Murray Victor, Wu Can, Otazo Ricardo
Department of Medical Physics, Memorial Sloan Kettering Cancer Center, New York, NY, United States of America.
Department of Radiology, Memorial Sloan Kettering Cancer Center, New York, NY, United States of America.
Phys Med Biol. 2025 Jun 17;70(12). doi: 10.1088/1361-6560/ade195.
To develop motion-resolved volumetric MRI with 1.1 mm isotropic resolution and scan times <5 min using a combination of 3D radial kooshball acquisition and spatial-temporal deep learning 4D reconstruction for free-breathing high-definition (HD) lung MRI.Free-breathing lung MRI was conducted on eight healthy volunteers and ten patients with lung tumors on a 3 T MRI scanner using a 3D radial kooshball sequence with half-spoke (ultrashort echo time, UTE, TE = 0.12 ms) and full-spoke (T1-weighted, TE = 1.55 ms) acquisitions. Data were motion-sorted using amplitude-binning on a respiratory motion signal. Two high-definition Movienet (HD-Movienet) deep learning models were proposed to reconstruct 3D radial kooshball data: slice-by-slice reconstruction in the coronal orientation using 2D convolutional kernels (2D-based HD-Movienet) and reconstruction on blocks of eight coronal slices using 3D convolutional kernels (3D-based HD-Movienet). Two applications were considered: (a) anatomical imaging at expiration and inspiration with four motion states and a scan time of 2 min, and (b) dynamic motion imaging with 10 motion states and a scan time of 4 min. The training was performed using XD-GRASP 4D images reconstructed from 4.5 min and 6.5 min acquisitions as references.2D-based HD-Movienet achieved a reconstruction time of <6 s, significantly faster than the iterative XD-GRASP reconstruction (>10 min with GPU optimization) while maintaining comparable image quality to XD-GRASP with two extra minutes of scan time. The 3D-based HD-Movienet improved reconstruction quality at the expense of longer reconstruction times (<11 s).HD-Movienet demonstrates the feasibility of motion-resolved 4D MRI with isotropic 1.1 mm resolution and scan times of only 2 min for four motion states and 4 min for 10 motion states, marking a significant advancement in clinical free-breathing lung MRI.
通过结合三维径向球型采集和时空深度学习四维重建技术,实现自由呼吸高清(HD)肺部MRI的运动分辨容积MRI,其各向同性分辨率为1.1毫米,扫描时间小于5分钟。在3T MRI扫描仪上,对8名健康志愿者和10名肺部肿瘤患者进行自由呼吸肺部MRI检查,使用具有半辐条(超短回波时间,UTE,TE = 0.12毫秒)和全辐条(T1加权,TE = 1.55毫秒)采集的三维径向球型序列。利用呼吸运动信号上的幅度分箱对数据进行运动排序。提出了两种高清电影网络(HD-Movienet)深度学习模型来重建三维径向球型数据:使用二维卷积核在冠状方向逐片重建(基于二维的HD-Movienet),以及使用三维卷积核对八个冠状切片块进行重建(基于三维的HD-Movienet)。考虑了两种应用:(a)在呼气和吸气时进行解剖成像,有四种运动状态,扫描时间为两分钟;(b)进行动态运动成像,有十种运动状态,扫描时间为四分钟。使用从4.5分钟和6.5分钟采集重建的XD-GRASP 4D图像作为参考进行训练。基于二维的HD-Movienet实现了小于6秒的重建时间,比迭代XD-GRASP重建(GPU优化后大于10分钟)显著更快,同时在多两分钟扫描时间的情况下保持与XD-GRASP相当的图像质量。基于三维的HD-Movienet以更长重建时间(小于11秒)为代价提高了重建质量。HD-Movienet证明了运动分辨四维MRI的可行性,其各向同性分辨率为1.1毫米,四种运动状态的扫描时间仅为2分钟,十种运动状态的扫描时间为4分钟,标志着临床自由呼吸肺部MRI取得了重大进展。