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Maximum a posteriori estimation of diffusion tensor parameters using a Rician noise model: why, how and but.

机译:使用Rician噪声模型对扩散张量参数进行最大后验估计:为什么,如何和但是。

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摘要

The diffusion tensor is a commonly used model for diffusion-weighted MR image data. The parameters are typically estimated by ordinary or weighted least squares on log-transformed data, assuming normal or log-normal distribution of measurement errors respectively. This may not be adequate when using high b-values and or performing high-resolution scans, resulting in poor SNR, in which case the difference between the assumed and the true (Rician) noise model becomes important. As a consequence the estimated diffusion parameters will be biased, underestimating the true diffusion. In this paper a computational framework is presented where parameters pertaining to a spectral decomposition of the diffusion tensor are estimated using a Rician noise model. The parameters are estimated using a Fisher-scoring scheme which gives robust and rapid convergence. It is demonstrated how the Fisher-information matrix can be used as a generic tool for designing optimal experiments. It is shown that the Rician noise model leads to significantly less biased estimates for a large range of b-values and SNR, but that the Rician estimates have a poorer precision compared to the Gaussian model for very low SNR. By pooling the Rician estimates of uncertainty over neighbouring voxel estimates with higher precision, but still not as high as with a Gaussian model, can be obtained. We suggest the use of a Rician estimator when it is important with truly quantitative values and when comparing different predictive models. The higher precision of the Gaussian estimates may be more important when the objective is to compare diffusion related parameters over time or across groups.
机译:扩散张量是扩散加权MR图像数据的常用模型。通常分别假设对数误差的正态分布或对数正态分布,通过对数转换后的数据的普通或加权最小二乘估计参数。当使用高b值和/或执行高分辨率扫描时,这可能不足以导致SNR较差,在这种情况下,假定噪声模型与真实(Rician)噪声模型之间的差异变得很重要。结果,估计的扩散参数将被偏置,从而低估了真实的扩散。在本文中,提出了一种计算框架,其中使用Rician噪声模型估计与扩散张量的频谱分解有关的参数。使用Fisher评分方案估算参数,该方案可提供强大且快速的收敛性。演示了Fisher信息矩阵如何用作设计最佳实验的通用工具。结果表明,对于大范围的b值和SNR,Rician噪声模型导致的偏差估计明显减少,但对于非常低的SNR,与高斯模型相比,Rician估计的精度较差。通过将不确定性的Rician估计值与相邻体素估计值合并起来,可以获得更高的精度,但仍不如高斯模型高。当对真正的定量值很重要且比较不同的预测模型时,我们建议使用Rician估计量。当目标是比较随时间推移或跨组的扩散相关参数时,高斯估计的更高精度可能更重要。

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