Wei Hongjiang, Cao Steven, Zhang Yuyao, Guan Xiaojun, Yan Fuhua, Yeom Kristen W, Liu Chunlei
Institute for Medical Imaging Technology, School of Biomedical Engineering, Shanghai Jiao Tong University, Shanghai, China.
Department of Electrical Engineering and Computer Sciences, University of California, Berkeley, CA, USA.
Neuroimage. 2019 Nov 15;202:116064. doi: 10.1016/j.neuroimage.2019.116064. Epub 2019 Aug 1.
Quantitative susceptibility mapping (QSM) estimates the underlying tissue magnetic susceptibility from MRI gradient-echo phase signal and typically requires several processing steps. These steps involve phase unwrapping, brain volume extraction, background phase removal and solving an ill-posed inverse problem relating the tissue phase to the underlying susceptibility distribution. The resulting susceptibility map is known to suffer from inaccuracy near the edges of the brain tissues, in part due to imperfect brain extraction, edge erosion of the brain tissue and the lack of phase measurement outside the brain. This inaccuracy has thus hindered the application of QSM for measuring susceptibility of tissues near the brain edges, e.g., quantifying cortical layers and generating superficial venography. To address these challenges, we propose a learning-based QSM reconstruction method that directly estimates the magnetic susceptibility from total phase images without the need for brain extraction and background phase removal, referred to as autoQSM. The neural network has a modified U-net structure and is trained using QSM maps computed by a two-step QSM method. 209 healthy subjects with ages ranging from 11 to 82 years were employed for patch-wise network training. The network was validated on data dissimilar to the training data, e.g., in vivo mouse brain data and brains with lesions, which suggests that the network generalized and learned the underlying mathematical relationship between magnetic field perturbation and magnetic susceptibility. Quantitative and qualitative comparisons were performed between autoQSM and other two-step QSM methods. AutoQSM was able to recover magnetic susceptibility of anatomical structures near the edges of the brain including the veins covering the cortical surface, spinal cord and nerve tracts near the mouse brain boundaries. The advantages of high-quality maps, no need for brain volume extraction, and high reconstruction speed demonstrate autoQSM's potential for future applications.
定量磁化率成像(QSM)通过磁共振成像(MRI)梯度回波相位信号来估计潜在的组织磁化率,通常需要几个处理步骤。这些步骤包括相位展开、脑体积提取、背景相位去除以及解决一个将组织相位与潜在磁化率分布相关联的不适定逆问题。已知所得的磁化率图在脑组织边缘附近存在不准确之处,部分原因是脑提取不完善、脑组织边缘侵蚀以及脑外缺乏相位测量。因此,这种不准确阻碍了QSM在测量脑边缘附近组织磁化率方面的应用,例如量化皮质层和生成浅表静脉造影。为应对这些挑战,我们提出了一种基于学习的QSM重建方法,该方法可直接从总相位图像估计磁化率,无需进行脑提取和背景相位去除,称为自动QSM。神经网络具有改进的U型网络结构,并使用两步QSM方法计算的QSM图进行训练。209名年龄在11至82岁之间的健康受试者用于逐块网络训练。该网络在与训练数据不同的数据上进行了验证,例如体内小鼠脑数据和有病变的脑,这表明该网络能够泛化并学习磁场扰动与磁化率之间的潜在数学关系。对自动QSM和其他两步QSM方法进行了定量和定性比较。自动QSM能够恢复脑边缘附近解剖结构的磁化率,包括覆盖皮质表面的静脉、小鼠脑边界附近的脊髓和神经束。高质量图、无需脑体积提取以及高重建速度等优点证明了自动QSM在未来应用中的潜力。