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首页> 外文期刊>Journal of applied statistics >Regularisation, interpolation and visualisation of diffusion tensor images using non-Euclidean statistics
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Regularisation, interpolation and visualisation of diffusion tensor images using non-Euclidean statistics

机译:使用非欧氏统计量对扩散张量图像进行正则化,内插和可视化

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Practical statistical analysis of diffusion tensor images is considered, and we focus primarily on methods that use metrics based on Euclidean distances between powers of diffusion tensors. First, we describe a family of anisotropy measures based on a scale invariant power-Euclidean metric, which are useful for visualisation. Some properties of the measures are derived and practical considerations are discussed, with some examples. Second, we discuss weighted Procrustes methods for diffusion tensor imaging interpolation and smoothing, and we compare methods based on different metrics on a set of examples as well as analytically. We establish a key relationship between the principal-square-root-Euclidean metric and the size-and-shape Procrustes metric on the space of symmetric positive semi-definite tensors. We explain, both analytically and by experiments, why the size-and-shape Procrustes metric may be preferred in practical tasks of interpolation, extrapolation and smoothing, especially when observed tensors are degenerate or when a moderate degree of tensor swelling is desirable. Third, we introduce regularisation methodology, which is demonstrated to be useful for highlighting features of prior interest and potentially for segmentation. Finally, we compare several metrics in a data set of human brain diffusion-weighted magnetic resonance imaging, and point out similarities between several of the non-Euclidean metrics but important differences with the commonly used Euclidean metric.
机译:考虑了扩散张量图像的实际统计分析,我们主要关注基于扩散张量幂之间的欧几里得距离的度量方法。首先,我们描述了基于尺度不变幂欧几里德度量的一系列各向异性度量,这些度量对于可视化很有用。推导了这些措施的一些特性,并结合一些实例讨论了实际考虑。其次,我们讨论了用于扩散张量成像插值和平滑的加权Procrustes方法,并在一组示例以及分析方法上比较了基于不同度量的方法。我们在对称正半定张量的空间上建立了主平方根欧几里得度量与大小形状Procrustes度量之间的关键关系。我们通过分析和实验均解释了为什么在插值,外推和平滑的实际任务中首选大小形状Procrustes度量标准,尤其是在观察到的张量退化或需要中等程度的张量膨胀时更是如此。第三,我们介绍了正则化方法论,该方法论被证明对于突出显示先前感兴趣的特征和潜在地进行细分有用。最后,我们在人脑扩散加权磁共振成像数据集中比较了几个指标,并指出了一些非欧几里得指标之间的相似之处,但与常用的欧几里得指标之间存在重要差异。

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