Department of Diagnostic Radiology, Graduate School of Medical Sciences, Kumamoto University, Honjo 1-1-1, Kumamoto 860-8556, Japan.
Department of Central Radiology, Kumamoto University Hospital, Honjo 1-1-1, Kumamoto 860-8556, Japan.
Eur J Radiol. 2024 Sep;178:111587. doi: 10.1016/j.ejrad.2024.111587. Epub 2024 Jul 3.
This study aims to assess the effectiveness of super-resolution deep-learning-based reconstruction (SR-DLR), which leverages k-space data, on the image quality of lumbar spine magnetic resonance (MR) bone imaging using a 3D multi-echo in-phase sequence.
In this retrospective study, 29 patients who underwent lumbar spine MRI, including an MR bone imaging sequence between January and April 2023, were analyzed. Images were reconstructed with and without SR-DLR (Matrix sizes: 960 × 960 and 320 × 320, respectively). The signal-to-noise ratio (SNR) of the vertebral body and spinal canal and the contrast and contrast-to-noise ratio (CNR) between the vertebral body and spinal canal were quantitatively evaluated. Furthermore, the slope at half-peak points of the profile curve drawn across the posterior border of the vertebral body was calculated. Two radiologists independently assessed image noise, contrast, artifacts, sharpness, and overall image quality of both image types using a 4-point scale. Interobserver agreement was evaluated using weighted kappa coefficients, and quantitative and qualitative scores were compared via the Wilcoxon signed-rank test.
SNRs of the vertebral body and spinal canal were notably improved in images with SR-DLR (p < 0.001). Contrast and CNR were significantly enhanced with SR-DLR compared to those without SR-DLR (p = 0.023 and p = 0.022, respectively). The slope of the profile curve at half-peak points across the posterior border of the vertebral body and spinal canal was markedly higher with SR-DLR (p < 0.001). Qualitative scores (noise: p < 0.001, contrast: p < 0.001, artifact p = 0.042, sharpness: p < 0.001, overall image quality: p < 0.001) were superior in images with SR-DLR compared to those without. Kappa analysis indicated moderate to good agreement (noise: κ = 0.56, contrast: κ = 0.51, artifact: κ = 0.46, sharpness: κ = 0.76, overall image quality: κ = 0.44).
SR-DLR, which is based on k-space data, has the potential to enhance the image quality of lumbar spine MR bone imaging utilizing a 3D gradient echo in-phase sequence.
The application of SR-DLR can lead to improvements in lumbar spine MR bone imaging quality.
本研究旨在评估基于超分辨率深度学习重建(SR-DLR)的磁共振(MR)骨成像质量的有效性,该方法利用了 k 空间数据,使用三维多回波同相位序列进行腰椎成像。
本回顾性研究分析了 29 例 2023 年 1 月至 4 月间接受腰椎 MRI 检查的患者,包括 MR 骨成像序列。图像分别采用 SR-DLR(矩阵大小分别为 960×960 和 320×320)和非 SR-DLR 重建。定量评估椎体和椎管的信噪比(SNR)、椎体和椎管的对比和对比噪声比(CNR)。此外,还计算了绘制在椎体后缘的轮廓曲线半峰点处的斜率。两位放射科医生使用 4 分制独立评估两种图像类型的图像噪声、对比度、伪影、锐利度和整体图像质量。使用加权 kappa 系数评估观察者间的一致性,并通过 Wilcoxon 符号秩检验比较定量和定性评分。
SR-DLR 显著提高了图像的椎体和椎管 SNR(p<0.001)。与无 SR-DLR 相比,SR-DLR 显著增强了对比度和 CNR(p=0.023 和 p=0.022)。绘制在椎体后缘和椎管的轮廓曲线半峰点处的斜率明显更高(p<0.001)。有 SR-DLR 的图像的定性评分(噪声:p<0.001,对比度:p<0.001,伪影:p=0.042,锐利度:p<0.001,整体图像质量:p<0.001)明显优于无 SR-DLR 的图像。kappa 分析表明,观察者间的一致性为中度到高度(噪声:κ=0.56,对比度:κ=0.51,伪影:κ=0.46,锐利度:κ=0.76,整体图像质量:κ=0.44)。
基于 k 空间数据的 SR-DLR 有望提高利用三维梯度回波同相位序列进行的腰椎 MR 骨成像的图像质量。
SR-DLR 的应用可以改善腰椎 MR 骨成像的质量。