Shi Fengxin, Zhu Dongming, Zhi Jia, Hou Guocun, Cui Yaoyao, Wang Xiaocong
Academy for Engineering & Technology, Fudan University, Shanghai, China.
Department of Rehabilitation and Therapy, Suzhou Institute of Biomedical Engineering and Technology, Chinese Academy of Sciences, Suzhou, China.
Med Phys. 2025 Mar;52(3):1661-1678. doi: 10.1002/mp.17579. Epub 2024 Dec 27.
Dialysis Access (DA) stenosis impacts hemodialysis efficiency and patient health, necessitating exams for early lesion detection. Ultrasound is widely used due to its non-invasive, cost-effective nature. Assessing all patients in large hemodialysis facilities strains resources and relies on operator expertise. Furthermore, it heavily relies on the experience and expertise of the operator. Therefore, it is essential to explore methods for the automatic analysis of DA ultrasound images to accurately calculate the stenosis ratios, thereby enhancing both diagnostic accuracy and treatment efficiency.
This study is aimed at employing image segmentation networks to conduct precise segmentation of the ultrasound images of DA lumens and automatically classify the types of stenosis. The segmentation outcomes are processed by means of morphological processing techniques for the automatic calculation of the DA stenosis ratio, thus enhancing the daily diagnostic efficiency of physicians and providing a substantial quantitative foundation for clinical decision-making.
Firstly, our study introduces a deep neural network-based approach for vascular lumen segmentation and classification, termed Vessel Lumen Segmentation and Classification-Net (VLSC-Net), aimed at the precise segmentation of the DA lumen in ultrasound images. We conducted comparative analyses of our network against U-Net, TransUNet, MultiResUnet, and ResUNet using metrics such as mean Intersection over Union (mIoU), Dice score, Accuracy, Hausdorff Distance (HD), and Average Symmetric Surface Distance (ASSD). A five-fold cross-validation was performed on a dataset comprising 1710 images for both comparison experiments and ablation studies; specifically, the training set included 1368 images while the test set contained 342 images. The significance of observed differences was assessed using the Mann-Whitney U-test. To prevent the increase in the chance of making a Type I error (false positive) that occurs when many simultaneous tests are being conducted, we used the Bonferroni correction to address the problem of multiple comparisons. Since we did four groups of comparisons, the significance level ( ) is adjusted by dividing it by 4. Secondly, we utilized morphological processing alongside feature extraction techniques to accurately delineate the edges of the lumen. This facilitated precise measurements of critical stenosis segment parameters. Finally, we automatically calculated the Long-axis Diameter Stenosis Ratio (LDSR) and Short-axis Area Stenosis Ratio (SASR) utilizing methods from the European Carotid Surgery Trial based on parameters derived from these calculations.
VLSC-Net demonstrated superior performance compared with traditional segmentation methods, effectively handling image artifacts while maintaining a compact structure. The mIoU, Dice score, Accuracy, HD, and ASSD were 0.9563, 0.9777, 0.9976, 4.542, and 0.460, respectively, and showed significant differences from the results of U-Net (p 0.0125). An evaluation involving 1710 images from 62 patients indicated that our method delivers high-precision and reliable stenosis ratio and classification outcomes within an average processing time of 164 ms. Furthermore, the average errors for LDSR and SASR were found to be 1.4% and 7.8%, respectively.
Our approach greatly enhances diagnostic efficiency for medical personnel, offering reliable and objective evidence for clinical assessment and decision-making in DA stenosis treatment, thereby reducing the risk of complications associated with DA stenosis.
透析通路(DA)狭窄会影响血液透析效率和患者健康,因此需要进行检查以早期发现病变。超声因其无创、成本效益高的特点而被广泛使用。在大型血液透析设施中对所有患者进行评估会耗费资源,且依赖操作人员的专业知识。此外,它严重依赖操作人员的经验和专业技能。因此,探索DA超声图像自动分析方法以准确计算狭窄率,从而提高诊断准确性和治疗效率至关重要。
本研究旨在采用图像分割网络对DA管腔的超声图像进行精确分割,并自动对狭窄类型进行分类。通过形态学处理技术对分割结果进行处理,以自动计算DA狭窄率,从而提高医生的日常诊断效率,并为临床决策提供坚实的定量基础。
首先,我们的研究引入了一种基于深度神经网络的血管管腔分割与分类方法,称为血管管腔分割与分类网络(VLSC-Net),旨在精确分割超声图像中的DA管腔。我们使用平均交并比(mIoU)、Dice系数、准确率、豪斯多夫距离(HD)和平均对称表面距离(ASSD)等指标,将我们的网络与U-Net、TransUNet、MultiResUnet和ResUNet进行了比较分析。在一个包含1710张图像的数据集上进行了五折交叉验证,用于比较实验和消融研究;具体而言,训练集包括1368张图像,测试集包含342张图像。使用曼-惠特尼U检验评估观察到的差异的显著性。为防止在进行多次同时测试时出现I型错误(假阳性)的概率增加,我们使用邦费罗尼校正来解决多重比较问题。由于我们进行了四组比较,显著性水平( )通过除以4进行调整。其次,我们利用形态学处理和特征提取技术准确描绘管腔边缘。这有助于精确测量关键狭窄段参数。最后,我们根据这些计算得出的参数,采用欧洲颈动脉外科试验的方法自动计算长轴直径狭窄率(LDSR)和短轴面积狭窄率(SASR)。
与传统分割方法相比,VLSC-Net表现出卓越的性能,能够有效处理图像伪影,同时保持紧凑的结构。mIoU、Dice系数、准确率、HD和ASSD分别为0.9563、0.9777、0.9976、4.542和0.460,与U-Net的结果存在显著差异(p 0.0125)。对62例患者的1710张图像进行的评估表明,我们的方法在平均处理时间为164毫秒的情况下,能够提供高精度和可靠的狭窄率及分类结果。此外,LDSR和SASR的平均误差分别为1.4%和7.8%。
我们的方法极大地提高了医务人员的诊断效率,为DA狭窄治疗的临床评估和决策提供了可靠、客观的证据,从而降低了与DA狭窄相关的并发症风险。