Huang Feng, Akao James, Vijayakumar Sathya, Duensing George R, Limkeman Mark
Research and Predevelopment, Invivo Corporation, Gainesville, FL 32608, USA.
Magn Reson Med. 2005 Nov;54(5):1172-84. doi: 10.1002/mrm.20641.
A novel technique called "k-t GRAPPA" is introduced for the acceleration of dynamic magnetic resonance imaging. Dynamic magnetic resonance images have significant signal correlations in k-space and time dimension. Hence, it is feasible to acquire only a reduced amount of data and recover the missing portion afterward. Generalized autocalibrating partially parallel acquisitions (GRAPPA), as an important parallel imaging technique, linearly interpolates the missing data in k-space. In this work, it is shown that the idea of GRAPPA can also be applied in k-t space to take advantage of the correlations and interpolate the missing data in k-t space. For this method, no training data, filters, additional parameters, or sensitivity maps are necessary, and it is applicable for either single or multiple receiver coils. The signal correlation is locally derived from the acquired data. In this work, the k-t GRAPPA technique is compared with our implementation of GRAPPA, TGRAPPA, and sliding window reconstructions, as described in Methods. The experimental results manifest that k-t GRAPPA generates high spatial resolution reconstruction without significant loss of temporal resolution when the reduction factor is as high as 4. When the reduction factor becomes higher, there might be a noticeable loss of temporal resolution since k-t GRAPPA uses temporal interpolation. Images reconstructed using k-t GRAPPA have less residue/folding artifacts than those reconstructed by sliding window, much less noise than those reconstructed by GRAPPA, and wider temporal bandwidth than those reconstructed by GRAPPA with residual k-space. k-t GRAPPA is applicable to a wide range of dynamic imaging applications and is not limited to imaging parts with quasi-periodic motion. Since only local information is used for reconstruction, k-t GRAPPA is also preferred for applications requiring real time reconstruction, such as monitoring interventional MRI.
一种名为“k-t GRAPPA”的新技术被引入用于加速动态磁共振成像。动态磁共振图像在k空间和时间维度上具有显著的信号相关性。因此,仅采集减少量的数据并随后恢复缺失部分是可行的。广义自校准部分并行采集(GRAPPA)作为一种重要的并行成像技术,在k空间中对缺失数据进行线性插值。在这项工作中,表明GRAPPA的思想也可以应用于k-t空间,以利用相关性并在k-t空间中对缺失数据进行插值。对于该方法,不需要训练数据、滤波器、额外参数或灵敏度图,并且适用于单接收器线圈或多接收器线圈。信号相关性从采集的数据中局部导出。在这项工作中,将k-t GRAPPA技术与我们实现的GRAPPA、TGRAPPA以及滑动窗口重建进行了比较,如方法部分所述。实验结果表明,当加速因子高达4时,k-t GRAPPA能够生成高空间分辨率的重建图像,而不会显著损失时间分辨率。当加速因子变得更高时,由于k-t GRAPPA使用时间插值,可能会有明显的时间分辨率损失。使用k-t GRAPPA重建的图像比使用滑动窗口重建的图像具有更少的残余/折叠伪影,比使用GRAPPA重建的图像具有更少的噪声,并且比使用具有残余k空间的GRAPPA重建的图像具有更宽的时间带宽。k-t GRAPPA适用于广泛的动态成像应用,不限于具有准周期运动的成像部位。由于仅使用局部信息进行重建,k-t GRAPPA也更适合需要实时重建的应用,例如监测介入性磁共振成像。