值是金标准,但耗时耗力,因此开发自动测量方法至关重要。大多数自动测量方法都使用骨架线,但目前的骨架疏剪算法存在非单像素和冗余分支,导致测量精度降低。本研究提出了一种基于单像素和非冗余分支的甲襞毛细血管骨架线提取算法,然后将其应用于甲襞静态参数计算,以提高准确性:该算法包括删除和恢复模板,并结合深度优先搜索法,以获得无冗余分支的单像素骨架线。这些骨架线被应用于基于数字图像处理的静态甲襞毛细血管参数测量方法,以计算血管直径:结果表明,所提出的方法可以获得没有参数计算所需冗余分支的单像素骨架线,并提高了甲襞毛细血管直径测量的准确性。实验表明,将计算结果与人工计算结果进行比较,标注的顶端直径、动脉肢体直径和静脉肢体直径的均方根误差(RMSE)分别为 0.794、0.756 和 0.830 µm。根据准确度公式,本研究中该方法的准确度为 90%。我们计算了算法和人工测量对 PConclusions 的 P 值:所提出的算法可以得到没有多余分支的单像素骨架线,从而提高了甲襞静态参数测量的准确性。
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来源期刊
Quantitative Imaging in Medicine and Surgery
Quantitative Imaging in Medicine and Surgery Medicine-Radiology, Nuclear Medicine and Imaging
CiteScore
4.20
自引率
17.90%
发文量
252
期刊介绍: Information not localized
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