利用混合深度学习和迭代重建加速磁共振指纹识别

Peng Cao, D. Cui, Yanzhen Ming, V. Vardhanabhuti, Elaine Y P Lee, E. Hui
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引用次数: 1

摘要

一个深度学习模型。然后将训练好的模型应用于不同器官和疾病的磁共振成像。在深度学习模型之外进行迭代重建,允许可变编码矩阵,即灵活选择图像分辨率,射频线圈,k空间轨迹和欠采样掩模。在正常脑癌和前列腺癌志愿者身上进行了体内实验,以验证模型的性能和可推广性。结果:在400动态脑磁共振成像中,直接非均匀傅里叶变换导致T2图随机波动轻微增加。用所提出的方法减小了这些波动。在前列腺磁共振成像中,该方法抑制了T1和T2图的波动。结论:本研究描述的深度学习迭代磁共振成像重建方法在射频线圈等不同采集设置下具有灵活性。它适用于不同的体内应用。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Accelerating Magnetic Resonance Fingerprinting Using Hybrid Deep Learning and Iterative Reconstruction
a deep learning model. The trained model was then applied to MRF for different organs and diseases. Iterative reconstruction was performed outside the deep learning model, allowing a changeable encoding matrix, i.e., with flexibility of choice for image resolution, radiofrequency coil, k-space trajectory, and undersampling mask. In vivo experiments were performed on normal brain and prostate cancer volunteers to demonstrate the model performance and generalizability. Results: In 400-dynamics brain MRF, direct nonuniform Fourier transform caused a slight increase of random fluctuations on the T2 map. These fluctuations were reduced with the proposed method. In prostate MRF, the proposed method suppressed fluctuations on both T1 and T2 maps. Conclusion: The deep learning and iterative MRF reconstruction method described in this study was flexible with different acquisition settings such as radiofrequency coils. It is generalizable for different in vivo applications.
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