论文标题
高度加速3D MRI的深度学习重建
Deep learning-based reconstruction of highly accelerated 3D MRI
论文作者
论文摘要
目的:通过使用深度学习方法来加速大脑3D MRI扫描 方法:DL-speed是一种具有密度跳过连接的展开的优化体系结构,对3D T1加权脑扫描数据进行了训练,以从高度存储的K-Space数据中重建复杂值的图像。与具有2倍加速度的常规平行成像方法相比,对3D Mprage脑扫描数据回顾性地采样,以10倍加速度进行了回顾性地采样,评估了训练有素的模型。经验丰富的放射科医生评估了数十位SNR,人工制品,灰色/白色物质对比度,分辨率/清晰度,深灰色,小脑vermis,前佣金和整体质量,并以5点李克特量表进行了评估。此外,对经过训练的模型进行了回顾性采样的3D T1加权熔岩(具有体积加速度的肝获取)腹部扫描数据,并分别在三个健康志愿者和1个。 结果:具有10倍加速度的DL速度的定性得分高于或等于平行成像的定性得分,其加速度为2倍。在回顾性地采样的熔岩数据上,DL速度在定量指标中的压缩传感方法优于一种压缩传感方法。证明DL速度可以在前瞻性采样数据上表现出色,从而意识到扫描时间减少了2-5倍。 结论:DL速度被证明可以加速3D mprage和Lava,净加速度高达10倍,与常规并行成像和加速度相比,扫描速度快2-5倍,同时保持诊断图像质量和实时重建。重建腹部熔岩扫描数据时,大脑扫描训练的DL速度也表现出色,证明了网络的多功能性。
Purpose: To accelerate brain 3D MRI scans by using a deep learning method for reconstructing images from highly-undersampled multi-coil k-space data Methods: DL-Speed, an unrolled optimization architecture with dense skip-layer connections, was trained on 3D T1-weighted brain scan data to reconstruct complex-valued images from highly-undersampled k-space data. The trained model was evaluated on 3D MPRAGE brain scan data retrospectively-undersampled with a 10-fold acceleration, compared to a conventional parallel imaging method with a 2-fold acceleration. Scores of SNR, artifacts, gray/white matter contrast, resolution/sharpness, deep gray-matter, cerebellar vermis, anterior commissure, and overall quality, on a 5-point Likert scale, were assessed by experienced radiologists. In addition, the trained model was tested on retrospectively-undersampled 3D T1-weighted LAVA (Liver Acquisition with Volume Acceleration) abdominal scan data, and prospectively-undersampled 3D MPRAGE and LAVA scans in three healthy volunteers and one, respectively. Results: The qualitative scores for DL-Speed with a 10-fold acceleration were higher than or equal to those for the parallel imaging with 2-fold acceleration. DL-Speed outperformed a compressed sensing method in quantitative metrics on retrospectively-undersampled LAVA data. DL-Speed was demonstrated to perform reasonably well on prospectively-undersampled scan data, realizing a 2-5 times reduction in scan time. Conclusion: DL-Speed was shown to accelerate 3D MPRAGE and LAVA with up to a net 10-fold acceleration, achieving 2-5 times faster scans compared to conventional parallel imaging and acceleration, while maintaining diagnostic image quality and real-time reconstruction. The brain scan data-trained DL-Speed also performed well when reconstructing abdominal LAVA scan data, demonstrating versatility of the network.