Laboratory for Imaging Science and Technology, Department of Electrical and Computer Engineering, Seoul National University, Seoul, South Korea.
Department of Electrical Engineering, Stanford University, Stanford, CA, USA; Department of Radiology, Stanford University, Stanford, CA, USA.
Neuroimage. 2018 Oct 1;179:199-206. doi: 10.1016/j.neuroimage.2018.06.030. Epub 2018 Jun 15.
Deep neural networks have demonstrated promising potential for the field of medical image reconstruction, successfully generating high quality images for CT, PET and MRI. In this work, an MRI reconstruction algorithm, which is referred to as quantitative susceptibility mapping (QSM), has been developed using a deep neural network in order to perform dipole deconvolution, which restores magnetic susceptibility source from an MRI field map. Previous approaches of QSM require multiple orientation data (e.g. Calculation of Susceptibility through Multiple Orientation Sampling or COSMOS) or regularization terms (e.g. Truncated K-space Division or TKD; Morphology Enabled Dipole Inversion or MEDI) to solve an ill-conditioned dipole deconvolution problem. Unfortunately, they either entail challenges in data acquisition (i.e. long scan time and multiple head orientations) or suffer from image artifacts. To overcome these shortcomings, a deep neural network, which is referred to as QSMnet, is constructed to generate a high quality susceptibility source map from single orientation data. The network has a modified U-net structure and is trained using COSMOS QSM maps, which are considered as gold standard. Five head orientation datasets from five subjects were employed for patch-wise network training after doubling the training data using a model-based data augmentation. Seven additional datasets of five head orientation images (i.e. total 35 images) were used for validation (one dataset) and test (six datasets). The QSMnet maps of the test dataset were compared with the maps from TKD and MEDI for their image quality and consistency with respect to multiple head orientations. Quantitative and qualitative image quality comparisons demonstrate that the QSMnet results have superior image quality to those of TKD or MEDI results and have comparable image quality to those of COSMOS. Additionally, QSMnet maps reveal substantially better consistency across the multiple head orientation data than those from TKD or MEDI. As a preliminary application, the network was further tested for three patients, one with microbleed, another with multiple sclerosis lesions, and the third with hemorrhage. The QSMnet maps showed similar lesion contrasts with those from MEDI, demonstrating potential for future applications.
深度神经网络在医学图像重建领域展现出了巨大的潜力,成功地为 CT、PET 和 MRI 生成了高质量的图像。在这项工作中,我们开发了一种基于深度神经网络的 MRI 重建算法,称为定量磁化率映射(QSM),用于进行偶极子反卷积,从 MRI 场图中恢复磁化率源。以前的 QSM 方法需要多个方向的数据(例如,通过多方向采样或 COSMOS 计算磁化率)或正则化项(例如,截断 K 空间划分或 TKD;形态学启用偶极子反转或 MEDI)来解决病态的偶极子反卷积问题。不幸的是,它们要么在数据采集方面存在挑战(即扫描时间长且头方向多),要么存在图像伪影。为了克服这些缺点,我们构建了一个深度神经网络,称为 QSMnet,用于从单方向数据生成高质量的磁化率源图。该网络具有修改后的 U 形网络结构,并使用 COSMOS QSM 图进行训练,这些图被认为是金标准。使用基于模型的数据增强将训练数据加倍后,对来自五个受试者的五个头方向数据集进行了逐块网络训练。使用七个额外的五个头方向图像数据集(即总共 35 个图像)进行验证(一个数据集)和测试(六个数据集)。对测试数据集的 QSMnet 图与 TKD 和 MEDI 的图进行了图像质量和多头方向一致性的比较。定量和定性图像质量比较表明,QSMnet 的结果的图像质量优于 TKD 或 MEDI 的结果,并且与 COSMOS 的图像质量相当。此外,QSMnet 图在多个头方向数据之间的一致性明显优于 TKD 或 MEDI 的图。作为初步应用,该网络还进一步对三名患者进行了测试,一名患者有微出血,另一名患者有多发性硬化病变,第三名患者有出血。QSMnet 图显示出与 MEDI 相似的病变对比度,表明有未来应用的潜力。