融合注意模块和综合损失函数的ResNet低剂量CT去噪

IF 1.3 Q3 ENGINEERING, ELECTRICAL & ELECTRONIC
Luella Marcos, J. Alirezaie, P. Babyn
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引用次数: 0

摘要

x射线计算机断层扫描(CT)是一种非侵入性医疗诊断工具,由于辐射剂量对患者的相关健康风险,引起了公众的关注。降低辐射剂量会导致噪声伪影,使低剂量CT图像对诊断不可靠。因此,低剂量CT (LDCT)图像重建技术提供了一个新的研究领域。在本研究中,提出了一种深度神经网络,特别是残差网络(ResNet),该网络使用扩展卷积、批归一化和校正线性单元(ReLU)层,融合了空间和通道关注模块,以提高LDCT图像的质量。该网络使用逐像素损失、通过VGG16-net的感知损失和不相似指数损失的集成进行优化。通过烧蚀实验表明,这些功能可以有效地防止边缘过平滑,改善图像纹理,并保留结构细节。最后,对比实验表明,该网络的定性和定量结果优于最先进的去噪模型,如块匹配3D滤波(BM3D)、基于马尔可夫的补丁生成对抗网络(patch- gan)和带边缘检测的扩展残差网络(DRL-E-MP)。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Low Dose CT Denoising by ResNet With Fused Attention Modules and Integrated Loss Functions
X-ray computed tomography (CT) is a non-invasive medical diagnostic tool that has raised public concerns due to the associated health risks of radiation dose to patients. Reducing the radiation dose leads to noise artifacts, making the low-dose CT images unreliable for diagnosis. Hence, low-dose CT (LDCT) image reconstruction techniques have offered a new research area. In this study, a deep neural network is proposed, specifically a residual network (ResNet) using dilated convolution, batch normalization, and rectified linear unit (ReLU) layers with fused spatial- and channel-attention modules to enhance the quality of LDCT images. The network is optimized using the integration of per-pixel loss, perceptual loss via VGG16-net, and dissimilarity index loss. Through an ablation experiment, these functions show that they could effectively prevent edge oversmoothing, improve image texture, and preserve the structural details. Finally, comparative experiments showed that the qualitative and quantitative results of the proposed network outperform state-of-the-art denoising models such as block-matching 3D filtering (BM3D), Markovian-based patch generative adversarial network (patch-GAN), and dilated residual network with edge detection (DRL-E-MP).
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