Craft D Levi, Sonstrom Reilly E, Rovnyak Virginia G, Rovnyak David
Department of Chemistry, Bucknell University, Lewisburg, PA 17837, United States.
University of Virginia School of Nursing, Charlottesville, VA 22908, United States.
J Magn Reson. 2018 Mar;288:109-121. doi: 10.1016/j.jmr.2018.01.014. Epub 2018 Feb 13.
A flexible strategy for choosing samples nonuniformly from a Nyquist grid using the concept of statistical quantiles is presented for broad classes of NMR experimentation. Quantile-directed scheduling is intuitive and flexible for any weighting function, promotes reproducibility and seed independence, and is generalizable to multiple dimensions. In brief, weighting functions are divided into regions of equal probability, which define the samples to be acquired. Quantile scheduling therefore achieves close adherence to a probability distribution function, thereby minimizing gaps for any given degree of subsampling of the Nyquist grid. A characteristic of quantile scheduling is that one-dimensional, weighted NUS schedules are deterministic, however higher dimensional schedules are similar within a user-specified jittering parameter. To develop unweighted sampling, we investigated the minimum jitter needed to disrupt subharmonic tracts, and show that this criterion can be met in many cases by jittering within 25-50% of the subharmonic gap. For nD-NUS, three supplemental components to choosing samples by quantiles are proposed in this work: (i) forcing the corner samples to ensure sampling to specified maximum values in indirect evolution times, (ii) providing an option to triangular backfill sampling schedules to promote dense/uniform tracts at the beginning of signal evolution periods, and (iii) providing an option to force the edges of nD-NUS schedules to be identical to the 1D quantiles. Quantile-directed scheduling meets the diverse needs of current NUS experimentation, but can also be used for future NUS implementations such as off-grid NUS and more. A computer program implementing these principles (a.k.a. QSched) in 1D- and 2D-NUS is available under the general public license.
针对广泛的核磁共振实验类别,提出了一种使用统计分位数概念从奈奎斯特网格中不均匀地选择样本的灵活策略。分位数导向调度对于任何加权函数而言直观且灵活,可提高可重复性和种子独立性,并且可推广到多维。简而言之,加权函数被划分为等概率区域,这些区域定义了要采集的样本。因此,分位数调度能够紧密遵循概率分布函数,从而在对奈奎斯特网格进行任何给定程度的欠采样时将间隙最小化。分位数调度的一个特点是,一维加权非均匀采样(NUS)调度是确定性的,然而在用户指定的抖动参数范围内,更高维的调度是相似的。为了开发无加权采样,我们研究了破坏次谐波轨迹所需的最小抖动,并表明在许多情况下,通过在次谐波间隙的25% - 50%范围内进行抖动可以满足此标准。对于n维非均匀采样(nD - NUS),本文提出了三种通过分位数选择样本的补充组件:(i)强制采集角点样本以确保在间接演化时间内采样到指定的最大值,(ii)提供对三角形回填采样调度的选项,以在信号演化周期开始时促进密集/均匀轨迹,以及(iii)提供强制nD - NUS调度的边缘与一维分位数相同的选项。分位数导向调度满足了当前非均匀采样实验的各种需求,但也可用于未来的非均匀采样实现,如离网格非均匀采样等。一个在一维和二维非均匀采样中实现这些原理的计算机程序(即QSched)可在通用公共许可证下获取。