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首页> 外文期刊>Medical Physics >A dual‐supervised deformation estimation model (DDEM) for constructing ultra‐quality 4D‐MRI based on a commercial low‐quality 4D‐MRI for liver cancer radiation therapy
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A dual‐supervised deformation estimation model (DDEM) for constructing ultra‐quality 4D‐MRI based on a commercial low‐quality 4D‐MRI for liver cancer radiation therapy

机译:基于商业化低质量4D-MRI构建超高质量肝癌放疗超高质量4D-MRI的双监督变形估计模型(DDEM)

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Abstract Background Most available four‐dimensional (4D)‐magnetic resonance imaging (MRI) techniques are limited by insufficient image quality and long acquisition times or require specially designed sequences or hardware that are not available in the clinic. These limitations have greatly hindered the clinical implementation of 4D‐MRI. Purpose This study aims to develop a fast ultra‐quality (UQ) 4D‐MRI reconstruction method using a commercially available 4D‐MRI sequence and dual‐supervised deformation estimation model (DDEM). Methods Thirty‐nine patients receiving radiotherapy for liver tumors were included. Each patient was scanned using a time‐resolved imaging with interleaved stochastic trajectories (TWIST)–lumetric interpolated breath‐hold examination (VIBE) MRI sequence to acquire 4D‐magnetic resonance (MR) images. They also received 3D T1‐/T2‐weighted MRI scans as prior images, and UQ 4D‐MRI at any instant was considered a deformation of them. A DDEM was developed to obtain a 4D deformable vector field (DVF) from 4D‐MRI data, and the prior images were deformed using this 4D‐DVF to generate UQ 4D‐MR images. The registration accuracies of the DDEM, VoxelMorph (normalized cross‐correlation NCC supervised), VoxelMorph (end‐to‐end point error EPE supervised), and the parametric total variation (pTV) algorithm were compared. Tumor motion on UQ 4D‐MRI was evaluated quantitatively using region of interest (ROI) tracking errors, while image quality was evaluated using the contrast‐to‐noise ratio (CNR), lung–liver edge sharpness, and perceptual blur metric (PBM). Results The registration accuracy of the DDEM was significantly better than those of VoxelMorph (NCC supervised), VoxelMorph (EPE supervised), and the pTV algorithm (all, p?
机译:摘要 背景 大多数可用的四维 (4D) 磁共振成像 (MRI) 技术受到图像质量不足和采集时间长的限制,或者需要专门设计的序列或硬件,而这些序列或硬件在临床上是没有的。这些局限性极大地阻碍了 4D-MRI 的临床应用。目的 本研究旨在开发一种使用市售的 4D-MRI 序列和双监督变形估计模型 (DDEM) 的快速超高质量 (UQ) 4D-MRI 重建方法。方法 选取39例接受肝肿瘤放疗的患者。使用具有交错随机轨迹 (TWIST) 的时间分辨成像进行扫描 - 明示插值屏气检查 (VIBE) MRI 序列以获取 4D 磁共振 (MR) 图像。他们还接受了 3D T1/T2 加权 MRI 扫描作为先前的图像,并且任何时刻的 UQ 4D-MRI 都被认为是他们的变形。开发DDEM从4D-MRI数据中获得4D可变形矢量场(DVF),并使用该4D-DVF对先前的图像进行变形,以生成UQ 4D-MR图像。比较了DDEM、VoxelMorph(归一化互相关[NCC]监督)、VoxelMorph(端到端点误差[EPE]监督)和参数总变异(pTV)算法的配准精度。使用感兴趣区域 (ROI) 跟踪误差定量评估 UQ 4D-MRI 上的肿瘤运动,同时使用对比噪声比 (CNR)、肺-肝边缘清晰度和感知模糊度量 (PBM) 评估图像质量。结果 DDEM的配准准确率显著优于VoxelMorph(NCC监督)、VoxelMorph(EPE监督)和pTV算法(均为0.001),推理时间为69.3 ± 5.9?ms。 UQ 4D‐±±±MRI在上-下、前-后、 和中侧方向。从原来的4D-MRI到UQ 4D-MRI,CNR从7.25±4.89增加到18.86±15.81;肺肝边缘半极全宽从8.22 ± 3.17 ± 1.66?mm降低到3.65 1.66?mm,横向从8.79 ± 2.78 ± 5.04 1.67?mm,PBM从0.68 ± 0.07降低到0.38 ± 0.01。结论 该DDEM方法基于商业化4D-MRI序列成功生成UQ 4D-MR图像。它在改善放射治疗期间的肝肿瘤运动管理方面显示出巨大的前景。

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