Fast Whole-Brain MR Multi-Parametric Mapping with Scan-Specific Self-Supervised Networks

Amir Heydari, Abbas Ahmadi, Tae Hyung Kim, Berkin Bilgic
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Abstract

Quantification of tissue parameters using MRI is emerging as a powerful tool in clinical diagnosis and research studies. The need for multiple long scans with different acquisition parameters prohibits quantitative MRI from reaching widespread adoption in routine clinical and research exams. Accelerated parameter mapping techniques leverage parallel imaging, signal modelling and deep learning to offer more practical quantitative MRI acquisitions. However, the achievable acceleration and the quality of maps are often limited. Joint MAPLE is a recent state-of-the-art multi-parametric and scan-specific parameter mapping technique with promising performance at high acceleration rates. It synergistically combines parallel imaging, model-based and machine learning approaches for joint mapping of T1, T2*, proton density and the field inhomogeneity. However, Joint MAPLE suffers from prohibitively long reconstruction time to estimate the maps from a multi-echo, multi-flip angle (MEMFA) dataset at high resolution in a scan-specific manner. In this work, we propose a faster version of Joint MAPLE which retains the mapping performance of the original version. Coil compression, random slice selection, parameter-specific learning rates and transfer learning are synergistically combined in the proposed framework. It speeds-up the reconstruction time up to 700 times than the original version and processes a whole-brain MEMFA dataset in 21 minutes on average, which originally requires ~260 hours for Joint MAPLE. The mapping performance of the proposed framework is ~2-fold better than the standard and the state-of-the-art evaluated reconstruction techniques on average in terms of the root mean squared error.
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利用特定扫描自监督网络快速绘制全脑 MR 多参数图谱
利用核磁共振成像对组织参数进行定量分析正在成为临床诊断和研究的有力工具。由于需要使用不同的采集参数进行多次长时间扫描,定量 MRI 无法在常规临床和研究检查中得到广泛应用。加速参数映射技术利用并行成像、信号建模和深度学习来提供更实用的定量 MRI 采集。然而,可实现的加速度和制图质量往往受到限制。JointMAPLE是一种最新的多参数和特定扫描参数成像技术,在高加速度下具有良好的性能。它协同结合了并行成像、基于模型和机器学习的方法,用于联合绘制 T1、T2*、质子密度和同质性场图。然而,Joint MAPLE 在以特定扫描方式从高分辨率多回波、多翻转角度(MEMFA)数据集估算图谱时,存在重建时间过长的问题。在这项工作中,我们提出了一种更快的联合 MAPLE 版本,它保留了原始版本的映射性能。在提出的框架中,线圈压缩、随机切片选择、特定参数学习率和迁移学习被协同结合在一起。它将重建时间加快到原始版本的 700 倍,处理全脑 MEMFA 数据集的平均时间为 21 分钟,而联合 MAPLE 原本需要约 260 个小时。
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