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用于脑MRI中点头运动的前瞻性图像域校正的二维脂肪导航器的特性

Properties of a 2D fat navigator for prospective image domain correction of nodding motion in brain MRI.

作者信息

Skare Stefan, Hartwig Axel, Mårtensson Magnus, Avventi Enrico, Engström Mathias

机构信息

Department of Neuroradiology, Karolinska University Hospital, Stockholm, Sweden; Department of Clinical Neuroscience, Karolinska Institutet, Stockholm, Sweden.

出版信息

Magn Reson Med. 2015 Mar;73(3):1110-9. doi: 10.1002/mrm.25234. Epub 2014 Apr 14.

Abstract

PURPOSE

A two-dimensional fat navigator (FatNav) image is proposed, designed for future use as a means of prospective motion correction of head-nodding motion.

METHODS

The proposed FatNav module comprised a fat-selective excitation, followed by an accelerated echo planar imaging readout played out in one central sagittal plane. Step-wise motion experiments with different acceleration factors, blip polarity, and matrix sizes were performed. The accuracy of motion estimates derived from the FatNav data was assessed using water-based, distortion-free, spoiled-gradient echo images as the gold standard. The duration of the FatNav module was 10 ms to 20 ms. Volunteer data were acquired on a 3T system using an 8-channel radiofrequency coil.

METHODS

It is shown that acceleration factors of R = 8 are feasible for FatNav data. Best results are obtained when parallel imaging calibration data is matched in terms of both geometric distortions and signal content. For head rotations up to about 15 mm and 20 degrees, mean absolute errors of the motion estimates using FatNav data were about 0.5 mm and 1 degree.

CONCLUSION

FatNav is advantageous in that it leaves most of the brain water magnetization unaffected and left to the host pulse sequence. Furthermore, high acceleration factors are possible with FatNav, which reduces estimation bias and the navigator duration.

摘要

目的

提出一种二维脂肪导航器(FatNav)图像,旨在作为点头运动前瞻性运动校正的一种手段供未来使用。

方法

所提出的FatNav模块包括脂肪选择性激发,随后在一个中央矢状面进行加速回波平面成像读出。进行了具有不同加速因子、相位编码极性和矩阵大小的逐步运动实验。以基于水的、无失真的、扰相梯度回波图像作为金标准,评估从FatNav数据得出的运动估计的准确性。FatNav模块的持续时间为10毫秒至20毫秒。使用8通道射频线圈在3T系统上采集志愿者数据。

方法

结果表明,R = 8的加速因子对于FatNav数据是可行的。当并行成像校准数据在几何失真和信号内容方面匹配时可获得最佳结果。对于高达约15毫米和20度的头部旋转,使用FatNav数据的运动估计的平均绝对误差约为0.5毫米和1度。

结论

FatNav的优势在于它使大部分脑水磁化不受影响,并留给宿主脉冲序列。此外,FatNav可以实现高加速因子,这减少了估计偏差和导航器持续时间。

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