Li Mengxin, Lv Fan, Chen Jiaming, Zheng Kunyan, Zhao Jingwen
School of Electrical & Control Engineering, Shenyang Jianzhu University, Shenyang, China.
Med Biol Eng Comput. 2025 Mar;63(3):661-672. doi: 10.1007/s11517-024-03219-4. Epub 2024 Oct 25.
Cerebrovascular image segmentation is one of the crucial tasks in the field of biomedical image processing. Due to the variable morphology of cerebral blood vessels, the traditional convolutional kernel is weak in perceiving the structure of elongated blood vessels in the brain, and it is easy to lose the feature information of the elongated blood vessels during the network training process. In this paper, a vascular convolutional U-network (VCU-Net) is proposed to address these problems. This network utilizes a new convolution (vascular convolution) instead of the traditional convolution kernel, to extract features of elongated blood vessels in the brain with different morphologies and orientations by adaptive convolution. In the network encoding stage, a new feature splicing method is used to combine the feature tensor obtained through vascular convolution with the original tensor to provide richer feature information. Experiments show that the DSC and IOU of the proposed method are 53.57% and 69.74%, which are improved by 2.11% and 2.01% over the best performance of the GVC-Net among several typical models. In image visualization, the proposed network has better segmentation performance for complex cerebrovascular structures, especially in dealing with elongated blood vessels in the brain, which shows better integrity and continuity.
脑血管图像分割是生物医学图像处理领域的关键任务之一。由于脑血管形态多变,传统卷积核在感知大脑中细长血管结构方面能力较弱,并且在网络训练过程中容易丢失细长血管的特征信息。本文提出了一种血管卷积U型网络(VCU-Net)来解决这些问题。该网络采用一种新的卷积(血管卷积)代替传统卷积核,通过自适应卷积提取大脑中不同形态和方向的细长血管特征。在网络编码阶段,使用一种新的特征拼接方法将通过血管卷积获得的特征张量与原始张量相结合,以提供更丰富的特征信息。实验表明,该方法的DSC和IOU分别为53.57%和69.74%,在几种典型模型中比GVC-Net的最佳性能提高了2.11%和2.01%。在图像可视化方面,所提出的网络对复杂脑血管结构具有更好的分割性能,特别是在处理大脑中的细长血管时,表现出更好的完整性和连续性。