Choi Jae Won, Cho Yeon Jin, Lee Seul Bi, Lee Seunghyun, Hwang Jae-Yeon, Choi Young Hun, Cheon Jung-Eun, Lee Joonsung
Seoul National University Hospital, Seoul, Republic of Korea.
GE Healthcare (Korea), Seoul, Republic of Korea.
Pediatr Radiol. 2025 Jul 12. doi: 10.1007/s00247-025-06314-2.
Magnetic resonance imaging (MRI) is crucial in pediatric radiology; however, the prolonged scan time is a major drawback that often requires sedation. Deep learning reconstruction (DLR) is a promising method for accelerating MRI acquisition.
To evaluate the clinical feasibility of accelerated brain MRI with DLR in pediatric neuroimaging, focusing on image quality compared to conventional MRI.
In this retrospective study, 116 pediatric participants (mean age 7.9 ± 5.4 years) underwent routine brain MRI with three reconstruction methods: conventional MRI without DLR (C-MRI), conventional MRI with DLR (DLC-MRI), and accelerated MRI with DLR (DLA-MRI). Two pediatric radiologists independently assessed the overall image quality, sharpness, artifacts, noise, and lesion conspicuity. Quantitative image analysis included the measurement of image noise and coefficient of variation (CoV).
DLA-MRI reduced the scan time by 43% compared with C-MRI. Compared with C-MRI, DLA-MRI demonstrated higher scores for overall image quality, noise, and artifacts, as well as similar or higher scores for lesion conspicuity, but similar or lower scores for sharpness. DLC-MRI demonstrated the highest scores for all the parameters. Despite variations in image quality and lesion conspicuity, the lesion detection rates were 100% across all three reconstructions. Quantitative analysis revealed lower noise and CoV for DLA-MRI than those for C-MRI. Interobserver agreement was substantial to almost perfect (weighted Cohen's kappa = 0.72-0.97).
DLR enabled faster MRI with improved image quality compared with conventional MRI, highlighting its potential to address prolonged MRI scan times in pediatric neuroimaging and optimize clinical workflows.
磁共振成像(MRI)在儿科放射学中至关重要;然而,扫描时间过长是一个主要缺点,常常需要镇静。深度学习重建(DLR)是一种很有前景的加速MRI采集的方法。
评估在儿科神经成像中使用DLR加速脑部MRI的临床可行性,重点是与传统MRI相比的图像质量。
在这项回顾性研究中,116名儿科参与者(平均年龄7.9±5.4岁)采用三种重建方法进行了常规脑部MRI检查:无DLR的传统MRI(C-MRI)、有DLR的传统MRI(DLC-MRI)和有DLR的加速MRI(DLA-MRI)。两名儿科放射科医生独立评估了整体图像质量、清晰度、伪影、噪声和病变清晰度。定量图像分析包括图像噪声和变异系数(CoV)的测量。
与C-MRI相比,DLA-MRI将扫描时间缩短了43%。与C-MRI相比,DLA-MRI在整体图像质量、噪声和伪影方面得分更高,在病变清晰度方面得分相似或更高,但在清晰度方面得分相似或更低。DLC-MRI在所有参数上得分最高。尽管图像质量和病变清晰度存在差异,但在所有三种重建方法中病变检出率均为100%。定量分析显示,DLA-MRI的噪声和CoV低于C-MRI。观察者间的一致性为实质性到几乎完美(加权Cohen's kappa=0.72-0.97)。
与传统MRI相比,DLR能够实现更快的MRI检查,且图像质量有所提高,凸显了其在解决儿科神经成像中MRI扫描时间过长问题及优化临床工作流程方面的潜力。