用于低剂量肺部 CT 去噪的双域信号还原和多深度特征强化混合框架

Jianning Chi, Zhiyi Sun, Shuyu Tian, Huan Wang, Siqi Wang
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引用次数: 0

摘要

低剂量计算机断层扫描(LDCT)已广泛应用于医疗诊断。已有多种去噪方法用于去除 LDCT 扫描中的噪声。然而,由于难以(1)区分图像域中结构、纹理和噪声混淆的特征,以及(2)在层次特征中表现局部细节和全局语义,现有方法无法达到令人满意的效果。本文提出了一种新型去噪方法,包括:(1)二维双域还原框架,分别重建无噪声的结构和纹理信号;(2)三维多深度强化 U-Net 模型,利用增强的层次特征进一步恢复图像细节。在二维双域修复框架中,卷积神经网络同时应用于图像域和正弦图域,前者通过空间连续性很好地保留了图像结构,后者则通过不同的小波系数分别表示纹理和噪声,并进行自适应处理。在三维多深度增强 U-Net 模型中,来自三维 U-Net 的分层特征通过交叉分辨率注意模块(CRAM)和双分支图卷积模块(DBGCM)得到增强。CRAM 通过整合不同分辨率的相邻低层次特征来保留局部细节,而 DBGCM 则通过在特征内和特征间维度为高层次特征构建图来增强全局语义。在 LUNA16 数据集和 2016 NIH-AAPM-Mayo Clinic LDCT 大挑战数据集上的实验结果表明,所提出的方法在去除结构和纹理清晰的 LDCT 图像中的噪声方面优于最先进的方法,证明了其在临床实践中的潜力。
本文章由计算机程序翻译,如有差异,请以英文原文为准。

A Hybrid Framework of Dual-Domain Signal Restoration and Multi-depth Feature Reinforcement for Low-Dose Lung CT Denoising.

A Hybrid Framework of Dual-Domain Signal Restoration and Multi-depth Feature Reinforcement for Low-Dose Lung CT Denoising.

Low-dose computer tomography (LDCT) has been widely used in medical diagnosis. Various denoising methods have been presented to remove noise in LDCT scans. However, existing methods cannot achieve satisfactory results due to the difficulties in (1) distinguishing the characteristics of structures, textures, and noise confused in the image domain, and (2) representing local details and global semantics in the hierarchical features. In this paper, we propose a novel denoising method consisting of (1) a 2D dual-domain restoration framework to reconstruct noise-free structure and texture signals separately, and (2) a 3D multi-depth reinforcement U-Net model to further recover image details with enhanced hierarchical features. In the 2D dual-domain restoration framework, the convolutional neural networks are adopted in both the image domain where the image structures are well preserved through the spatial continuity, and the sinogram domain where the textures and noise are separately represented by different wavelet coefficients and processed adaptively. In the 3D multi-depth reinforcement U-Net model, the hierarchical features from the 3D U-Net are enhanced by the cross-resolution attention module (CRAM) and dual-branch graph convolution module (DBGCM). The CRAM preserves local details by integrating adjacent low-level features with different resolutions, while the DBGCM enhances global semantics by building graphs for high-level features in intra-feature and inter-feature dimensions. Experimental results on the LUNA16 dataset and 2016 NIH-AAPM-Mayo Clinic LDCT Grand Challenge dataset illustrate the proposed method outperforms the state-of-the-art methods on removing noise from LDCT images with clear structures and textures, proving its potential in clinical practice.

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