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通过序列优化减轻磁共振指纹识别中的欠采样误差。

Mitigating undersampling errors in MR fingerprinting by sequence optimization.

作者信息

Heesterbeek David G J, Koolstra Kirsten, van Osch Matthias J P, van Gijzen Martin B, Vos Franciscus M, Nagtegaal Martijn A

机构信息

Department of Imaging Physics, Delft University of Technology, Delft, The Netherlands.

Delft Institute of Applied Mathematics, Delft University of Technology, Delft, The Netherlands.

出版信息

Magn Reson Med. 2023 May;89(5):2076-2087. doi: 10.1002/mrm.29554. Epub 2022 Dec 2.

Abstract

PURPOSE

To develop a method for MR Fingerprinting (MRF) sequence optimization that takes both the applied undersampling pattern and a realistic reference map into account.

METHODS

A predictive model for the undersampling error leveraging on perturbation theory was exploited to optimize the MRF flip angle sequence for improved robustness against undersampling artifacts. In this framework parameter maps from a previously acquired MRF scan were used as reference. Sequences were optimized for different sequence lengths, smoothness constraints and undersampling factors. Numerical simulations and in vivo measurements in eight healthy subjects were performed to assess the effect of the performed optimization. The optimized MRF sequences were compared to a conventionally shaped flip angle pattern and an optimized pattern based on the Cramér-Rao lower bound (CRB).

RESULTS

Numerical simulations and in vivo results demonstrate that the undersampling errors can be suppressed by flip angle optimization. Analysis of the in vivo results show that a sequence optimized for improved robustness against undersampling with a flip angle train of length 400 yielded significantly lower median absolute errors in : and : compared to the conventional ( : , : ) and CRB-based ( : , : ) sequences.

CONCLUSION

The proposed method is able to optimize the MRF flip angle pattern such that significant mitigation of the artifacts from strong k-space undersampling in MRF is achieved.

摘要

目的

开发一种用于磁共振指纹识别(MRF)序列优化的方法,该方法同时考虑应用的欠采样模式和实际的参考图。

方法

利用基于微扰理论的欠采样误差预测模型来优化MRF翻转角序列,以提高对欠采样伪影的鲁棒性。在此框架中,将先前采集的MRF扫描的参数图用作参考。针对不同的序列长度、平滑度约束和欠采样因子对序列进行优化。对八名健康受试者进行了数值模拟和体内测量,以评估所执行优化的效果。将优化后的MRF序列与传统形状的翻转角模式以及基于克拉美罗下界(CRB)的优化模式进行比较。

结果

数值模拟和体内结果表明,通过翻转角优化可以抑制欠采样误差。对体内结果的分析表明,与传统序列( : , : )和基于CRB的序列( : , : )相比,针对长度为400的翻转角序列进行优化以提高对欠采样的鲁棒性后,在 : 和 : 中产生的中值绝对误差显著更低。

结论

所提出的方法能够优化MRF翻转角模式,从而显著减轻MRF中强k空间欠采样产生的伪影。

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