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Kernel regression estimation of fiber orientation mixtures in diffusion MRI

机译:核磁共振成像中纤维取向混合物的核回归估计

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We present and evaluate a method for kernel regression estimation of fiber orientations and associated volume fractions for diffusion MR tractography and population-based atlas construction in clinical imaging studies of brain white matter. This is a model-based image processing technique in which representative fiber models are estimated from collections of component fiber models in model-valued image data. This extends prior work in nonparametric image processing and multi-compartment processing to provide computational tools for image interpolation, smoothing, and fusion with fiber orientation mixtures. In contrast to related work on multi-compartment processing, this approach is based on directional measures of divergence and includes data-adaptive extensions for model selection and bilateral filtering. This is useful for reconstructing complex anatomical features in clinical datasets analyzed with the ball-and-sticks model, and our framework's data-adaptive extensions are potentially useful for general multi-compartment image processing. We experimentally evaluate our approach with both synthetic data from computational phantoms and in vivo clinical data from human subjects. With synthetic data experiments, we evaluate performance based on errors in fiber orientation, volume fraction, compartment count, and tractography-based connectivity. With in vivo data experiments, we first show improved scan-rescan reproducibility and reliability of quantitative fiber bundle metrics, including mean length, volume, streamline count, and mean volume fraction. We then demonstrate the creation of a multifiber tractography atlas from a population of 80 human subjects. In comparison to single tensor atlasing, our multi-fiber atlas shows more complete features of known fiber bundles and includes reconstructions of the lateral projections of the corpus callosumand complex fronto-parietal connections of the superior longitudinal fasciculus I, II, and III. (C) 2015 Elsevier Inc. All rights reserved.
机译:我们提出并评估用于脑白质临床成像研究中的扩散MR成像和基于人口的图集构建的纤维方向和相关体积分数的核回归估计方法。这是一种基于模型的图像处理技术,其中从模型值图像数据中的组成纤维模型集合中估算出代表性的纤维模型。这扩展了非参数图像处理和多隔室处理中的现有工作,以提供用于图像插值,平滑和与纤维取向混合物融合的计算工具。与多室处理的相关工作相比,此方法基于发散的方向性度量,并且包括用于模型选择和双边过滤的数据自适应扩展。这对于在用球棒模型分析的临床数据集中重建复杂的解剖特征很有用,并且我们框架的数据自适应扩展可能对一般的多室图像处理很有用。我们用来自计算体模的合成数据和来自人类受试者的体内临床数据实验性地评估了我们的方法。通过合成数据实验,我们根据光纤方向,体积分数,隔室计数和基于束线术的连接性方面的误差评估性能。通过体内数据实验,我们首先显示定量纤维束指标(包括平均长度,体积,流线数和平均体积分数)的扫描-再扫描重现性和可靠性得到改善。然后,我们演示了从80位人类受试者的人群中创建多纤维束照相术地图集的过程。与单张量地图集相比,我们的多光纤地图集显示了已知纤维束的更完整特征,包括重建call体的侧向投影以及上,纵向束I,II和III的复杂的顶-顶壁连接。 (C)2015 Elsevier Inc.保留所有权利。

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