Xiao Ruoxiu, Ding Hui, Zhai Fangwen, Zhao Tong, Zhou Wenjing, Wang Guangzhi
Department of Biomedical Engineering, School of Medicine, Tsinghua University, Room C249, Beijing 100084, China.
Tsinghua University Yuquan Hospital, No. 5, Shijingshan Road, Shijingshan District, Beijing, 100049, China.
Comput Methods Programs Biomed. 2017 Apr;142:157-166. doi: 10.1016/j.cmpb.2017.02.008. Epub 2017 Feb 24.
In neurosurgery planning, vascular structures must be predetermined, which can guarantee the security of the operation carried out in the case of avoiding blood vessels. In this paper, an automatic algorithm of vascular segmentation, which combined the grayscale and shape features of the blood vessels, is proposed to extract 3D vascular structures from head phase-contrast magnetic resonance angiography dataset.
First, a cost function of mis-segmentation is introduced on the basis of traditional Bayesian statistical classification, and the blood vessel of weak grayscale that tended to be misclassified into background will be preserved. Second, enhanced vesselness image is obtained according to the shape-based multiscale vascular enhancement filter. Third, a new reconstructed vascular image is established according to the fusion of vascular grayscale and shape features using Dempster-Shafer evidence theory; subsequently, the corresponding segmentation structures are obtained. Finally, according to the noise distribution characteristic of the data, segmentation ratio coefficient, which increased linearly from top to bottom, is proposed to control the segmentation result, thereby preventing over-segmentation.
Experiment results show that, through the proposed method, vascular structures can be detected not only when both grayscale and shape features are strong, but also when either of them is strong. Compared with traditional grayscale feature- and shape feature-based methods, it is better in the evaluation of testing in segmentation accuracy, and over-segmentation and under-segmentation ratios.
The proposed grayscale and shape features combined vascular segmentation is not only effective but also accurate. It may be used for diagnosis of vascular diseases and planning of neurosurgery.
在神经外科手术规划中,必须预先确定血管结构,这能够在避免损伤血管的情况下保证手术的安全性。本文提出一种结合血管灰度和形状特征的血管分割自动算法,用于从头部相位对比磁共振血管造影数据集中提取三维血管结构。
首先,在传统贝叶斯统计分类的基础上引入误分割代价函数,保留那些灰度较弱且容易误分类为背景的血管。其次,根据基于形状的多尺度血管增强滤波器获得增强的血管图像。第三,利用Dempster-Shafer证据理论根据血管灰度和形状特征的融合建立新的重建血管图像,随后获得相应的分割结构。最后,根据数据的噪声分布特征,提出从上到下线性增加的分割比例系数来控制分割结果,从而防止过分割。
实验结果表明,通过所提方法,不仅在灰度和形状特征都很强时能检测到血管结构,而且在其中任一特征较强时也能检测到。与传统的基于灰度特征和形状特征的方法相比,在分割准确性、过分割和欠分割比例的测试评估中表现更好。
所提的结合灰度和形状特征的血管分割方法不仅有效而且准确。它可用于血管疾病的诊断和神经外科手术规划。