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Theoretical Investigation of Random Noise-Limited Signal-to-Noise Ratio in MR-based Electrical Properties Tomography

机译:基于MR的电学层析成像中随机限制噪声的信噪比的理论研究

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摘要

In magnetic resonance imaging-based electrical properties tomography (MREPT), tissue electrical properties (EPs) are derived from the spatial variation of the transmit RF field (B1+). Here we derive theoretically the relationship between the signal-to-noise ratio (SNR) of the electrical properties obtained by MREPT and the SNR of the input B1+ data, under the assumption that that latter is much greater than unity, and the noise in B1+ at different voxels is statistically independent. It is shown that for a given B1+ data, the SNR of both electrical conductivity and relative permittivity is proportional to the square of the linear dimension of the region of interest (ROI) over which the EPs are determined, and to the square root of the number of voxels in the ROI. The relationship also shows how the SNR varies with the main magnetic field (B0) strength. The predicted SNR is verified through numerical simulations on a cylindrical phantom with an analytically calculated B1+ map, and is found to provide explanation of certain aspects of previous experimental results in literature. Our SNR formula can be used to estimate minimum input data SNR and ROI size required to obtain tissue EP maps of desired quality.
机译:在基于磁共振成像的电特性断层扫描(MREPT)中,组织电特性(EPs)是从发射RF场的空间变化(B1 + )推导出来的。在这里我们从理论上推导了由MREPT获得的电性能的信噪比(SNR)与输入的B1 + 数据的SNR之间的关系,假定后者要大得多。比统一,并且在不同体素的B1 + 中的噪声在统计上是独立的。结果表明,对于给定的B1 + 数据,电导率和相对介电常数的SNR与确定EP的感兴趣区域(ROI)的线性尺寸的平方成正比,以及ROI中体素数量的平方根。该关系还显示出SNR如何随主磁场(B0)强度而变化。预测的SNR通过对圆柱体模进行数值模拟,并使用解析计算的B1 + 映射进行验证,并且可以为文献中先前实验结果的某些方面提供解释。我们的SNR公式可用于估计获得所需质量的组织EP图所需的最小输入数据SNR和ROI大小。

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