Faculty of Robot Science and Engineering, Northeastern University, Zhihui Street, Shenyang, 110169, Liaoning, China.
Key Laboratory of Intelligent Computing in Medical Image of Ministry of Education, Northeastern University, Zhihui Street, Shenyang, 110169, Liaoning, China.
J Imaging Inform Med. 2024 Aug;37(4):1902-1921. doi: 10.1007/s10278-024-00979-1. Epub 2024 Feb 20.
Low-dose computed tomography (LDCT) has been widely used in medical diagnosis. In practice, doctors often zoom in on LDCT slices for clearer lesions and issues, while, a simple zooming operation fails to suppress low-dose artifacts, leading to distorted details. Therefore, numerous LDCT super-resolution (SR) methods have been proposed to promote the quality of zooming without the increase of the dose in CT scanning. However, there are still some drawbacks that need to be addressed in existing methods. First, the region of interest (ROI) is not emphasized due to the lack of guidance in the reconstruction process. Second, the convolutional blocks extracting fix-resolution features fail to concentrate on the essential multi-scale features. Third, a single SR head cannot suppress the residual artifacts. To address these issues, we propose an LDCT CT joint SR and denoising reconstruction network. Our proposed network consists of global dual-guidance attention fusion modules (GDAFMs) and multi-scale anastomosis blocks (MABs). The GDAFM directs the network to focus on ROI by fusing the extra mask guidance and average CT image guidance, while the MAB introduces hierarchical features through anastomosis connections to leverage multi-scale features and promote the feature representation ability. To suppress radial residual artifacts, we optimize our network using the feedback feature distillation mechanism (FFDM) which shares the backbone to learn features corresponding to the denoising task. We apply the proposed method to the 3D-IRCADB and PANCREAS datasets to evaluate its ability on LDCT image SR reconstruction. The experimental results compared with state-of-the-art methods illustrate the superiority of our approach with respect to peak signal-to-noise (PSNR), structural similarity (SSIM), and qualitative observations. Our proposed LDCT joint SR and denoising reconstruction network has been extensively evaluated through ablation, quantitative, and qualitative experiments. The results demonstrate that our method can recover noise-free and detail-sharp images, resulting in better reconstruction results. Code is available at https://github.com/neu-szy/ldct_sr_dn_w_ffdm .
低剂量计算机断层扫描(LDCT)已广泛应用于医学诊断。在实践中,医生通常会放大 LDCT 切片以更清晰地显示病变和问题,而简单的放大操作无法抑制低剂量伪影,导致细节变形。因此,已经提出了许多 LDCT 超分辨率(SR)方法来提高放大质量,而不会增加 CT 扫描的剂量。然而,现有方法仍然存在一些需要解决的缺点。首先,由于重建过程中缺乏指导,感兴趣区域(ROI)没有得到强调。其次,提取固定分辨率特征的卷积块无法集中注意力于基本的多尺度特征。第三,单个 SR 头无法抑制残留伪影。为了解决这些问题,我们提出了一种 LDCT CT 联合 SR 和去噪重建网络。我们的网络由全局双引导注意力融合模块(GDAFM)和多尺度吻合块(MAB)组成。GDAFM 通过融合额外的掩模指导和平均 CT 图像指导,引导网络专注于 ROI,而 MAB 通过吻合连接引入分层特征,利用多尺度特征,提高特征表示能力。为了抑制径向残留伪影,我们使用反馈特征蒸馏机制(FFDM)优化网络,该机制共享骨干网络,学习与去噪任务对应的特征。我们将提出的方法应用于 3D-IRCADB 和 PANCREAS 数据集,以评估其在 LDCT 图像 SR 重建中的能力。与最先进的方法相比,实验结果表明了我们的方法在峰值信噪比(PSNR)、结构相似性(SSIM)和定性观察方面的优越性。我们的 LDCT 联合 SR 和去噪重建网络已经通过消融实验、定量实验和定性实验进行了广泛的评估。结果表明,我们的方法可以恢复无噪声和细节清晰的图像,从而获得更好的重建结果。代码可在 https://github.com/neu-szy/ldct_sr_dn_w_ffdm 获得。