Shiraishi Kaori, Nakaura Takeshi, Kobayashi Naoki, Uetani Hiroyuki, Nagayama Yasunori, Kidoh Masafumi, Yatsuda Junji, Kurahashi Ryoma, Kamba Tomomi, Yamahita Yuichi, Hirai Toshinori
Department of Diagnostic Radiology, Graduate School of Medical Sciences, Kumamoto University, Japan.
Department of Diagnostic Radiology, Graduate School of Medical Sciences, Kumamoto University, Japan.
Magn Reson Imaging. 2025 Apr;117:110308. doi: 10.1016/j.mri.2024.110308. Epub 2024 Dec 10.
This study aimed to assess the effectiveness of Super-Resolution Deep Learning Reconstruction (SR-DLR) -a deep learning-based technique that enhances image resolution and quality during MRI reconstruction- in improving the image quality of thin-slice 3D T2-weighted imaging (T2WI) and Prostate Imaging-Reporting and Data System (PI-RADS) assessment in prostate Magnetic Resonance Imaging (MRI).
This retrospective study included 33 patients who underwent prostate MRI with SR-DLR between November 2022 and April 2023. Thin-slice 3D-T2WI of the prostate was obtained and reconstructed with and without SR-DLR (matrix: 720 × 720 and 240 × 240, respectively). We calculated the contrast and contrast-to-noise ratio (CNR) between the internal and external glands of the prostate, as well as the slope of pelvic bone and adipose tissue. Two radiologists evaluated qualitative image quality and assessed PI-RADS scores of each reconstruction.
The final analysis included 28 male patients (age range: 47-88 years; mean age: 70.8 years). The CNR with SR-DLR was significantly higher than without SR-DLR (1.93 [IQR: 0.79, 3.83] vs. 1.88 [IQR: 0.63, 3.82], p = 0.002). No significant difference in contrast was observed between images with and without SR-DLR (p = 0.864). The slope with SR-DLR was significantly higher than without SR-DLR (0.21 [IQR: 0.15, 0.25] vs. 0.15 [IQR: 0.12, 0.19], p < 0.01). Qualitative scores for contrast, sharpness, artifacts, and overall image quality were significantly higher with SR-DLR than without SR-DLR (p < 0.05 for all). The kappa values for 2D-T2WI and 3D-T2WI increased from 0.694 and 0.640 to 0.870 and 0.827 with SR-DLR for both readers.
SR-DLR has the potential to improve image quality and the ability to assess PI-RADS scores in thin-slice 3D-T2WI of the prostate without extending MRI acquisition time.
Super-Resolution Deep Learning Reconstruction (SR-DLR) significantly improved image quality of thin-slice 3D T2-weighted imaging (T2WI) without extending the acquisition time. Additionally, the PI-RADS scores from 3D-T2WI with SR-DLR demonstrated higher agreement with those from 2D-T2WI.
本研究旨在评估超分辨率深度学习重建(SR-DLR)——一种基于深度学习的技术,可在磁共振成像(MRI)重建过程中提高图像分辨率和质量——对改善前列腺磁共振成像(MRI)中薄层三维T2加权成像(T2WI)的图像质量以及前列腺影像报告和数据系统(PI-RADS)评估的效果。
这项回顾性研究纳入了2022年11月至2023年4月期间接受了采用SR-DLR的前列腺MRI检查的33例患者。获取前列腺的薄层三维T2WI图像,并分别在有和没有SR-DLR的情况下进行重建(矩阵分别为720×720和240×240)。我们计算了前列腺内、外腺之间的对比度和对比噪声比(CNR),以及骨盆骨和脂肪组织的斜率。两名放射科医生评估了定性图像质量,并对每次重建的PI-RADS评分进行了评估。
最终分析纳入了28例男性患者(年龄范围:47 - 88岁;平均年龄:70.8岁)。采用SR-DLR时的CNR显著高于未采用SR-DLR时(1.93[四分位数间距:0.79,3.83]对1.88[四分位数间距:0.63,3.82],p = 0.002)。在有和没有SR-DLR的图像之间,未观察到对比度有显著差异(p = )。采用SR-DLR时的斜率显著高于未采用SR-DLR时(0.21[四分位数间距:0.15,0.25]对0.15[四分位数间距:0.12,0.19],p < 0.01)。采用SR-DLR时,对比度、锐度、伪影和整体图像质量的定性评分显著高于未采用SR-DLR时(所有p < 0.05)。对于两位读者,二维T2WI和三维T2WI的kappa值在采用SR-DLR后从0.694和0.640分别提高到了0.870和0.827。
SR-DLR有潜力在不延长MRI采集时间的情况下,改善前列腺薄层三维T2WI的图像质量以及评估PI-RADS评分的能力。
超分辨率深度学习重建(SR-DLR)在不延长采集时间的情况下显著提高了薄层三维T2加权成像(T2WI)的图像质量。此外,采用SR-DLR的三维T2WI得出PI-RADS评分与二维T2WI得出的评分具有更高的一致性。