IEEE Trans Med Imaging. 2019 Jul;38(7):1701-1714. doi: 10.1109/TMI.2019.2892378. Epub 2019 Jan 14.
A central limitation of multiple-acquisition magnetic resonance imaging (MRI) is the degradation in scan efficiency as the number of distinct datasets grows. Sparse recovery techniques can alleviate this limitation via randomly undersampled acquisitions. A frequent sampling strategy is to prescribe for each acquisition a different random pattern drawn from a common sampling density. However, naive random patterns often contain gaps or clusters across the acquisition dimension that, in turn, can degrade reconstruction quality or reduce scan efficiency. To address this problem, a statistically segregated sampling method is proposed for multiple-acquisition MRI. This method generates multiple patterns sequentially while adaptively modifying the sampling density to minimize k-space overlap across patterns. As a result, it improves incoherence across acquisitions while still maintaining similar sampling density across the radial dimension of k-space. Comprehensive simulations and in vivo results are presented for phase-cycled balanced steady-state free precession and multi-echo [Formula: see text]-weighted imaging. Segregated sampling achieves significantly improved quality in both Fourier and compressed-sensing reconstructions of multiple-acquisition datasets.
多采集磁共振成像(MRI)的一个主要局限性是,随着数据集数量的增加,扫描效率会降低。稀疏恢复技术可以通过随机欠采样采集来缓解这一限制。一种常见的采样策略是为每个采集指定一个从公共采样密度中提取的不同随机模式。然而,简单的随机模式通常在采集维度上包含间隙或簇,这反过来又会降低重建质量或降低扫描效率。为了解决这个问题,提出了一种用于多采集 MRI 的统计分离采样方法。该方法在顺序生成多个模式的同时,自适应地修改采样密度,以最小化模式之间的 k 空间重叠。因此,它提高了采集之间的不相关性,同时仍然保持 k 空间径向维度上相似的采样密度。针对相控平衡稳态自由进动和多回波[公式:见文本]-加权成像进行了全面的模拟和体内实验。分离采样在多采集数据集的傅里叶和压缩感知重建中都显著提高了质量。