Fujima Noriyuki, Nakagawa Junichi, Ikebe Yohei, Kameda Hiroyuki, Harada Taisuke, Shimizu Yukie, Tsushima Nayuta, Kano Satoshi, Homma Akihiro, Kwon Jihun, Yoneyama Masami, Kudo Kohsuke
Department of Diagnostic and Interventional Radiology, Hokkaido University Hospital, N14 W5, Kita-Ku, Sapporo 0608638, Japan.
Department of Diagnostic and Interventional Radiology, Hokkaido University Hospital, N14 W5, Kita-Ku, Sapporo 0608638, Japan.
Magn Reson Imaging. 2024 May;108:111-115. doi: 10.1016/j.mri.2024.02.006. Epub 2024 Feb 9.
To assess the utility of deep learning (DL)-based image reconstruction with the combination of compressed sensing (CS) denoising cycle by comparing images reconstructed by conventional CS-based method without DL in fat-suppressed (Fs)-contrast enhanced (CE) three-dimensional (3D) T1-weighted images (T1WIs) of the head and neck.
We retrospectively analyzed the cases of 39 patients who had undergone head and neck Fs-CE 3D T1WI applying reconstructions based on conventional CS and CS augmented by DL, respectively. In the qualitative assessment, we evaluated overall image quality, visualization of anatomical structures, degree of artifacts, lesion conspicuity, and lesion edge sharpness based on a five-point system. In the quantitative assessment, we calculated the signal-to-noise ratios (SNRs) of the lesion and the posterior neck muscle and the contrast-to-noise ratio (CNR) between the lesion and the adjacent muscle.
For all items of the qualitative analysis, significantly higher scores were awarded to images with DL-based reconstruction (p < 0.001). In the quantitative analysis, DL-based reconstruction resulted in significantly higher values for both the SNR of lesions (p < 0.001) and posterior neck muscles (p < 0.001). Significantly higher CNRs were also observed in images with DL-based reconstruction (p < 0.001).
DL-based image reconstruction integrating into the CS-based denoising cycle offered superior image quality compared to the conventional CS method. This technique will be useful for the assessment of patients with head and neck disease.
通过比较基于传统压缩感知(CS)方法(无深度学习)重建的图像与基于深度学习(DL)结合CS去噪循环重建的图像,评估在头颈部脂肪抑制(Fs)对比增强(CE)三维(3D)T1加权图像(T1WI)中基于深度学习的图像重建的效用。
我们回顾性分析了39例接受头颈部Fs-CE 3D T1WI检查的患者病例,分别应用基于传统CS和深度学习增强的CS重建方法。在定性评估中,我们基于五分制评估整体图像质量、解剖结构可视化、伪影程度、病变清晰度和病变边缘锐度。在定量评估中,我们计算病变和后颈部肌肉的信噪比(SNR)以及病变与相邻肌肉之间的对比噪声比(CNR)。
对于定性分析的所有项目,基于深度学习重建的图像得分显著更高(p < 0.001)。在定量分析中,基于深度学习的重建在病变信噪比(p < 0.001)和后颈部肌肉信噪比(p < 0.001)方面均产生显著更高的值。在基于深度学习重建的图像中也观察到显著更高的CNR(p < 0.001)。
与传统CS方法相比,将基于深度学习的图像重建集成到基于CS的去噪循环中可提供更高的图像质量。该技术对头颈部疾病患者的评估将是有用的。