Department of Electronic Science, Fujian Provincial Key Laboratory of Plasma and Magnetic Resonance, Xiamen University, Xiamen 361005, People's Republic of China.
Zhangzhou Institute of Science and Technology, Zhangzhou City, Fujian Province, People's Republic of China.
Phys Med Biol. 2024 Feb 15;69(4). doi: 10.1088/1361-6560/ad237f.
Quantitative susceptibility mapping (QSM) is a new imaging technique for non-invasive characterization of the composition and microstructure oftissues, and it can be reconstructed from local field measurements by solving an ill-posed inverse problem. Even for deep learning networks, it is not an easy task to establish an accurate quantitative mapping between two physical quantities of different units, i.e. field shift in Hz and susceptibility value in ppm for QSM.. In this paper, we propose a spatially adaptive regularization based three-dimensional reconstruction network SAQSM. A spatially adaptive module is specially designed and a set of them at different resolutions are inserted into the network decoder, playing a role of cross-modality based regularization constraint. Therefore, the exact information of both field and magnitude data is exploited to adjust the scale and shift of feature maps, and thus any information loss or deviation occurred in previous layers could be effectively corrected. The network encoding has a dynamic perceptual initialization, which enables the network to overcome receptive field intervals and also strengthens its ability to detect features of various sizes.. Experimental results on the brain data of healthy volunteers, clinical hemorrhage and simulated phantom with calcification demonstrate that SAQSM can achieve more accurate reconstruction with less susceptibility artifacts, while perform well on the stability and generalization even for severe lesion areas.. This proposed framework may provide a valuable paradigm to quantitative mapping or multimodal reconstruction.
定量磁化率映射(QSM)是一种新的成像技术,可用于无创地对组织的成分和微观结构进行特征描述,它可以通过求解不适定的逆问题,从局部磁场测量值中重建。即使对于深度学习网络来说,在两个具有不同单位的物理量之间建立准确的定量映射也不是一件容易的事情,例如 QSM 中的磁场偏移(Hz)和磁化率值(ppm)。在本文中,我们提出了一种基于空间自适应正则化的三维重建网络 SAQSM。专门设计了一个空间自适应模块,并在网络解码器中插入了一组具有不同分辨率的模块,起到基于跨模态的正则化约束作用。因此,可以利用场和幅度数据的精确信息来调整特征图的比例和偏移,从而有效纠正前几层中发生的任何信息丢失或偏差。网络编码具有动态感知初始化,使网络能够克服感受野间隔,并增强其检测各种大小特征的能力。对健康志愿者、临床出血和模拟钙化体的脑部数据的实验结果表明,SAQSM 可以实现更准确的重建,同时磁化率伪影更少,即使在严重病变区域也具有良好的稳定性和泛化能力。该框架为定量映射或多模态重建提供了一种有价值的范例。