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Improved tractography using asymmetric fibre orientation distributions

机译:使用不对称纤维取向分布改进的牵引

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摘要

Abstract Diffusion MRI allows us to make inferences on the structural organisation of the brain by mapping water diffusion to white matter microstructure. However, such a mapping is generally ill-defined; for instance, diffusion measurements are antipodally symmetric (diffusion along x and – x are equal), whereas the distribution of fibre orientations within a voxel is generally not symmetric. Therefore, different sub-voxel patterns such as crossing, fanning, or sharp bending, cannot be distinguished by fitting a voxel-wise model to the signal. However, asymmetric fibre patterns can potentially be distinguished once spatial information from neighbouring voxels is taken into account. We propose a neighbourhood-constrained spherical deconvolution approach that is capable of inferring asymmetric fibre orientation distributions (A-fods). Importantly, we further design and implement a tractography algorithm that utilises the estimated A-fods, since the commonly used streamline tractography paradigm cannot directly take advantage of the new information. We assess performance using ultra-high resolution histology data where we can compare true orientation distributions against sub-voxel fibre patterns estimated from down-sampled data. Finally, we explore the benefits of A-fods-based tractography using in vivo data by evaluating agreement of tractography predictions with connectivity estimates made using different in-vivo modalities. The proposed approach can reliably estimate complex fibre patterns such as sharp bending and fanning, which voxel-wise approaches cannot estimate. Moreover, histology-based and in-vivo results show that the new framework allows more accurate tractography and reconstruction of maps quantifying (symmetric and asymmetric) fibre complexity. Highlights ? A new comprehensive framework for both asymmetric fod estimation and tractography. ? Extension of classical CSD approaches applicable to single and multi-shell data. ? Validation using anatomically relevant fibre patterns derived from histology. ? Correct reconstruction of sub-voxel fanning polarities and sharp bends.
机译:摘要扩散MRI允许我们通过将水扩散映射到白质微结构来对大脑的结构组织进行推断。但是,这种映射通常是不明显的;例如,扩散测量是双倍对称的(沿x和-x的扩散相等),而体素内的纤维取向的分布通常不对称。因此,通过将体素-WISE模型拟合到信号,不能区分诸如交叉,扇动或急剧弯曲的不同的子体素图案。然而,一旦考虑来自相邻体素的空间信息,就可以区分不对称光纤图案。我们提出了一种邻域约束的球形解卷积方法,其能够推断不对称纤维取向分布(A-FOD)。重要的是,我们进一步设计和实施利用估计的a-fod的牵引算法,因为常用的流线牵引范例不能直接利用新信息。我们使用超高分辨率组织学数据评估性能,在那里我们可以比较来自从下采样数据估计的子体素光纤模式的真实方向分布。最后,我们通过使用不同的体内模式进行的连接估计评估牵引预测的协议来探讨基于FODS的牵引的牵引使用。所提出的方法可以可靠地估计复杂的纤维图案,例如尖锐的弯曲和扇形,Voxel-Wise方法不能估计。此外,基于组织学和体内结果表明,新框架允许更准确的牵引和地图的重建量化(对称和不对称)光纤复杂度。强调 ?非对称FOD估计和牵引的新综合框架。还是适用于单壳和多壳数据的经典CSD方法的扩展。还是使用从组织学中源自源自组织学的解剖学相关光纤模式验证。还是正确的重建扇动极性和尖锐的弯曲。

著录项

  • 来源
    《NeuroImage》 |2017年第2017期|共14页
  • 作者单位

    Wellcome Centre for Integrative Neuroscience (WIN) - Oxford Centre for Functional Magnetic;

    Wellcome Centre for Integrative Neuroscience (WIN) - Oxford Centre for Functional Magnetic;

    Department of Neuroscience Washington University;

    Department of Computer Science &

    Centre for Medical Image Computing University College London;

    Department of Computer Science &

    Centre for Medical Image Computing University College London;

    Department of Computer Science &

    Centre for Medical Image Computing University College London;

    Wellcome Centre for Integrative Neuroscience (WIN) - Oxford Centre for Functional Magnetic;

    Wellcome Centre for Integrative Neuroscience (WIN) - Oxford Centre for Functional Magnetic;

    Wellcome Centre for Integrative Neuroscience (WIN) - Oxford Centre for Functional Magnetic;

  • 收录信息
  • 原文格式 PDF
  • 正文语种 eng
  • 中图分类 诊断学;
  • 关键词

    Diffusion MRI; Tractography; Structural connectivity; Asymmetry; Connectome;

    机译:扩散MRI;牵引;结构连通性;不对称;连接;

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