基于三维螺旋轨迹、图像重建和参数估计(SOTIP)的高效记忆协同优化螺旋投影MR指纹识别

Jiaren Zou;Yun Jiang;Sydney Kaplan;Nicole Seiberlich;Yue Cao
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引用次数: 0

摘要

本工作旨在通过开发计算效率高的基于模型的深度学习(MBDL)图像重建框架和图像重建、定量参数估计和k空间采样轨迹的联合优化框架,提高扫描效率并克服具有全三维螺旋轨迹的高分辨率MR指纹(MRF)的计算挑战。利用参数估计损失对图像重建和参数量化网络进行联合优化。同时,通过学习MRF数据的解剖时空稀疏性,结合图像重建网络训练,进行全三维螺旋轨迹旋转角度的数据驱动优化。使用健康受试者和患者的模拟和体内MRF数据评估MBDL图像重建,并与局部低秩(LLR)迭代重建进行比较。MBDL重建的全脑、1毫米各向同性、T1和T2图像体积改善了参数的标准化均方根误差(nrmse)(高达30%),与基于2分钟和1分钟扫描的模拟和体内MRF数据的LLR重建相比,减少了重建时间(高达65倍)。图像参数重建或采样轨迹-图像重建联合优化进一步提高了T1和T2在模拟数据上较基线MBDL重建的nrmse (p<0.05)。本工作开发了一个通用的端到端框架,通过对图像重建、参数重建和采样轨迹的联合优化,以最小的计算量和时间需求提高三维定量MRI的参数量化精度,缩短重建时间。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Improved Spiral Projection MR Fingerprinting via Memory-Efficient Synergic Optimization of 3D Spiral Trajectory, Image Reconstruction and Parameter Estimation (SOTIP)
This work aims to improve scan efficiency and overcome computational challenges in high-resolution MR fingerprinting (MRF) with full 3D spiral trajectory by developing a computationally efficient model-based deep learning (MBDL) image reconstruction framework and a joint optimization framework of image reconstruction, quantitative parameter estimation and k-space sampling trajectory. A parameter estimation loss was used to jointly optimize image reconstruction and parameter quantification networks. Also, data-driven optimization of rotation angles of full 3D spiral trajectories through learning anatomy-specific spatiotemporal sparsity of the MRF data was performed jointly with image reconstruction network training. The MBDL image reconstruction was evaluated using simulated and in vivo MRF data acquired in healthy subjects and patients and compared with a locally low rank (LLR) iterative reconstruction. Whole-brain, 1-mm isotropic, T1 and T2 image volumes reconstructed by the MBDL improved normalized root mean squared errors (NRMSEs) (up to 30%) of the parameters and reduced reconstruction time (up to 65-fold) compared with the LLR reconstruction from both simulated and in vivo MRF data of 2-min and 1-min scans. Joint optimization of image-parameter reconstruction or sampling trajectory-image reconstruction further improved NRMSEs of T1 and T2 significantly from the baseline MBDL reconstruction (p<0.05) on simulated data. This work develops a generic, end-to-end framework to improve parameter quantification accuracy and shorten reconstruction time of 3D quantitative MRI by joint optimization of image reconstruction, parameter reconstruction and sampling trajectory with minimal computation and time demand.
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