Deng Lili, Duan Xingyu, Sun Yongxiang, Wang Yunling, Song Dongmei, Duan Xiaokai
Department of General Medicine, The First People's Hospital of Zhengzhou, Zhengzhou, Henan, China.
First Clinical Medical College, Ningxia Medical University, Yinchuan, Ningxia, China.
Front Physiol. 2025 Jul 15;16:1629637. doi: 10.3389/fphys.2025.1629637. eCollection 2025.
With global aging and lifestyle changes, carotid atherosclerotic plaques are a major cause of cerebrovascular disease and ischemic stroke. However, ultrasound images suffer from high noise, low contrast, and blurred edges, making it difficult for traditional image processing methods to accurately extract plaque information.
To establish a deep learning-based DualPlaqueNet model for semantic segmentation and size prediction of plaques in carotid ultrasound images, thereby providing comprehensive and accurate auxiliary information for clinical risk assessment and personalized diagnosis and treatment.
DualPlaqueNet uses a dual-branch architecture combined with attention mechanisms and joint loss functions to optimize segmentation and regression. Notably, a multi-layer one-dimensional convolutional structure is introduced within the Efficient Channel Attention (ECA) module. The original dataset contained 287 carotid ultrasound images from patients at Zhengzhou First People's Hospital, which were divided into training, validation, and test sets. Model training, validation, and testing were performed after preprocessing and data augmentation of the training set. Its performance was compared with three other models.
In the plaque semantic segmentation task, DualPlaqueNet outperformed the other three models across all metrics, achieving MIoU of 88.91 ± 1.027 (%), IoU (excluding background) of 88.22 ± 1.065 (%), DSC of 89.95 ± 1.102 (%), and Accuracy of 95.98 ± 0.073 (%). For plaque size prediction, this model demonstrated lower MSE and MAE, along with a higher coefficient of determination , proving its ability to accurately extract plaque size information from ultrasound images.
The dual-branch design and attention mechanisms of DualPlaqueNet effectively address the challenges of ultrasound images, achieving precise segmentation and size prediction, demonstrating its potential as an auxiliary tool for future clinical applications.
随着全球老龄化及生活方式的改变,颈动脉粥样硬化斑块是脑血管疾病和缺血性中风的主要原因。然而,超声图像存在高噪声、低对比度和边缘模糊的问题,使得传统图像处理方法难以准确提取斑块信息。
建立基于深度学习的DualPlaqueNet模型,用于颈动脉超声图像中斑块的语义分割和大小预测,从而为临床风险评估及个性化诊断和治疗提供全面准确的辅助信息。
DualPlaqueNet采用双分支架构,结合注意力机制和联合损失函数来优化分割和回归。值得注意的是,在高效通道注意力(ECA)模块中引入了多层一维卷积结构。原始数据集包含来自郑州市第一人民医院患者的287幅颈动脉超声图像,被分为训练集、验证集和测试集。对训练集进行预处理和数据增强后进行模型训练、验证和测试。将其性能与其他三个模型进行比较。
在斑块语义分割任务中,DualPlaqueNet在所有指标上均优于其他三个模型,平均交并比(MIoU)达到88.91±1.027(%),交并比(不包括背景)为88.22±1.065(%),Dice相似系数(DSC)为89.95±1.102(%),准确率为95.98±0.073(%)。对于斑块大小预测,该模型表现出更低的均方误差(MSE)和平均绝对误差(MAE),以及更高的决定系数,证明其能够从超声图像中准确提取斑块大小信息。
DualPlaqueNet的双分支设计和注意力机制有效应对了超声图像的挑战,实现了精确分割和大小预测,展现出其作为未来临床应用辅助工具的潜力。