论文标题
基于深度学习的磁共振成像序列的高效BLOCH模拟
High-efficient Bloch simulation of magnetic resonance imaging sequences based on deep learning
论文作者
论文摘要
目的:BLOCH模拟构成磁共振成像(MRI)开发的重要组成部分。但是,即使有了图形处理单元(GPU)加速度,重型计算负载仍然是一个重大挑战,尤其是在大规模的高质量模拟方案中。这项工作旨在开发一个基于学习的模拟器来加速BLOCH模拟。方法:称为SIMU-NET的模拟器模型基于端到端卷积神经网络,并通过传统BLOCH模拟生成的合成数据进行了训练。它使用动态卷积将空间和物理信息与不同的维度融合在一起,并引入编码模板的位置以实现特定位置的标记并克服卷积网络的接受场限制。主要结果:与基于GPU的主流MRI模拟软件相比,SIMU-NET在传统和高级MRI脉冲序列中成功加速了数百次模拟。定性和定量验证了所提出框架的准确性和鲁棒性。此外,对经过训练的SIMU-NET应用于生成足够的定制培训样品,以进行深度学习的T2映射,并在人脑中获得了与常规方法可比的结果。意义:作为概念验证的工作,SIMU-NET显示了应用深度学习的潜力,以快速近似MRI的正向物理过程,并可能提高Bloch模拟的效率,以优化MRI脉冲序列和基于深度学习的方法。
Objective: Bloch simulation constitutes an essential part of magnetic resonance imaging (MRI) development. However, even with the graphics processing unit (GPU) acceleration, the heavy computational load remains a major challenge, especially in large-scale, high-accuracy simulation scenarios. This work aims to develop a deep learning-based simulator to accelerate Bloch simulation. Approach: The simulator model, called Simu-Net, is based on an end-to-end convolutional neural network and is trained with synthetic data generated by traditional Bloch simulation. It uses dynamic convolution to fuse spatial and physical information with different dimensions and introduces position encoding templates to achieve position-specific labeling and overcome the receptive field limitation of the convolutional network. Main Results: Compared with mainstream GPU-based MRI simulation software, Simu-Net successfully accelerates simulations by hundreds of times in both traditional and advanced MRI pulse sequences. The accuracy and robustness of the proposed framework were verified qualitatively and quantitatively. Besides, the trained Simu-Net was applied to generate sufficient customized training samples for deep learning-based T2 mapping and comparable results to conventional methods were obtained in the human brain. Significance: As a proof-of-concept work, Simu-Net shows the potential to apply deep learning for rapidly approximating the forward physical process of MRI and may increase the efficiency of Bloch simulation for optimization of MRI pulse sequences and deep learning-based methods.