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策略性采集梯度回波(STAGE)成像,第四部分:白噪声约束重建(CROWN)处理作为提高3特斯拉STAGE成像信噪比的一种方法。

Strategically Acquired Gradient Echo (STAGE) Imaging, part IV: Constrained Reconstruction of White Noise (CROWN) Processing as a Means to Improve Signal-to-Noise in STAGE Imaging at 3 Tesla.

作者信息

Haacke E Mark, Xu Qiuyun, Kokeny Paul, Gharabaghi Sara, Chen Yongsheng, Wu Bo, Liu Yu, He Naying, Yan Fuhua

机构信息

SpinTech MRI, Bingham Farms, MI 48025, United States of America; Wayne State University, Department of Neurology, Detroit, MI 48201, United States of America; Wayne State University, Department of Radiology, Detroit, MI 48201, United States of America; Zhuyan Limited, Shanghai, China.

SpinTech MRI, Bingham Farms, MI 48025, United States of America.

出版信息

Magn Reson Imaging. 2024 Apr;107:55-68. doi: 10.1016/j.mri.2024.01.001. Epub 2024 Jan 4.

Abstract

Increasing the signal-to-noise ratio (SNR) has always been of critical importance for magnetic resonance imaging. Although increasing field strength provides a linear increase in SNR, it is more and more costly as field strength increases. Therefore, there is a major effort today to use signal processing methods to improve SNR since it is more efficient and economical. There are a variety of methods to improve SNR such as averaging the data at the expense of imaging time, or collecting the data with a lower resolution, all of these methods, including imaging processing methods, usually come at the expense of loss of image detail or image blurring. Therefore, we developed a new mathematical approach called CROWN (Constrained Reconstruction of White Noise) to enhance SNR without loss of structural detail and without affecting scanning time. In this study, we introduced and tested the concept behind CROWN specifically for STAGE (strategically acquired gradient echo) imaging. The concept itself is presented first, followed by simulations to demonstrate its theoretical effectiveness. Then the SNR improvement on proton spin density (PSD) and R2 maps was investigated using brain STAGE data acquired from 10 healthy controls (HCs) and 10 patients with Parkinson's disease (PD). For the PSD and R2* maps, the SNR and CNR between white matter and gray matter were improved by a factor of 1.87 ± 0.50 and 1.72 ± 0.88, respectively. The white matter hyperintensity lesions in PD patients were more clearly defined after CROWN processing. Using these improved maps, simulated images for any repeat time, echo time or flip angle can be created with improved SNR. The potential applications of this technology are to trade off the increased SNR for higher resolution images and/or faster imaging.

摘要

提高信噪比(SNR)对于磁共振成像一直至关重要。虽然提高场强会使信噪比呈线性增加,但随着场强增加成本也越来越高。因此,如今人们大力致力于使用信号处理方法来提高信噪比,因为这样更高效且经济。有多种提高信噪比的方法,比如以成像时间为代价对数据进行平均,或者以较低分辨率采集数据,所有这些方法,包括图像处理方法,通常都以损失图像细节或图像模糊为代价。因此,我们开发了一种名为CROWN(白噪声约束重建)的新数学方法,以提高信噪比,同时不损失结构细节且不影响扫描时间。在本研究中,我们专门针对STAGE(策略性采集梯度回波)成像引入并测试了CROWN背后的概念。首先介绍该概念本身,接着通过模拟来证明其理论有效性。然后,使用从10名健康对照者(HC)和10名帕金森病(PD)患者获取的脑部STAGE数据,研究了质子自旋密度(PSD)和R2图谱上的信噪比改善情况。对于PSD和R2*图谱,白质与灰质之间的信噪比和对比噪声比分别提高了1.87±0.50倍和1.72±0.88倍。CROWN处理后,PD患者的白质高信号病变更清晰。利用这些改进后的图谱,可以创建具有更高信噪比的任意重复时间、回波时间或翻转角的模拟图像。该技术的潜在应用是用提高的信噪比来换取更高分辨率的图像和/或更快的成像速度。

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