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首页> 外文期刊>NeuroImage >Fast imaging of mean, axial and radial diffusion kurtosis
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Fast imaging of mean, axial and radial diffusion kurtosis

机译:快速成像平均,轴向和径向扩散峰度

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摘要

Diffusion kurtosis imaging (DKI) is being increasingly reported to provide sensitive biomarkers of subtle changes in tissue microstructure. However, DKI also imposes larger data requirements than diffusion tensor imaging (DTI), hence, the widespread adaptation and exploration of DKI would benefit from more efficient acquisition and computational methods. To meet this demand, we recently developed a method capable of estimating mean kurtosis with only 13 diffusion weighted images. This approach was later shown to provide very accurate mean kurtosis estimates and to be more efficient in terms of contrast to noise per unit time. However, insofar, the computation of two other critical DKI parameters, radial and axial kurtosis, has required the estimation of all 22 variables parameterizing the full DKI signal expression. Here, we present two strategies for estimating all of DKI's principal parameters - mean kurtosis, radial kurtosis, and axial kurtosis - using only 19 diffusion weighted images, compared to the current state-of-the-art acquisitions typically requiring about 60 images. The first approach is based on axially symmetric diffusion and kurtosis tensors, presented here for the first time, and referred to as axially symmetric DKI. The second approach is applicable in tissues with a priori known principal diffusion direction, and does not require fitting of any kind. The approaches are evaluated in human brain in vivo as well as in fixed rat spinal cord, and are demonstrated to provide metrics in good agreement with their full DKI counterparts estimated with nonlinear least squares. For small data sets and in white matter, axially symmetric DKI provides more accurate and robust estimates than unconstrained DKI. The significant acceleration achieved further paves the way to routine application of the technique. (C) 2016 Elsevier Inc. All rights reserved.
机译:越来越多地报道了扩散峰度成像(DKI),以提供组织微结构细微变化的敏感生物标记。但是,与扩散张量成像(DTI)相比,DKI还要求更大的数据要求,因此,对DKI的广泛适应和探索将受益于更高效的采集和计算方法。为了满足这一需求,我们最近开发了一种仅用13个扩散加权图像就能估计平均峰度的方法。后来证明了这种方法可以提供非常准确的平均峰度估计值,并且与单位时间的噪声相比,效率更高。但是,就此而言,计算其他两个关键DKI参数(径向和轴向峰度)需要估算所有参数化所有DKI信号表达式的22个变量。在这里,我们提出了两种策略来估计DKI的所有主要参数-平均峰度,径向峰度和轴向峰度-仅使用19个扩散加权图像,与当前通常需要大约60张图像的最新采集相比。第一种方法是基于轴向对称扩散和峰度张量,这是首次在此处提出,称为轴向对称DKI。第二种方法适用于具有先验已知的主要扩散方向的组织,并且不需要任何类型的拟合。该方法在人脑的体内以及固定的大鼠脊髓中进行了评估,并被证明可以提供与使用非线性最小二乘估计的完整DKI对应物完全一致的指标。对于小数据集和白质,与非约束DKI相比,轴向对称DKI可提供更准确和更可靠的估计。获得的显着加速进一步为该技术的常规应用铺平了道路。 (C)2016 Elsevier Inc.保留所有权利。

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