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基于化学位移的水脂分离的压缩感知。

Compressed sensing for chemical shift-based water-fat separation.

机构信息

Institute for Signal Processing, University of Lübeck, Lübeck, Germany.

出版信息

Magn Reson Med. 2010 Dec;64(6):1749-59. doi: 10.1002/mrm.22563. Epub 2010 Sep 21.

Abstract

Multi echo chemical shift-based water-fat separation methods allow for uniform fat suppression in the presence of main field inhomogeneities. However, these methods require additional scan time for chemical shift encoding. This work presents a method for water-fat separation from undersampled data (CS-WF), which combines compressed sensing and chemical shift-based water-fat separation. Undersampling was applied in the k-space and in the chemical shift encoding dimension to reduce the total scanning time. The method can reconstruct high quality water and fat images in 2D and 3D applications from undersampled data. As an extension, multipeak fat spectral models were incorporated into the CS-WF reconstruction to improve the water-fat separation quality. In 3D MRI, reduction factors of above three can be achieved, thus fully compensating the additional time needed in three-echo water-fat imaging. The method is demonstrated on knee and abdominal in vivo data.

摘要

基于多回波化学位移的水脂分离方法可在主磁场不均匀的情况下实现均匀的脂肪抑制。然而,这些方法需要额外的化学位移编码扫描时间。本研究提出了一种从欠采样数据(CS-WF)中进行水脂分离的方法,该方法结合了压缩感知和基于化学位移的水脂分离。欠采样应用于 k 空间和化学位移编码维度,以减少总扫描时间。该方法可从欠采样数据重建高质量的 2D 和 3D 水脂图像。作为扩展,多峰脂肪光谱模型被纳入 CS-WF 重建中,以提高水脂分离质量。在 3D MRI 中,可实现超过三倍的降采样率,从而完全补偿三回波水脂成像所需的额外时间。该方法在膝关节和腹部活体数据上得到了验证。

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