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Sequential Anisotropic Multichannel Wiener Filtering with Rician Bias Correction Applied to 3D Regularization of DWI Data

机译:具有Rician偏差校正的顺序各向异性多通道维纳滤波在DWI数据的3D正则化中的应用

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摘要

It has been shown that the tensor calculation is very sensitive to the presence of noise in the acquired images, yielding to very low-quality Diffusion Tensor Images (DTI) data. Recent investigations have shown that the noise present in the Diffusion Weighted Images (DWI) causes bias effects on the DTI data which cannot be corrected if the noise characteristic is not taken into account. One possible solution is to increase the minimum number of acquired measurements (which is 7) to several tens (or even several hundreds). This has the disadvantage of increasing the acquisition time by one (or two) orders of magnitude, making the process inconvenient for a clinical setting. We here proposed a turn-around procedure for which the number of acquisitions is maintained but, the DWI data are filtered prior to determining the DTI. We show a significant reduction on the DTI bias by means of a simple and fast procedure which is based on linear filtering; well-known drawbacks of such filters are circumvented by means of anisotropic neighborhoods and sequential application of the filter itself. Information of the first order probability density function of the raw data, namely, the Rice distribution, is also included. Results are shown both for synthetic and real datasets. Some error measurements are determined in the synthetic experiments, showing how the proposed scheme is able to reduce them. It is worth noting a 50% increase in the linear component for real DTI data, meaning that the bias in the DTI is considerably reduced. A novel fiber smoothness measure is defined to evaluate the resulting tractography for real DWI data. Our findings show that after filtering, fibers are considerably smoother on the average. Execution times are very low as compared to other reported approaches which allows for a real-time implementation.
机译:已经表明,张量计算对所采集图像中噪声的存在非常敏感,从而产生质量非常低的扩散张量图像(DTI)数据。最近的研究表明,存在于扩散加权图像(DWI)中的噪声会对DTI数据产生偏差影响,如果不考虑噪声特性,则无法对其进行校正。一种可能的解决方案是将获取的最小测量值(即7)增加到几十(甚至几百)。这具有将采集时间增加一个(或两个)数量级的缺点,使得该过程对于临床环境不方便。我们在这里提出了一个周转过程,可以维持采集次数,但是在确定DTI之前先过滤DWI数据。通过基于线性滤波的简单快速过程,我们显示了DTI偏差的显着降低;这种过滤器的众所周知的缺点是通过各向异性邻域和过滤器本身的顺序应用来避免的。还包括原始数据的一阶概率密度函数的信息,即莱斯分布。显示了合成数据集和实际数据集的结果。在综合实验中确定了一些误差测量值,表明了所提出的方案如何能够减少误差。值得注意的是,实际DTI数据的线性分量增加了50%,这意味着DTI中的偏差已大大降低。定义了一种新颖的纤维光滑度测量方法,以评估针对实际DWI数据得出的tractography。我们的发现表明,过滤后的纤维平均而言要光滑得多。与其他报告的方法相比,执行时间非常短,可以实时实现。

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