Department of Biomedical Engineering, University of Virginia, Charlottesville, VA, USA.
Department of Biomedical Engineering, University of Virginia, Charlottesville, VA, USA.
Magn Reson Imaging. 2021 Jul;80:106-112. doi: 10.1016/j.mri.2021.04.016. Epub 2021 May 3.
To develop a real-time dynamic vocal tract imaging method using an accelerated spiral GRE sequence and low rank plus sparse reconstruction.
Spiral k-space sampling has high data acquisition efficiency and thus is suited for real-time dynamic imaging; further acceleration can be achieved by undersampling k-space and using a model-based reconstruction. Low rank plus sparse reconstruction is a promising method with fast computation and increased robustness to global signal changes and bulk motion, as the images are decomposed into low rank and sparse terms representing different dynamic components. However, the combination with spiral scanning has not been well studied. In this study an accelerated spiral GRE sequence was developed with an optimized low rank plus sparse reconstruction and compared with L1-SPIRiT and XD-GRASP methods. The off-resonance was also corrected using a Chebyshev approximation method to reduce blurring on a frame-by-frame basis.
The low rank plus sparse reconstruction method is sensitive to the weights of the low rank and sparse terms. The optimized reconstruction showed advantages over other methods with reduced aliasing and improved SNR. With the proposed method, spatial resolution of 1.3*1.3 mm with 150 mm field-of-view (FOV) and temporal resolution of 30 frames-per-second (fps) was achieved with good image quality. Blurring was reduced using the Chebyshev approximation method.
This work studies low rank plus sparse reconstruction using the spiral trajectory and demonstrates a new method for dynamic vocal tract imaging which can benefit studies of speech disorders.
开发一种使用加速螺旋 GRE 序列和低秩稀疏重建的实时动态声道成像方法。
螺旋 k 空间采样具有高效的数据采集效率,因此适用于实时动态成像;通过欠采样 k 空间并使用基于模型的重建可以进一步加速。低秩稀疏重建是一种很有前途的方法,具有快速计算和增加对全局信号变化和整体运动的鲁棒性,因为图像被分解为表示不同动态成分的低秩和稀疏项。然而,这种方法与螺旋扫描的结合尚未得到很好的研究。在这项研究中,开发了一种带有优化的低秩稀疏重建的加速螺旋 GRE 序列,并与 L1-SPIRiT 和 XD-GRASP 方法进行了比较。还使用切比雪夫逼近方法校正离频,以逐帧减少模糊。
低秩稀疏重建方法对低秩和稀疏项的权重敏感。优化后的重建方法在减少伪影和提高 SNR 方面优于其他方法。使用所提出的方法,在 150mm 视野和 30 帧/秒的时间分辨率下,实现了 1.3*1.3mm 的空间分辨率,具有良好的图像质量。使用切比雪夫逼近方法减少了模糊。
这项工作研究了螺旋轨迹上的低秩稀疏重建,并展示了一种用于动态声道成像的新方法,这将有益于语音障碍的研究。