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首页> 外文期刊>Magnetic Resonance in Medicine >Receive array magnetic resonance spectroscopy: Whitened singular value decomposition (WSVD) gives optimal Bayesian solution
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Receive array magnetic resonance spectroscopy: Whitened singular value decomposition (WSVD) gives optimal Bayesian solution

机译:接收阵列磁共振波谱:白色奇异值分解(WSVD)提供最佳贝叶斯解决方案

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Receive array coils play a pivotal role in modern MRI. MR spectroscopy can also benefit from the enhanced signal-to-noise ratio and field of view provided by a receive array. In any experiment using an n-element array, n different complex spectra will be recorded and each spectrum unavoidably contains an undesired noise contribution. Previous algorithms for combining spectra have ignored the fact that the noise detected by different array elements is correlated. We introduce here an algorithm for efficiently, robustly, and automatically combining these n spectra using noise whitening and the singular value decomposition to provide the single combined spectrum that has maximum likelihood in the presence of this correlated noise. Simulations are performed that demonstrate the superiority of this approach to previous methods. Experiments in phantoms and in vivo on the brain, heart, and liver of normal volunteers, at 1.5 T and 3 T, using array coils from eight to 32 elements and with 1H and 31P nuclei, validate our approach, which provides signal-to-noise ratio improvements of up to 60% in our tests. The whitening and the singular value decomposition algorithm become most advantageous for large arrays, when the noise is markedly correlated, and when the signal-to-noise ratio is low. Magn Reson Med 63:881–891, 2010. © 2010 Wiley-Liss, Inc.
机译:接收阵列线圈在现代MRI中起着举足轻重的作用。 MR光谱还可从接收阵列提供的增强的信噪比和视场中受益。在使用n元素阵列的任何实验中,都会记录n个不同的复杂光谱,并且每个光谱不可避免地包含不希望的噪声贡献。先前用于组合光谱的算法已经忽略了由不同阵列元件检测到的噪声是相关的事实。我们在这里介绍一种算法,该算法可使用噪声白化和奇异值分解有效,稳健地自动组合这n个频谱,以提供在存在相关噪声的情况下具有最大可能性的单个组合频谱。进行的仿真证明了该方法相对于先前方法的优越性。在1.5 T和3 T的正常志愿者的脑,心脏和肝脏上进行幻像和体内实验,使用8到32个元素的阵列线圈以及 1 H和 31 < / sup> P核,验证我们的方法,该方法在我们的测试中可将信噪比提高多达60%。当噪声显着相关且信噪比低时,对于大型阵列,白化和奇异值分解算法将变得最有优势。 Magn Reson Med 63:881–891,2010。©2010 Wiley-Liss,Inc.

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