Medical image segmentation with an emphasis on prior convolution and channel multi-branch attention

IF 3 3区 工程技术 Q2 ENGINEERING, ELECTRICAL & ELECTRONIC Digital Signal Processing Pub Date : 2025-07-01 Epub Date: 2025-03-24 DOI:10.1016/j.dsp.2025.105175
Yuenan Wang , Hua Wang , Fan Zhang
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Abstract

Transformer model has received extensive attention in recent years. Its powerful ability to handle contextual relationships makes it outstanding in the accurate segmentation of medical structures such as organs and lesions. However, as the Transformer model becomes more complex, its computational overhead has also increased significantly, becoming one of the key factors limiting the performance improvement of the model. In addition, some existing methods use channel dimensionality reduction to model cross-channel relationships. Although this strategy effectively reduces the amount of computation, it may lead to information loss or poor performance in segmentation tasks on medical images with rich details. To address the above problems, we propose an innovative medical image segmentation model, PCMA Former. This model combines convolution with focused weight reparameterization and a channel multi-branch attention mechanism, aiming to effectively improve model performance while maintaining low computational overhead. Through experimental verification on multiple medical image datasets (such as Synapse, ISIC2017, and ISIC2018), PCMA Former has achieved better results than traditional convolutional neural networks and existing Transformer models.
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医学图像分割的重点是先验卷积和多分支通道的关注
变压器模型近年来受到了广泛的关注。它处理上下文关系的强大能力使其在器官和病变等医疗结构的准确分割方面表现出色。然而,随着Transformer模型变得越来越复杂,其计算开销也显著增加,成为限制模型性能改进的关键因素之一。此外,现有的一些方法使用通道降维来模拟跨通道关系。虽然该策略有效地减少了计算量,但在对具有丰富细节的医学图像进行分割时,可能会导致信息丢失或性能下降。针对上述问题,我们提出了一种创新的医学图像分割模型PCMA Former。该模型结合了卷积与聚焦权重参数化和通道多分支关注机制,旨在有效提高模型性能的同时保持较低的计算开销。通过在多个医学图像数据集(如Synapse、ISIC2017、ISIC2018)上的实验验证,PCMA Former比传统的卷积神经网络和现有的Transformer模型取得了更好的效果。
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来源期刊
Digital Signal Processing
Digital Signal Processing 工程技术-工程:电子与电气
CiteScore
5.30
自引率
17.20%
发文量
435
审稿时长
66 days
期刊介绍: Digital Signal Processing: A Review Journal is one of the oldest and most established journals in the field of signal processing yet it aims to be the most innovative. The Journal invites top quality research articles at the frontiers of research in all aspects of signal processing. Our objective is to provide a platform for the publication of ground-breaking research in signal processing with both academic and industrial appeal. The journal has a special emphasis on statistical signal processing methodology such as Bayesian signal processing, and encourages articles on emerging applications of signal processing such as: • big data• machine learning• internet of things• information security• systems biology and computational biology,• financial time series analysis,• autonomous vehicles,• quantum computing,• neuromorphic engineering,• human-computer interaction and intelligent user interfaces,• environmental signal processing,• geophysical signal processing including seismic signal processing,• chemioinformatics and bioinformatics,• audio, visual and performance arts,• disaster management and prevention,• renewable energy,
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