IEEE Trans Med Imaging. 2022 Nov;41(11):3167-3181. doi: 10.1109/TMI.2022.3179981. Epub 2022 Oct 27.
Use of synthetic data has provided a potential solution for addressing unavailable or insufficient training samples in deep learning-based magnetic resonance imaging (MRI). However, the challenge brought by domain gap between synthetic and real data is usually encountered, especially under complex experimental conditions. In this study, by combining Bloch simulation and general MRI models, we propose a framework for addressing the lack of training data in supervised learning scenarios, termed MOST-DL. A challenging application is demonstrated to verify the proposed framework and achieve motion-robust [Formula: see text] mapping using single-shot overlapping-echo acquisition. We decompose the process into two main steps: (1) calibrationless parallel reconstruction for ultra-fast pulse sequence and (2) intra-shot motion correction for [Formula: see text] mapping. To bridge the domain gap, realistic textures from a public database and various imperfection simulations were explored. The neural network was first trained with pure synthetic data and then evaluated with in vivo human brain. Both simulation and in vivo experiments show that the MOST-DL method significantly reduces ghosting and motion artifacts in [Formula: see text] maps in the presence of unpredictable subject movement and has the potential to be applied to motion-prone patients in the clinic. Our code is available at https://github.com/qinqinyang/MOST-DL.
使用合成数据为解决深度学习磁共振成像(MRI)中可用或不足的训练样本提供了一种潜在的解决方案。然而,在复杂的实验条件下,通常会遇到合成数据与真实数据之间的域差距带来的挑战。在这项研究中,我们通过结合布洛赫模拟和一般 MRI 模型,提出了一种在监督学习场景中解决训练数据不足的框架,称为 MOST-DL。通过使用单次重叠回波采集来演示具有挑战性的应用,以验证所提出的框架并实现运动稳健的[Formula: see text]映射。我们将该过程分解为两个主要步骤:(1)用于超快速脉冲序列的无校准并行重建;(2)用于[Formula: see text]映射的单次内运动校正。为了弥合域差距,我们探索了来自公共数据库的逼真纹理和各种不完美模拟。首先使用纯合成数据对神经网络进行训练,然后在体内人脑上进行评估。模拟和体内实验均表明,在存在不可预测的受试者运动的情况下,MOST-DL 方法可显著减少[Formula: see text]图中的重影和运动伪影,并且有可能应用于临床中易动的患者。我们的代码可在 https://github.com/qinqinyang/MOST-DL 上获得。