Roy J. Carver Department of Biomedical Engineering, University of Iowa, Iowa City, Iowa, USA.
Department of Electrical and Computer Engineering, University of Iowa, Iowa City, Iowa, USA.
NMR Biomed. 2024 Aug;37(8):e5135. doi: 10.1002/nbm.5135. Epub 2024 Mar 5.
This work develops and evaluates a self-navigated variable density spiral (VDS)-based manifold regularization scheme to prospectively improve dynamic speech magnetic resonance imaging (MRI) at 3 T. Short readout duration spirals (1.3-ms long) were used to minimize sensitivity to off-resonance. A custom 16-channel speech coil was used for improved parallel imaging of vocal tract structures. The manifold model leveraged similarities between frames sharing similar vocal tract postures without explicit motion binning. The self-navigating capability of VDS was leveraged to learn the Laplacian structure of the manifold. Reconstruction was posed as a sensitivity-encoding-based nonlocal soft-weighted temporal regularization scheme. Our approach was compared with view-sharing, low-rank, temporal finite difference, extra dimension-based sparsity reconstruction constraints. Undersampling experiments were conducted on five volunteers performing repetitive and arbitrary speaking tasks at different speaking rates. Quantitative evaluation in terms of mean square error over moving edges was performed in a retrospective undersampling experiment on one volunteer. For prospective undersampling, blinded image quality evaluation in the categories of alias artifacts, spatial blurring, and temporal blurring was performed by three experts in voice research. Region of interest analysis at articulator boundaries was performed in both experiments to assess articulatory motion. Improved performance with manifold reconstruction constraints was observed over existing constraints. With prospective undersampling, a spatial resolution of 2.4 × 2.4 mm/pixel and a temporal resolution of 17.4 ms/frame for single-slice imaging, and 52.2 ms/frame for concurrent three-slice imaging, were achieved. We demonstrated implicit motion binning by analyzing the mechanics of the Laplacian matrix. Manifold regularization demonstrated superior image quality scores in reducing spatial and temporal blurring compared with all other reconstruction constraints. While it exhibited faint (nonsignificant) alias artifacts that were similar to temporal finite difference, it provided statistically significant improvements compared with the other constraints. In conclusion, the self-navigated manifold regularized scheme enabled robust high spatiotemporal resolution dynamic speech MRI at 3 T.
这项工作开发并评估了一种基于自导航可变密度螺旋(VDS)的流形正则化方案,旨在前瞻性地改善 3T 下的动态语音磁共振成像(MRI)。使用短读取时长螺旋(1.3ms 长)以最小化对离频的敏感性。使用定制的 16 通道语音线圈改善了声道结构的并行成像。流形模型利用了具有相似声道姿势的帧之间的相似性,而无需显式的运动分箱。VDS 的自导航能力被用于学习流形的拉普拉斯结构。重建被表述为基于灵敏度编码的非局部软加权时间正则化方案。我们的方法与视图共享、低秩、时间有限差分、额外维度稀疏重建约束进行了比较。在五名志愿者进行重复和任意说话任务的不同说话率的欠采样实验中进行了欠采样实验。在一名志愿者的回顾性欠采样实验中,通过移动边缘上的均方误差进行了定量评估。对于前瞻性欠采样,三位语音研究专家对伪影、空间模糊和时间模糊等类别进行了盲目的图像质量评估。在两项实验中,在关节器边界进行了感兴趣区域分析,以评估关节运动。与现有的约束条件相比,使用流形重建约束可以观察到更好的性能。在前瞻性欠采样下,单次切片成像的空间分辨率为 2.4×2.4mm/pixel,时间分辨率为 17.4ms/帧,同时进行三切片成像的时间分辨率为 52.2ms/帧。通过分析拉普拉斯矩阵的力学,我们证明了隐式运动分箱。与所有其他重建约束相比,流形正则化在减少空间和时间模糊方面表现出更好的图像质量得分。虽然它表现出微弱(无统计学意义)的伪影,类似于时间有限差分,但与其他约束相比,它提供了统计学上的显著改善。总之,自导航流形正则化方案能够在 3T 下实现稳健的高时空分辨率动态语音 MRI。