基于深度学习重影检测的高加速实时动态mri鲁棒外体积减法。

Merve Gülle, Mehmet Akçakaya
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引用次数: 0

摘要

实时动态MRI在一些应用中对时变过程的可视化很重要,包括心脏成像,它可以在没有ECG门控的情况下实现心脏跳动的自由呼吸图像。然而,由于有限的加速速率,当前的实时MRI技术在实现所需的时空分辨率方面通常面临挑战。在这项研究中,我们提出了一种深度学习(DL)技术来改进从移位时交错欠采样模式中估计平稳外体积信号。我们的方法利用了由运动器官产生的伪周期伪影的特性。随后,从实时MR时间序列的单个时间框架中减去该估计的外部体积信号,并使用物理驱动的DL方法单独重建每个时间框架。结果表明,在高加速速率下,图像质量得到了改善,而传统方法却无法做到这一点。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
ROBUST OUTER VOLUME SUBTRACTION WITH DEEP LEARNING GHOSTING DETECTION FOR HIGHLY-ACCELERATED REAL-TIME DYNAMIC MRI.

Real-time dynamic MRI is important for visualizing time-varying processes in several applications, including cardiac imaging, where it enables free-breathing images of the beating heart without ECG gating. However, current real-time MRI techniques commonly face challenges in achieving the required spatio-temporal resolutions due to limited acceleration rates. In this study, we propose a deep learning (DL) technique for improving the estimation of stationary outer-volume signal from shifted time-interleaved undersampling patterns. Our approach utilizes the pseudo-periodic nature of the ghosting artifacts arising from the moving organs. Subsequently, this estimated outer-volume signal is subtracted from individual timeframes of the real-time MR time series, and each timeframe is reconstructed individually using physics-driven DL methods. Results show improved image quality at high acceleration rates, where conventional methods fail.

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