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首页> 外文期刊>Magnetic resonance in medicine: official journal of the Society of Magnetic Resonance in Medicine >Undersampled radial MRI with multiple coils. Iterative image reconstruction using a total variation constraint.
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Undersampled radial MRI with multiple coils. Iterative image reconstruction using a total variation constraint.

机译:多个线圈的欠采样放射线MRI。使用总变化约束的迭代图像重建。

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The reconstruction of artifact-free images from radially encoded MRI acquisitions poses a difficult task for undersampled data sets, that is for a much lower number of spokes in k-space than data samples per spoke. Here, we developed an iterative reconstruction method for undersampled radial MRI which (i) is based on a nonlinear optimization, (ii) allows for the incorporation of prior knowledge with use of penalty functions, and (iii) deals with data from multiple coils. The procedure arises as a two-step mechanism which first estimates the coil profiles and then renders a final image that complies with the actual observations. Prior knowledge is introduced by penalizing edges in coil profiles and by a total variation constraint for the final image. The latter condition leads to an effective suppression of undersampling (streaking) artifacts and further adds a certain degree of denoising. Apart from simulations, experimental results for a radial spin-echo MRI sequence are presented for phantoms and human brain in vivo at 2.9 T using 24, 48, and 96 spokes with 256 data samples. In comparison to conventional reconstructions (regridding) the proposed method yielded visually improved image quality in all cases.
机译:从径向编码的MRI采集中重建无伪像的图像,对于欠采样的数据集来说是一项艰巨的任务,也就是说,与每个辐条的数据样本相比,k空间中的辐条数量要少得多。在这里,我们开发了一种用于欠采样径向MRI的迭代重建方法,该方法(i)基于非线性优化,(ii)允许使用罚函数合并先验知识,并且(iii)处理来自多个线圈的数据。该过程由两步机制产生,该机制首先估算线圈轮廓,然后渲染符合实际观察结果的最终图像。通过惩罚线圈轮廓中的边缘和最终图像的总变化约束来引入先验知识。后一种情况导致有效抑制欠采样(条纹)伪像,并进一步增加了一定程度的降噪。除了模拟以外,还使用256个数据样本的24、48和96辐条,以2.9 T的速度在体内提供了人体模型和人脑的径向自旋回波MRI序列的实验结果。与常规重建(重新网格化)相比,所提出的方法在所有情况下都能在视觉上改善图像质量。

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