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基于SURE的ESPIRiT校准自动参数选择

SURE-based automatic parameter selection for ESPIRiT calibration.

作者信息

Iyer Siddharth, Ong Frank, Setsompop Kawin, Doneva Mariya, Lustig Michael

机构信息

Department of Electrical Engineering and Computer Science, University of California, Berkeley, CA, USA.

Athinoula A. Martinos Center for Biomedical Imaging, Department of Radiology, Massachusetts General Hospital, Charlestown, MA, USA.

出版信息

Magn Reson Med. 2020 Dec;84(6):3423-3437. doi: 10.1002/mrm.28386. Epub 2020 Jul 19.

Abstract

PURPOSE

ESPIRiT is a parallel imaging method that estimates coil sensitivity maps from the auto-calibration region (ACS). This requires choosing several parameters for the optimal map estimation. While fairly robust to these parameter choices, occasionally, poor selection can result in reduced performance. The purpose of this work is to automatically select parameters in ESPIRiT for more robust and consistent performance across a variety of exams.

METHODS

By viewing ESPIRiT as a denoiser, Stein's unbiased risk estimate (SURE) is leveraged to automatically optimize parameter selection in a data-driven manner. The optimum parameters corresponding to the minimum true squared error, minimum SURE as derived from densely sampled, high-resolution, and non-accelerated data and minimum SURE as derived from ACS are compared using simulation experiments. To avoid optimizing the rank of ESPIRiT's auto-calibrating matrix (one of the parameters), a heuristic derived from SURE-based singular value thresholding is also proposed.

RESULTS

Simulations show SURE derived from the densely sampled, high-resolution, and non-accelerated data to be an accurate estimator of the true mean squared error, enabling automatic parameter selection. The parameters that minimize SURE as derived from ACS correspond well to the optimal parameters. The soft-threshold heuristic improves computational efficiency while providing similar results to an exhaustive search. In-vivo experiments verify the reliability of this method.

CONCLUSIONS

Using SURE to determine ESPIRiT parameters allows for automatic parameter selections. In-vivo results are consistent with simulation and theoretical results.

摘要

目的

ESPIRiT是一种并行成像方法,可从自校准区域(ACS)估计线圈灵敏度图。这需要选择几个参数以进行最佳的图估计。虽然对这些参数选择相当稳健,但偶尔,选择不当会导致性能下降。这项工作的目的是自动选择ESPIRiT中的参数,以便在各种检查中实现更稳健和一致的性能。

方法

通过将ESPIRiT视为一种去噪器,利用斯坦因无偏风险估计(SURE)以数据驱动的方式自动优化参数选择。使用模拟实验比较对应于最小真实平方误差、从密集采样、高分辨率和非加速数据导出的最小SURE以及从ACS导出的最小SURE的最佳参数。为了避免优化ESPIRiT自校准矩阵的秩(参数之一),还提出了一种基于SURE的奇异值阈值化的启发式方法。

结果

模拟表明,从密集采样、高分辨率和非加速数据导出的SURE是真实均方误差的准确估计器,能够实现自动参数选择。从ACS导出的使SURE最小化的参数与最佳参数非常吻合。软阈值启发式方法提高了计算效率,同时提供了与穷举搜索相似的结果。体内实验验证了该方法的可靠性。

结论

使用SURE来确定ESPIRiT参数可实现自动参数选择。体内结果与模拟和理论结果一致。

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