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用于策略性采集梯度回波(STAGE)成像的多回波定量磁化率映射

Multi-Echo Quantitative Susceptibility Mapping for Strategically Acquired Gradient Echo (STAGE) Imaging.

作者信息

Gharabaghi Sara, Liu Saifeng, Wang Ying, Chen Yongsheng, Buch Sagar, Jokar Mojtaba, Wischgoll Thomas, Kashou Nasser H, Zhang Chunyan, Wu Bo, Cheng Jingliang, Haacke E Mark

机构信息

Department of Computer Science and Engineering, Wright State University, Dayton, OH, United States.

Magnetic Resonance Innovations, Inc., Bingham Farms, MI, United States.

出版信息

Front Neurosci. 2020 Oct 23;14:581474. doi: 10.3389/fnins.2020.581474. eCollection 2020.

Abstract

PURPOSE

To develop a method to reconstruct quantitative susceptibility mapping (QSM) from multi-echo, multi-flip angle data collected using strategically acquired gradient echo (STAGE) imaging.

METHODS

The proposed QSM reconstruction algorithm, referred to as "structurally constrained Susceptibility Weighted Imaging and Mapping" scSWIM, performs an and regularization-based reconstruction in a single step. The unique contrast of the T1 weighted enhanced (T1WE) image derived from STAGE imaging was used to extract reliable geometry constraints to protect the basal ganglia from over-smoothing. The multi-echo multi-flip angle data were used for improving the contrast-to-noise ratio in QSM through a weighted averaging scheme. The measured susceptibility values from scSWIM for both simulated and data were compared to the: original susceptibility model (for simulated data only), the multi orientation COSMOS (for data only), truncated k-space division (TKD), iterative susceptibility weighted imaging and mapping (iSWIM), and morphology enabled dipole inversion (MEDI) algorithms. Goodness of fit was quantified by measuring the root mean squared error (RMSE) and structural similarity index (SSIM). Additionally, scSWIM was assessed in ten healthy subjects.

RESULTS

The unique contrast and tissue boundaries from T1WE and iSWIM enable the accurate definition of edges of high susceptibility regions. For the simulated brain model without the addition of microbleeds and calcium, the RMSE was best at 5.21ppb for scSWIM and 8.74ppb for MEDI thanks to the reduced streaking artifacts. However, by adding the microbleeds and calcium, MEDI's performance dropped to 47.53ppb while scSWIM performance remained the same. The SSIM was highest for scSWIM (0.90) and then MEDI (0.80). The deviation from the expected susceptibility in deep gray matter structures for simulated data relative to the model (and for the data relative to COSMOS) as measured by the slope was lowest for scSWIM + 1%(-1%); MEDI + 2%(-11%) and then iSWIM -5%(-10%). Finally, scSWIM measurements in the basal ganglia of healthy subjects were in agreement with literature.

CONCLUSION

This study shows that using a data fidelity term and structural constraints results in reduced noise and streaking artifacts while preserving structural details. Furthermore, the use of STAGE imaging with multi-echo and multi-flip data helps to improve the signal-to-noise ratio in QSM data and yields less artifacts.

摘要

目的

开发一种从使用策略性采集梯度回波(STAGE)成像收集的多回波、多翻转角数据重建定量磁化率图谱(QSM)的方法。

方法

所提出的QSM重建算法,称为“结构约束磁化率加权成像与图谱”(scSWIM),在单个步骤中执行基于 和 正则化的重建。利用从STAGE成像得出的T1加权增强(T1WE)图像的独特对比度来提取可靠的几何约束,以保护基底神经节不被过度平滑。多回波多翻转角数据用于通过加权平均方案提高QSM中的对比度噪声比。将scSWIM针对模拟数据和实际数据测量的磁化率值与以下算法进行比较:原始磁化率模型(仅针对模拟数据)、多方向COSMOS(仅针对实际数据)、截断k空间划分(TKD)、迭代磁化率加权成像与图谱(iSWIM)以及形态学增强偶极子反演(MEDI)算法。通过测量均方根误差(RMSE)和结构相似性指数(SSIM)来量化拟合优度。此外,在十名健康受试者中对scSWIM进行了评估。

结果

T1WE和iSWIM的独特对比度及组织边界能够准确界定高磁化率区域的边缘。对于未添加微出血和钙的模拟脑模型,由于条纹伪影减少,scSWIM的RMSE最佳,为5.21ppb,MEDI为8.74ppb。然而,通过添加微出血和钙,MEDI的性能降至47.53ppb,而scSWIM的性能保持不变。scSWIM的SSIM最高(0.90),其次是MEDI(0.80)。对于模拟数据,相对于模型(对于实际数据,相对于COSMOS),由斜率测量的深部灰质结构中预期磁化率的偏差,scSWIM + 1%(-1%)最低;MEDI + 2%(-11%),然后是iSWIM -5%(-10%)。最后,健康受试者基底神经节中的scSWIM测量结果与文献一致。

结论

本研究表明,使用数据保真项和结构约束可减少噪声和条纹伪影,同时保留结构细节。此外,使用具有多回波和多翻转数据的STAGE成像有助于提高QSM数据中的信噪比并产生更少的伪影。

https://cdn.ncbi.nlm.nih.gov/pmc/blobs/75e0/7645168/907352f8f2b6/fnins-14-581474-g001.jpg

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