IEEE Trans Med Imaging. 2021 Aug;40(8):2170-2181. doi: 10.1109/TMI.2021.3073381. Epub 2021 Jul 30.
Cine cardiac magnetic resonance imaging (MRI) is widely used for the diagnosis of cardiac diseases thanks to its ability to present cardiovascular features in excellent contrast. As compared to computed tomography (CT), MRI, however, requires a long scan time, which inevitably induces motion artifacts and causes patients' discomfort. Thus, there has been a strong clinical motivation to develop techniques to reduce both the scan time and motion artifacts. Given its successful applications in other medical imaging tasks such as MRI super-resolution and CT metal artifact reduction, deep learning is a promising approach for cardiac MRI motion artifact reduction. In this paper, we propose a novel recurrent generative adversarial network model for cardiac MRI motion artifact reduction. This model utilizes bi-directional convolutional long short-term memory (ConvLSTM) and multi-scale convolutions to improve the performance of the proposed network, in which bi-directional ConvLSTMs handle long-range temporal features while multi-scale convolutions gather both local and global features. We demonstrate a decent generalizability of the proposed method thanks to the novel architecture of our deep network that captures the essential relationship of cardiovascular dynamics. Indeed, our extensive experiments show that our method achieves better image quality for cine cardiac MRI images than existing state-of-the-art methods. In addition, our method can generate reliable missing intermediate frames based on their adjacent frames, improving the temporal resolution of cine cardiac MRI sequences.
心脏磁共振电影成像(cine cardiac magnetic resonance imaging,cine-CMR)因其能够出色地呈现心血管特征而被广泛用于心脏病的诊断。然而,与计算机断层扫描(computed tomography,CT)相比,MRI 扫描时间较长,不可避免地会引起运动伪影并导致患者不适。因此,临床强烈需要开发技术来减少扫描时间和运动伪影。鉴于深度学习在 MRI 超分辨率和 CT 金属伪影减少等其他医学成像任务中的成功应用,它是一种有前途的心脏 MRI 运动伪影减少方法。在本文中,我们提出了一种用于心脏 MRI 运动伪影减少的新型递归生成对抗网络模型。该模型利用双向卷积长短期记忆(convolutional long short-term memory,ConvLSTM)和多尺度卷积来提高所提出网络的性能,其中双向 ConvLSTM 处理远程时间特征,而多尺度卷积则收集局部和全局特征。由于我们的深度网络的新颖架构捕捉到了心血管动力学的基本关系,因此我们的方法表现出了相当好的泛化能力。实际上,我们的广泛实验表明,与现有最先进的方法相比,我们的方法可以为 cine-CMR 图像提供更好的图像质量。此外,我们的方法可以基于相邻帧生成可靠的缺失中间帧,从而提高 cine-CMR 序列的时间分辨率。