Xue Zhaofeng, Sun Ying, Tong Guiyuan, Wang Zhaojie, Zhao Xinzhuo
Department of Electrical Engineering, Shenyang University of Technology, Shenyang, China.
Department of Radiation Medicine, General Hospital of Northern Theater Command, Shenyang, China.
Quant Imaging Med Surg. 2025 Jun 6;15(6):4896-4909. doi: 10.21037/qims-24-2008. Epub 2025 Jun 3.
A precise pulmonary vessel segmentation algorithm serves as a powerful auxiliary tool for physicians, enabling them to diagnose various pulmonary diseases with greater accuracy and efficiency. This technology also customizes rational treatment plans tailored to individual patients, alleviating their burden and effectively reducing unnecessary medical resource waste. This study proposes a cascaded algorithm to improve the accuracy of pulmonary vessel segmentation in computed tomography (CT) images.
This study presents a cascaded model integrating convolutional networks for biomedical image segmentation (U-Net) and parameter-adaptive fully connected conditional random fields (PA-FCCRFs) to efficiently extract pulmonary vessels in CT images. In the initial phase, U-Net is employed to preliminarily segment pulmonary vessels in the lung region. However, convolutional neural network (CNN) with local receptive fields struggles to effectively model long-distance pixel dependencies, often leading to mis-segmentation of lung tissues. To address this issue, we incorporate fully connected conditional random fields (FCCRFs) into the framework for refined segmentation. With fully connected structure, FCCRFs can model dependencies between each pixel and all the other pixels. Moreover, Bayesian optimization is employed to automatically tune internal parameters for optimal performance.
Our method demonstrates significant improvements in pulmonary vessel segmentation outcomes, with the Precision increasing from 73.14±10.67 to 90.24±4.63, F1 improving from 82.67±6.86 to 91.85±3.41, and Hausdorff distance decreasing from 35.12±6.04 to 30.86±2.71. To validate the cascaded PA-FCCRFs strategy, we preliminarily segment pulmonary vessels using AH-Net and V-Net, followed by optimization using PA-FCCRFs. Experimental results showcase substantial enhancements in the accuracy of CNN-based vascular segmentation after PA-FCCRFs optimization.
These findings validate that the cascaded PA-FCCRFs approach effectively segments pulmonary vessels, supporting the diagnosis of pulmonary diseases and promising applications in clinical settings.
精确的肺血管分割算法是医生的有力辅助工具,能使他们更准确、高效地诊断各种肺部疾病。该技术还能为个体患者定制合理的治疗方案,减轻其负担并有效减少不必要的医疗资源浪费。本研究提出一种级联算法,以提高计算机断层扫描(CT)图像中肺血管分割的准确性。
本研究提出一种级联模型,该模型整合了用于生物医学图像分割的卷积网络(U-Net)和参数自适应全连接条件随机场(PA-FCCRFs),以有效提取CT图像中的肺血管。在初始阶段,使用U-Net对肺区域的肺血管进行初步分割。然而,具有局部感受野的卷积神经网络(CNN)难以有效建模远距离像素依赖关系,常导致肺组织分割错误。为解决此问题,我们将全连接条件随机场(FCCRFs)纳入框架进行精细分割。FCCRFs具有全连接结构,可对每个像素与所有其他像素之间的依赖关系进行建模。此外,采用贝叶斯优化自动调整内部参数以实现最佳性能。
我们的方法在肺血管分割结果上有显著改善,精确率从73.14±10.67提高到90.24±4.63,F1从82.67±6.86提高到91.85±3.41,豪斯多夫距离从35.12±6.04减小到30.86±2.71。为验证级联PA-FCCRFs策略,我们先用AH-Net和V-Net对肺血管进行初步分割,然后用PA-FCCRFs进行优化。实验结果表明,PA-FCCRFs优化后基于CNN的血管分割准确性有显著提高。
这些发现证实级联PA-FCCRFs方法能有效分割肺血管,支持肺部疾病诊断,并在临床环境中有广阔应用前景。