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利用拉普拉斯增强深度神经网络从 MRI 原始相位图中进行即时组织场和磁化率映射。

Instant tissue field and magnetic susceptibility mapping from MRI raw phase using Laplacian enhanced deep neural networks.

机构信息

School of Information Technology and Electrical Engineering, University of Queensland, Brisbane, Australia.

Queensland Brain Institute, University of Queensland, Brisbane, Australia.

出版信息

Neuroimage. 2022 Oct 1;259:119410. doi: 10.1016/j.neuroimage.2022.119410. Epub 2022 Jun 23.

DOI:10.1016/j.neuroimage.2022.119410
PMID:35753595
Abstract

Quantitative susceptibility mapping (QSM) is an MRI post-processing technique that produces spatially resolved magnetic susceptibility maps from phase data. However, the traditional QSM reconstruction pipeline involves multiple non-trivial steps, including phase unwrapping, background field removal, and dipole inversion. These intermediate steps not only increase the reconstruction time but accumulates errors. This study aims to overcome existing limitations by developing a Laplacian-of-Trigonometric-functions (LoT) enhanced deep neural network for near-instant quantitative field and susceptibility mapping (i.e., iQFM and iQSM) from raw MRI phase data. The proposed iQFM and iQSM methods were compared with established reconstruction pipelines on simulated and in vivo datasets. In addition, experiments on patients with intracranial hemorrhage and multiple sclerosis were also performed to test the generalization of the proposed neural networks. The proposed iQFM and iQSM methods in healthy subjects yielded comparable results to those involving the intermediate steps while dramatically improving reconstruction accuracies on intracranial hemorrhages with large susceptibilities. High susceptibility contrast between multiple sclerosis lesions and healthy tissue was also achieved using the proposed methods. Comparative studies indicated that the most significant contributor to iQFM and iQSM over conventional multi-step methods was the elimination of traditional Laplacian unwrapping. The reconstruction time on the order of minutes for traditional approaches was shortened to around 0.1 s using the trained iQFM and iQSM neural networks.

摘要

定量磁化率映射(QSM)是一种 MRI 后处理技术,它从相位数据中生成空间分辨率的磁化率图。然而,传统的 QSM 重建流程涉及多个复杂步骤,包括相位解缠、背景场去除和偶极子反演。这些中间步骤不仅增加了重建时间,而且还会累积误差。本研究旨在通过开发拉普拉斯三角函数增强的深度神经网络,从原始 MRI 相位数据中实现近乎即时的定量磁场和磁化率映射(即 iQFM 和 iQSM),来克服现有局限性。将所提出的 iQFM 和 iQSM 方法与基于模拟和体内数据集的传统重建流程进行了比较。此外,还对颅内出血和多发性硬化症患者进行了实验,以检验所提出的神经网络的泛化能力。在健康受试者中,所提出的 iQFM 和 iQSM 方法与涉及中间步骤的方法产生了可比的结果,同时极大地提高了对具有较大磁化率的颅内出血的重建准确性。利用所提出的方法,还可以在多发性硬化症病变和健康组织之间实现高磁化率对比。对比研究表明,iQFM 和 iQSM 相较于传统多步骤方法的主要优势在于消除了传统的拉普拉斯解缠。使用经过训练的 iQFM 和 iQSM 神经网络,可以将传统方法的分钟级重建时间缩短到约 0.1 秒。

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