IEEE Trans Med Imaging. 2018 Oct;37(10):2333-2343. doi: 10.1109/TMI.2018.2831442. Epub 2018 Apr 30.
Navigated 2-D multi-slice dynamic magnetic resonance imaging (MRI) acquisitions are essential for MR guided therapies. This technique yields time-resolved volumetric images during free-breathing, which are ideal for visualizing and quantifying breathing induced motion. To achieve this, navigated dynamic imaging requires acquiring multiple navigator slices. Reducing the number of navigator slices would allow for acquiring more data slices in the same time, and hence, increasing through-plane resolution or alternatively the overall acquisition time can be reduced while keeping resolution unchanged. To this end, we propose temporal interpolation of navigator slices using convolutional neural networks (CNNs). Our goal is to acquire fewer navigators and replace the missing ones with interpolation. We evaluate the proposed method on abdominal navigated dynamic MRI sequences acquired from 14 subjects. Investigations with several CNN architectures and training loss functions show favorable results for cost and a simple feed-forward network with no skip connections. When compared with interpolation by non-linear registration, the proposed method achieves higher interpolation accuracy on average as quantified in terms of root mean square error and residual motion. Analysis of the differences shows that the better performance is due to more accurate interpolation at peak exhalation and inhalation positions. Furthermore, the CNN-based approach requires substantially lower execution times than that of the registration-based method. At last, experiments on dynamic volume reconstruction reveal minimal differences between reconstructions with acquired and interpolated navigator slices.
导航二维多层动态磁共振成像(MRI)采集对于磁共振引导治疗至关重要。这项技术在自由呼吸期间提供时间分辨的容积图像,非常适合可视化和量化呼吸运动。为了实现这一点,导航动态成像需要采集多个导航切片。减少导航切片的数量可以在相同的时间内采集更多的数据切片,从而提高平面内分辨率,或者在保持分辨率不变的情况下减少整体采集时间。为此,我们提出了使用卷积神经网络(CNN)对导航切片进行时间插值。我们的目标是采集更少的导航器并使用插值来替代缺失的导航器。我们在 14 名受试者的腹部导航动态 MRI 序列上评估了所提出的方法。对几种 CNN 架构和训练损失函数的研究表明,对于成本和具有无跳过连接的简单前馈网络,该方法具有有利的结果。与非线性配准的插值相比,所提出的方法在均方根误差和残余运动方面的插值精度更高。差异分析表明,更好的性能是由于在呼气和吸气峰值位置的更准确插值。此外,基于 CNN 的方法的执行时间明显低于基于配准的方法。最后,在动态容积重建实验中,发现使用采集的和插值的导航器切片进行重建之间几乎没有差异。