Accurate coronary artery segmentation from coronary computed tomography angiography is essential for quantitative coronary analysis and clinical decision support. Nevertheless, reliable segmentation remains challenging because of small vessel calibers, complex branching, blurred boundaries, and myocardial interference. We propose a coronary artery segmentation framework that integrates myocardial anatomical priors, structure aware feature encoding, and three dimensional wavelet inverse wavelet transformations. Myocardial priors and residual attention based feature enhancement are incorporated during encoding to strengthen coronary structure representation. Wavelet inverse wavelet based downsampling and upsampling enable joint spatial frequency modeling and preserve multi scale structural consistency, while a multi scale feature fusion module integrates semantic and geometric information in the decoding stage. The model is trained and evaluated on the public ImageCAS dataset using a 3D overlapping patch based strategy with a 7:1:2 split for training, validation, and testing. Experimental results demonstrate that the proposed method achieves a Dice coefficient of 0.8082, Sensitivity of 0.7946, Precision of 0.8471, and an HD95 of 9.77 mm, outperforming several mainstream segmentation models. Ablation studies further confirm the complementary contributions of individual components. The proposed method enables more stable and consistent coronary artery segmentation under complex geometric conditions, providing reliable segmentation results for subsequent coronary structure analysis tasks.
翻译:从冠状动脉计算机断层扫描血管成像中准确分割冠状动脉对于定量冠状动脉分析和临床决策支持至关重要。然而,由于血管管径细小、分支结构复杂、边界模糊以及心肌干扰,可靠的分割仍具挑战性。本文提出一种冠状动脉分割框架,该框架整合了心肌解剖先验、结构感知特征编码以及三维小波-逆小波变换。在编码阶段引入心肌先验与基于残差注意力的特征增强,以强化冠状动脉结构表征。基于小波-逆小波的下采样与上采样实现了空间-频率联合建模,并保持了多尺度结构一致性;同时,解码阶段的多尺度特征融合模块整合了语义与几何信息。模型在公开ImageCAS数据集上采用基于三维重叠切片的策略进行训练与评估,训练集、验证集与测试集按7:1:2划分。实验结果表明,所提方法取得了0.8082的Dice系数、0.7946的灵敏度、0.8471的精确度以及9.77 mm的HD95值,性能优于多种主流分割模型。消融实验进一步验证了各模块的互补贡献。该方法能够在复杂几何条件下实现更稳定、一致的冠状动脉分割,为后续冠状动脉结构分析任务提供可靠的分割结果。