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一种改进的广义级数方法:在稀疏采样 fMRI 中的应用。

A modified generalized series approach: application to sparsely sampled FMRI.

出版信息

IEEE Trans Biomed Eng. 2013 Oct;60(10):2867-77. doi: 10.1109/TBME.2013.2265699. Epub 2013 Jun 3.

DOI:10.1109/TBME.2013.2265699
PMID:23744655
Abstract

In functional MRI, it is often desirable to reduce the readout duration to make the acquired data less prone to T₂* susceptibility artifacts. In addition, a shorter readout length allows for a shorter minimum TE, which is important for optimizing SNR. This can be achieved by undersampling the k-space. However, the conventional Fourier transform-based reconstruction method suffers from under-sampling artifacts such as high-frequency ringing and loss of resolution. To address this problem, we revisit the constrained-model approach using the generalized-series (GS) which has been proposed to address the undersampling problem for dynamic MRI. We propose a modification to the conventional use of the model in order to reflect small hemodynamic signal changes typical in fMRI. Specifically, while realizing that having high model order is necessary to capture missing information, we found that it is not necessary to span all frequencies of GS basis functions uniformly. Instead, having k -space and GS "sampling" trajectories covering low-frequencies uniformly while spanning high-frequencies sparsely, was observed to be an efficient strategy. The ability of the method over the conventional GS approach in improving resolution of functional images and activation maps while reducing undersampling ringing is demonstrated by simulations and experiments at 3T. Reduction in the readout time allowed an increase of statistical signal power as compared to the fully sampled acquisition. Unlike compressed sensing approaches, the proposed method is linear and hence has lower computational complexity. The method could prove useful for other imaging modalities where the signal change is smaller than the baseline component.

摘要

在功能磁共振成像中,通常希望减少读出时间,以使采集的数据不易受到 T₂* 磁化率伪影的影响。此外,较短的读出长度允许最短 TE 更短,这对于优化 SNR 很重要。这可以通过欠采样 k 空间来实现。然而,基于传统傅里叶变换的重建方法存在欠采样伪影,如高频振铃和分辨率损失。为了解决这个问题,我们重新审视了使用广义级数 (GS) 的约束模型方法,该方法已被提出用于解决动态 MRI 的欠采样问题。我们对模型的常规使用进行了修改,以反映 fMRI 中典型的小血液动力学信号变化。具体来说,虽然意识到具有高模型阶数对于捕获缺失信息是必要的,但我们发现并不需要均匀地跨越 GS 基函数的所有频率。相反,观察到在均匀覆盖低频的同时稀疏地跨越高频的 k 空间和 GS“采样”轨迹是一种有效的策略。通过在 3T 进行的模拟和实验,该方法在提高功能图像和激活图的分辨率同时减少欠采样振铃方面优于传统 GS 方法。与完全采样采集相比,读出时间的减少允许统计信号功率增加。与压缩感知方法不同,所提出的方法是线性的,因此计算复杂度较低。该方法对于信号变化小于基线分量的其他成像模式可能很有用。

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