Laboratory of Biomedical Imaging and Signal Processing, The University of Hong Kong, Hong Kong SAR, China.
Department of Electrical and Electronic Engineering, The University of Hong Kong, Hong Kong SAR, China.
Magn Reson Med. 2023 Aug;90(2):502-519. doi: 10.1002/mrm.29658. Epub 2023 Apr 3.
To develop a robust parallel imaging reconstruction method using spatial nulling maps (SNMs).
Parallel reconstruction using null operations (PRUNO) is a k-space reconstruction method where a k-space nulling system is derived using null-subspace bases of the calibration matrix. ESPIRiT reconstruction extends the PRUNO subspace concept by exploiting the linear relationship between signal-subspace bases and spatial coil sensitivity characteristics, yielding a hybrid-domain approach. Yet it requires empirical eigenvalue thresholding to mask the coil sensitivity information and is sensitive to signal- and null-subspace division. In this study, we combine the concepts of null-subspace PRUNO and hybrid-domain ESPIRiT to provide a more robust reconstruction method that extracts null-subspace bases of calibration matrix to calculate image-domain SNMs. Multi-channel images are reconstructed by solving an image-domain nulling system formed by SNMs that contain both coil sensitivity and finite image support information, therefore, circumventing the masking-related procedure. The proposed method was evaluated with multi-channel 2D brain and knee data and compared to ESPIRiT.
The proposed hybrid-domain method produced quality reconstruction highly comparable to ESPIRiT with optimal manual masking. It involved no masking-related manual procedure and was tolerant of the actual division of null- and signal-subspace. Spatial regularization could be also readily incorporated to reduce noise amplification as in ESPIRiT.
We provide an efficient hybrid-domain reconstruction method using multi-channel SNMs that are calculated from coil calibration data. It eliminates the need for coil sensitivity masking and is relatively insensitive to subspace separation, therefore, presenting a robust parallel imaging reconstruction procedure in practice.
开发一种使用空间置零图(SNM)的稳健并行成像重建方法。
使用零操作的并行重建(PRUNO)是一种 k 空间重建方法,其中使用校准矩阵的零子空间基导出 k 空间置零系统。ESPIRiT 重建通过利用信号子空间基与空间线圈灵敏度特性之间的线性关系扩展了 PRUNO 子空间概念,从而产生了一种混合域方法。然而,它需要经验特征值阈值来屏蔽线圈灵敏度信息,并且对信号和零子空间划分敏感。在这项研究中,我们结合了零子空间 PRUNO 和混合域 ESPIRiT 的概念,提供了一种更稳健的重建方法,该方法提取校准矩阵的零子空间基来计算图像域 SNM。通过求解由包含线圈灵敏度和有限图像支持信息的 SNM 形成的图像域置零系统来重建多通道图像,从而避免了与掩蔽相关的过程。该方法使用多通道 2D 脑和膝关节数据进行了评估,并与 ESPIRiT 进行了比较。
所提出的混合域方法产生的重建质量与 ESPIRiT 非常相似,具有最佳的手动掩蔽。它不涉及与掩蔽相关的手动过程,并且对零子空间和信号子空间的实际划分具有容忍性。像 ESPIRiT 一样,也可以很容易地合并空间正则化以减少噪声放大。
我们提供了一种使用从线圈校准数据计算得到的多通道 SNM 的高效混合域重建方法。它消除了对线圈灵敏度掩蔽的需求,并且对子空间分离相对不敏感,因此在实际中提供了一种稳健的并行成像重建过程。