Cui Xueying, Guo Yingting, Zhang Xiong, Shangguan Hong, Liu Bin, Wang Anhong
School of Applied Science, Taiyuan University of Science and Technology, Taiyuan, China.
School of Electronic Information Engineering, Taiyuan University of Science and Technology, Taiyuan, China.
J Xray Sci Technol. 2022;30(5):875-889. doi: 10.3233/XST-221149.
Since low-dose computed tomography (LDCT) images typically have higher noise that may affect accuracy of disease diagnosis, the objective of this study is to develop and evaluate a new artifact-assisted feature fusion attention (AAFFA) network to extract and reduce image artifact and noise in LDCT images.
In AAFFA network, a feature fusion attention block is constructed for local multi-scale artifact feature extraction and progressive fusion from coarse to fine. A multi-level fusion architecture based on skip connection and attention modules is also introduced for artifact feature extraction. Specifically, long-range skip connections are used to enhance and fuse artifact features with different depth levels. Then, the fused shallower features enter channel attention for better extraction of artifact features, and the fused deeper features are sent into pixel attention for focusing on the artifact pixel information. Besides, an artifact channel is designed to provide rich artifact features and guide the extraction of noise and artifact features. The AAPM LDCT Challenge dataset is used to train and test the network. The performance is evaluated by using both visual observation and quantitative metrics including peak signal-noise-ratio (PSNR), structural similarity index (SSIM) and visual information fidelity (VIF).
Using AAFFA network improves the averaged PSNR/SSIM/VIF values of AAPM LDCT images from 43.4961, 0.9595, 0.3926 to 48.2513, 0.9859, 0.4589, respectively.
The proposed AAFFA network is able to effectively reduce noise and artifacts while preserving object edges. Assessment of visual quality and quantitative index demonstrates the significant improvement compared with other image denoising methods.
由于低剂量计算机断层扫描(LDCT)图像通常具有较高噪声,可能影响疾病诊断的准确性,本研究旨在开发并评估一种新的伪影辅助特征融合注意力(AAFFA)网络,以提取并减少LDCT图像中的图像伪影和噪声。
在AAFFA网络中,构建了一个特征融合注意力模块,用于局部多尺度伪影特征提取以及从粗到细的渐进融合。还引入了基于跳跃连接和注意力模块的多级融合架构来进行伪影特征提取。具体而言,使用长距离跳跃连接来增强和融合不同深度级别的伪影特征。然后,融合后的较浅特征进入通道注意力以更好地提取伪影特征,而融合后的较深特征则送入像素注意力以聚焦于伪影像素信息。此外,设计了一个伪影通道以提供丰富的伪影特征,并指导噪声和伪影特征的提取。使用AAPM LDCT挑战数据集对网络进行训练和测试。通过视觉观察以及包括峰值信噪比(PSNR)、结构相似性指数(SSIM)和视觉信息保真度(VIF)在内的定量指标来评估性能。
使用AAFFA网络将AAPM LDCT图像的平均PSNR/SSIM/VIF值分别从43.4961、0.9595、0.3926提高到48.2513、0.9859、0.4589。
所提出的AAFFA网络能够在保留物体边缘的同时有效降低噪声和伪影。视觉质量评估和定量指标表明,与其他图像去噪方法相比有显著改进。