School of Information Technology and Electrical Engineering, University of Queensland, Brisbane, Australia.
Melbourne Brain Centre Imaging Unit, Department of Medicine and Radiology, The University of Melbourne, Parkville, Australia.
NMR Biomed. 2021 Mar;34(3):e4461. doi: 10.1002/nbm.4461. Epub 2020 Dec 27.
Quantitative susceptibility mapping (QSM) provides a valuable MRI contrast mechanism that has demonstrated broad clinical applications. However, the image reconstruction of QSM is challenging due to its ill-posed dipole inversion process. In this study, a new deep learning method for QSM reconstruction, namely xQSM, was designed by introducing noise regularization and modified octave convolutional layers into a U-net backbone and trained with synthetic and in vivo datasets, respectively. The xQSM method was compared with two recent deep learning (QSMnet and DeepQSM) and two conventional dipole inversion (MEDI and iLSQR) methods, using both digital simulations and in vivo experiments. Reconstruction error metrics, including peak signal-to-noise ratio, structural similarity, normalized root mean squared error and deep gray matter susceptibility measurements, were evaluated for comparison of the different methods. The results showed that the proposed xQSM network trained with in vivo datasets achieved the best reconstructions of all the deep learning methods. In particular, it led to, on average, 32.3%, 25.4% and 11.7% improvement in the accuracy of globus pallidus susceptibility estimation for digital simulations and 39.3%, 21.8% and 6.3% improvements for in vivo acquisitions compared with DeepQSM, QSMnet and iLSQR, respectively. It also exhibited the highest linearity against different susceptibility intensity scales and demonstrated the most robust generalization capability to various spatial resolutions of all the deep learning methods. In addition, the xQSM method also substantially shortened the reconstruction time from minutes using MEDI to only a few seconds.
定量磁化率映射(QSM)提供了一种有价值的 MRI 对比机制,具有广泛的临床应用。然而,由于其不适定的偶极子反演过程,QSM 的图像重建具有挑战性。在这项研究中,通过在 U-net 骨干中引入噪声正则化和改进的八度卷积层,设计了一种新的 QSM 重建深度学习方法,即 xQSM,并分别使用合成数据集和体内数据集进行训练。xQSM 方法与两种最近的深度学习方法(QSMnet 和 DeepQSM)和两种传统的偶极子反演方法(MEDI 和 iLSQR)进行了比较,分别使用数字模拟和体内实验进行比较。使用不同方法进行比较的重建误差指标包括峰值信噪比、结构相似性、归一化均方根误差和深灰质磁化率测量。结果表明,使用体内数据集训练的提出的 xQSM 网络实现了所有深度学习方法中最佳的重建。特别是,它平均导致数字模拟中苍白球磁化率估计的准确性提高了 32.3%、25.4%和 11.7%,与 DeepQSM、QSMnet 和 iLSQR 相比,体内采集的准确性提高了 39.3%、21.8%和 6.3%。与其他深度学习方法相比,它还表现出对不同磁化率强度标度的最高线性度,并展示了最稳健的泛化能力,适用于各种空间分辨率。此外,xQSM 方法还大大缩短了使用 MEDI 从分钟到仅几秒钟的重建时间。