论文标题

前瞻性加速动态语音MRI在3 Tesla处使用基于螺旋的歧管正则方案

Prospectively accelerated dynamic speech MRI at 3 Tesla using a self-navigated spiral based manifold regularized scheme

论文作者

Rusho, Rushdi Zahid, Ahmed, Abdul Haseeb, Kruger, Stanley, Alam, Wahidul, Meyer, David, Howard, David, Story, Brad, Jacob, Mathews, Lingala, Sajan Goud

论文摘要

这项工作提出了一个基于自由的可变密度螺旋(VDS)歧管正则化方案,以前瞻性地改善3T的动态语音MRI。简短的读数1.3ms螺旋用于最大程度地减少异质。定制的16通道语音线圈用于改进声带的平行成像。歧管模型利用框架之间的相似性共享相似的语音姿势,而无需明确的运动箱。 VD的自我宣传能力被利用来学习歧管的拉普拉斯矩阵。重建是一种基于感官的非本地软加权时间正则化方案。将我们的方法与观看共享,低级别,有限差,基于差异的稀疏性重建约束进行了比较。对五名以不同的口语率执行重复和任意说话任务的志愿者进行了不足的采样实验。在回顾性不足的数据中,对移动边缘上的均方误差进行了定量评估。对于潜在的不足,盲目的图像质量评估,是由三位语音研究专家进行的别名伪像,空间模糊和时间模糊的类别。进行了关注区域的分析,以评估关节运动。我们的计划提供了改进的重建,而不是其他计划。通过前瞻性下采样,单个切片成像的空间分辨率为2.4mm2/Pixel和17.4 ms/帧的时间分辨率,以及用于3板板成像的52.2 ms/框架。我们通过分析拉普拉斯矩阵的力学来证明隐式运动箱。我们的方法证明了减少空间和时间模糊的卓越图像质量得分。虽然它表现出类似于时间有限差异的微弱的别名伪像,但它在剩余约束方面提供了统计学上的显着改善。

This work proposes a self-navigated variable density spiral(VDS) based manifold regularization scheme to prospectively improve dynamic speech MRI at 3T. Short readout 1.3ms spirals were used to minimize off-resonance. A custom 16-channel speech coil was used for improved parallel imaging of vocal tract. The manifold model leveraged similarities between frames sharing similar speech postures without explicit motion binning. The self-navigating capability of VDS was leveraged to learn the Laplacian matrix of the manifold. Reconstruction was posed as a SENSE-based non-local soft weighted temporal regularization scheme. Our approach was compared against view-sharing, low-rank, finite difference, extra-dimension-based sparsity reconstruction constraints. Under-sampling 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 were performed in a retrospectively under-sampled data. For prospective under-sampling, blinded image quality evaluation in the categories of alias artifacts, spatial blurring, and temporal blurring were performed by three voice research experts. Region of interest analysis at articulator boundaries were performed to assess articulatory motion. Our scheme provided improved reconstruction over the others. With prospective under-sampling, a spatial resolution of 2.4mm2/pixel and a temporal resolution of 17.4 ms/frame for single slice imaging, and 52.2 ms/frame for 3-slice imaging were achieved. We demonstrated implicit motion binning by analyzing the mechanics of the Laplacian matrix. Our method demonstrated superior image quality scores in reducing spatial and temporal blurring. While it exhibited faint alias artifacts similar to temporal finite-difference, it provided statistically significant improvements over remaining constraints.

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