论文标题
通过同时感应和深度学习预测无RF屏蔽MRI的强大电磁干扰(EMI)消除
Robust Electromagnetic Interference (EMI) Elimination via Simultaneous Sensing and Deep Learning Prediction for RF Shielding-free MRI
论文作者
论文摘要
目前,MRI扫描是在完全封闭的RF屏蔽室内进行的,提出了严格的安装要求和不必要的患者不适。我们旨在为MRI开发电磁干扰(EMI)取消策略,而没有或不完整的RF屏蔽。在这项研究中,提出了同时感应和深度学习驱动的EMI取消策略,以模拟,预测和删除获得的MRI信号中的EMI信号。具体而言,在每次MRI扫描过程中,位于各个空间位置的单独的EMI感应线圈被用于在两个窗口中同时对环境和内部EMI信号进行采样(用于常规MRI信号获取和EMI表征采集)。然后,使用EMI表征数据对CNN模型进行训练,以将EMI传感线圈与MRI接收线圈中的EMI信号检测到EMI信号。该模型用于回顾性预测和删除MRI信号采集窗口中MRI接收线圈检测到的EMI信号组件。我们在移动超低场0.055 t永久磁铁MRI扫描仪和1.5 t超导磁铁MRI扫描仪上实施并证明了各种EMI源的策略,没有RF屏蔽。我们的实验结果表明,该方法在0.055 t(2.3 MHz)和1.5 t(64 MHz)的预测和删除来自外部环境和内部扫描仪电子设备的各种EMI源方面具有非常有效且鲁棒性,可与使用完全封闭的RF屏蔽所获得的最终图像信号比率1.5 t(64 MHz)相比。我们提出的策略使MRI操作无需或不完整的RF屏蔽,从而减轻了MRI安装和操作要求。它也有可能适用于在存在外部和内部EMI或RF源的情况下精确的RF信号检测或歧视的其他情况。
At present, MRI scans are performed inside a fully-enclosed RF shielding room, posing stringent installation requirement and unnecessary patient discomfort. We aim to develop an electromagnetic interference (EMI) cancellation strategy for MRI with no or incomplete RF shielding. In this study, a simultaneous sensing and deep learning driven EMI cancellation strategy is presented to model, predict and remove EMI signals from acquired MRI signals. Specifically, during each MRI scan, separate EMI sensing coils placed in various spatial locations are utilized to simultaneously sample environmental and internal EMI signals within two windows (for both conventional MRI signal acquisition and EMI characterization acquisition). Then a CNN model is trained using the EMI characterization data to relate EMI signals detected by EMI sensing coils to EMI signals in MRI receive coil. This model is utilized to retrospectively predict and remove EMI signals components detected by MRI receive coil during the MRI signal acquisition window. We implemented and demonstrated this strategy for various EMI sources on a mobile ultra-low-field 0.055 T permanent magnet MRI scanner and a 1.5 T superconducting magnet MRI scanner with no or incomplete RF shielding. Our experimental results demonstrate that the method is highly effective and robust in predicting and removing various EMI sources from both external environments and internal scanner electronics at both 0.055 T (2.3 MHz) and 1.5 T (64 MHz), producing final image signal-to-noise ratios that are comparable to those obtained using a fully enclosed RF shielding. Our proposed strategy enables MRI operation with no or incomplete RF shielding, alleviating MRI installation and operational requirements. It is also potentially applicable to other scenarios of accurate RF signal detection or discrimination in presence of external and internal EMI or RF sources.