CH-Net:用于医学图像分割的交叉混合网络

Jiale Li;Aiping Liu;Wei Wei;Ruobing Qian;Xun Chen
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引用次数: 0

摘要

医学图像的准确、自动分割在诊断评估和治疗计划中起着至关重要的作用。近年来,混合模型在各种医学图像分割任务中获得了相当大的普及,因为它们利用卷积和自关注的优点同时捕获局部和全局依赖关系。然而,现有的混合模型大多将卷积和自关注作为独立的组成部分,使用简单的融合方法进行融合,忽略了两者权重分配机制之间潜在的互补信息。为了解决这一问题,我们提出了一种用于医学图像分割的交叉混合网络(CH-Net),其中卷积和自关注以交叉协作的方式混合在一起。具体来说,我们在CH-Net的每个构建块中引入了并行卷积层和自关注层之间的交叉混合模块(CHM)。该模块分别从卷积和自注意中提取具有不同维度信息的注意,并利用这些互补信息增强两个分量的特征表示。与传统的每个模块独立学习的方法不同,CHM促进了卷积层和自注意层之间互补信息的交互学习,显著增强了模型的分割能力。我们的方法优于各种混合模型,通过在三个公开可用的基准上进行的实验评估来证明:ACDC,突触和EM。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
CH-Net: A Cross Hybrid Network for Medical Image Segmentation
Accurate and automated segmentation of medical images plays a crucial role in diagnostic evaluation and treatment planning. In recent years, hybrid models have gained considerable popularity in diverse medical image segmentation tasks, as they leverage the benefits of both convolution and self-attention to capture local and global dependencies simultaneously. However, most existing hybrid models treat convolution and self-attention as independent components and integrate them using simple fusion methods, neglecting the potential complementary information between their weight allocation mechanisms. To address this issue, we propose a cross hybrid network (CH-Net) for medical image segmentation, in which convolution and self-attention are hybridized in a cross-collaborative manner. Specifically, we introduce a cross hybrid module (CHM) between the parallel convolution layer and self-attention layer in each building block of CH-Net. This module extracts attention with distinct dimensional information from convolution and self-attention, respectively, and uses this complementary information to enhance the feature representation of both components. In contrast to the traditional approach where each module learned independently, the CHM facilitates the interactive learning of complementary information between convolutional layer and self-attention layer, which significantly enhances the segmentation capabilities of the model. The superiority of our approach over various hybrid models is demonstrated through experimental evaluations conducted on three publicly available benchmarks: ACDC, synapse, and EM.
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CiteScore
7.70
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