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Equivariant Spherical Deconvolution: Learning Sparse Orientation Distribution Functions from Spherical Data

机译:等分意大阵球面解卷:从球面数据学习稀疏定向分布函数

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We present a rotation-equivariant self-supervised learning framework for the sparse deconvolution of non-negative scalar fields on the unit sphere. Spherical signals with multiple peaks naturally arise in Diffusion MRI (dMRI), where each voxel consists of one or more signal sources corresponding to anisotropic tissue structure such as white matter. Due to spatial and spectral partial voluming, clinically-feasible dMRI struggles to resolve crossing-fiber white matter configurations, leading to extensive development in spherical deconvolution methodology to recover underlying fiber directions. However, these methods are typically linear and struggle with small crossing-angles and partial volume fraction estimation. In this work, we improve on current methodologies by nonlin-early estimating fiber structures via self-supervised spherical convolu-tional networks with guaranteed equivariance to spherical rotation. We perform validation via extensive single and multi-shell synthetic benchmarks demonstrating competitive performance against common baselines. We further show improved downstream performance on fiber trac-tography measures on the Tractometer benchmark dataset. Finally, we show downstream improvements in terms of tractography and partial volume estimation on a multi-shell dataset of human subjects.
机译:我们为单位球体上的非负标量字段的稀疏碎片呈旋转的自我监督学习框架。具有多个峰的球形信号在扩散MRI(DMRI)中天然存在,其中每个体素由对应于各向异性组织结构的一个或多个信号源组成,例如白物。由于空间和光谱部分卷,临床可行的DMRI努力解决交叉纤维白质配置,导致球形解构方法中的广泛发展,以恢复底层纤维方向。然而,这些方法通常是线性的,并且具有小的交叉角和部分体积分数估计的斗争。在这项工作中,我们通过自我监督的球面卷积网络通过自我监督的球形卷积网络来改进目前的方法,其具有保证的标准率为球形旋转。我们通过广泛的单壳和多壳合成基准进行验证,证明对普通基线的竞争性能。我们进一步展示了拖动仪基准数据集上的光纤跟踪措施的下游性能。最后,我们在人类受试者的多壳数据集上显示了牵引和部分体积估计的下游改进。

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