论文标题
学习Bloch方程模拟的游戏MR指纹模拟
Game of Learning Bloch Equation Simulations for MR Fingerprinting
论文作者
论文摘要
目的:这项工作提出了一种新的方法,可以有效地基于无监督的深度学习模型生成的对抗网络(GAN)生成MR指纹(MRF)问题的MR指纹。方法:采用并修改了GAN模型以更好地收敛和性能,从而导致了一个名为GAN-MRF的MRF特定模型。使用具有某些MRF序列的BLOCH方程模拟的不同MRF指纹训练,验证和测试GAN-MRF模型。通过使用来自健康志愿者的3特斯拉扫描仪上收集的体内数据以及不同尺寸的MRF词典,进一步测试了模型的性能和鲁棒性。 T1,T2地图是生成并定量比较的。结果:GAN-MRF模型的验证和测试曲线没有显示高偏差或高方差问题的证据。由训练有素的GAN-MRF模型产生的样品MRF指纹与Bloch方程模拟的基准指纹非常吻合。体内T1,由GAN-MRF指纹生成的T2地图与Bloch模拟指纹生成的指纹非常吻合,显示出拟议的GAN-MRF模型的良好性能和鲁棒性。此外,对于测试词典,MRF字典的生成时间从小时减少到亚秒。结论:GAN-MRF模型可以快速准确地生成MRF指纹。它大大减少了MRF字典生成过程,并为实时应用和序列优化问题打开了大门。
Purpose: This work proposes a novel approach to efficiently generate MR fingerprints for MR fingerprinting (MRF) problems based on the unsupervised deep learning model generative adversarial networks (GAN). Methods: The GAN model is adopted and modified for better convergence and performance, resulting in an MRF specific model named GAN-MRF. The GAN-MRF model is trained, validated, and tested using different MRF fingerprints simulated from the Bloch equations with certain MRF sequence. The performance and robustness of the model are further tested by using in vivo data collected on a 3 Tesla scanner from a healthy volunteer together with MRF dictionaries with different sizes. T1, T2 maps are generated and compared quantitatively. Results: The validation and testing curves for the GAN-MRF model show no evidence of high bias or high variance problems. The sample MRF fingerprints generated from the trained GAN-MRF model agree well with the benchmark fingerprints simulated from the Bloch equations. The in vivo T1, T2 maps generated from the GAN-MRF fingerprints are in good agreement with those generated from the Bloch simulated fingerprints, showing good performance and robustness of the proposed GAN-MRF model. Moreover, the MRF dictionary generation time is reduced from hours to sub-second for the testing dictionary. Conclusion: The GAN-MRF model enables a fast and accurate generation of the MRF fingerprints. It significantly reduces the MRF dictionary generation process and opens the door for real-time applications and sequence optimization problems.