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A Bayes Hilbert Space for Compartment Model Computing in Diffusion MRI

机译:弥散MRI室模型计算的贝叶斯希尔伯特空间。

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The single diffusion tensor model for mapping the brain white matter microstructure has long been criticized as providing sensitive yet non-specific clinical biomarkers for neurodegenerative diseases because (ⅰ) voxels in diffusion images actually contain more than one homogeneous tissue population and (ⅱ) diffusion in a single homogeneous tissue can be non-Gaussian. Analytic models for compartmental diffusion signals have thus naturally emerged but there is surprisingly little for processing such images (estimation, smoothing, registration, atlasing, statistical analysis). We propose to embed these signals into a Bayes Hilbert space that we properly define and motivate. This provides a unified framework for compartment diffusion image computing. Experiments show that (ⅰ) interpolation in Bayes space features improved robustness to noise compared to the widely used log-Euclidean space for tensors and (ⅱ) it is possible to trace complex key pathways such as the pyramidal tract using basic deterministic tractography thanks to the combined use of Bayes interpolation and multi-compartment diffusion models.
机译:长期以来,一直有人批评用单一扩散张量模型绘制大脑白质微结构,因为它为神经退行性疾病提供了敏感但非特异性的临床生物标记,因为扩散图像中的(ⅰ)体素实际上包含多个同质组织种群,并且单个同质组织可以是非高斯的。隔室扩散信号的分析模型自然而然地出现了,但是令人惊讶的是几乎没有用于处理此类图像的方法(估计,平滑,配准,图集,统计分析)。我们建议将这些信号嵌入到我们正确定义和激发的贝叶斯希尔伯特空间中。这提供了用于隔室扩散图像计算的统一框架。实验表明,与广泛使用的对数张量的欧几里得空间相比,(ⅰ)贝叶斯空间中的插值功能提高了噪声的鲁棒性,并且(ⅱ)由于使用了基本的确定性谱图,因此可以追踪复杂的关键路径,例如金字塔形路径贝叶斯插值和多隔室扩散模型的结合使用。

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