Recent deep learning is superior in providing high-quality images and ultra-fast reconstructions in accelerated magnetic resonance imaging (MRI). Faithful coil sensitivity estimation is vital for MRI reconstruction. However, most deep learning methods still rely on pre-estimated sensitivity maps and ignore their inaccuracy, resulting in the significant quality degradation of reconstructed images. In this work, we propose a Joint Deep Sensitivity estimation and Image reconstruction network, called JDSI. During the image artifacts removal, it gradually provides more faithful sensitivity maps, leading to greatly improved image reconstructions. To understand the behavior of the network, the mutual promotion of sensitivity estimation and image reconstruction is revealed through the visualization of network intermediate results. Results on in vivo datasets and radiologist reader study demonstrate that, the proposed JDSI achieves the state-of-the-art performance visually and quantitatively, especially when the accelerated factor is high. Additionally, JDSI owns nice robustness to abnormal subjects and different number of autocalibration signals.
翻译:最近深层学习在提供高质量图像和超快重建加速磁共振成像(MRI)方面表现优异。忠实的coil敏感度估计对于MRI重建至关重要。然而,大多数深层学习方法仍然依赖预估的敏感度图,忽视其不准确性,导致重建后的图像质量严重退化。在这项工作中,我们提议建立一个称为JDSI的联合深敏度估计和图像重建网络。在图像文物清除过程中,它逐渐提供更忠实的敏感度图,从而大大改进图像重建。为了了解网络的行为,通过网络中间结果的可视化,相互促进敏感度估计和图像重建。关于活性数据集和放射科读者研究的结果显示,拟议的JDSI在视觉和数量上达到最新表现,特别是在加速系数高的情况下。此外,JDSI拥有对异常主题的稳健性和不同数量的自动校正信号。