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An Evaluation of Regularization Strategies for Subsampled Single-Shell Diffusion MRI

机译:次采样单壳扩散MRI正则化策略的评估

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Conventional single-shell diffusion MRI experiments acquire sampled values of the diffusion signal from the surface of a sphere in q-space. However, to reduce data acquisition time, there has been recent interest in using regularization to enable q-space undersampling. Although different regularization strategies have been proposed for this purpose (i.e., sparsity-promoting of the spherical ridgelet representation and Laplace-Beltrami Tikhonov regularization), there has not been a systematic evaluation of the strengths, weaknesses, and potential synergies of the different regularizers. In this work, we use real diffusion MRI data to systematically evaluate the performance characteristics of these different approaches and determine whether one approach is fundamentally more powerful than the other. Results from retrospective subsampling experiments suggest that both regularization strategies offer largely similar reconstruction performance (though with different levels of computational complexity) with some degree of synergy (albeit, relatively minor).
机译:常规的单壳扩散MRI实验从q空间中的球体表面获取扩散信号的采样值。然而,为了减少数据采集时间,最近对使用正则化来实现q空间欠采样感兴趣。尽管为此目的已提出了不同的正则化策略(即,球形脊突表示的稀疏度提升和Laplace-Beltrami Tikhonov正则化),但尚未对不同正则化器的优缺点,潜在协同作用进行系统评估。在这项工作中,我们使用真实的扩散MRI数据来系统地评估这些不同方法的性能特征,并确定一种方法在根本上是否比另一种方法更强大。回顾性二次抽样实验的结果表明,两种正则化策略都可提供大致相似的重建性能(尽管计算复杂度不同),并且具有一定程度的协同作用(尽管相对较小)。

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