Deep neural networks have demonstrated great potential in solving dipole inversion for Quantitative Susceptibility Mapping (QSM). However, the performances of most existing deep learning methods drastically degrade with mismatched sequence parameters such as acquisition orientation and spatial resolution. We propose an end-to-end AFfine Transformation Edited and Refined (AFTER) deep neural network for QSM, which is robust against arbitrary acquisition orientation and spatial resolution up to 0.6 mm isotropic at the finest. The AFTER-QSM neural network starts with a forward affine transformation layer, followed by an Unet for dipole inversion, then an inverse affine transformation layer, followed by a Residual Dense Network (RDN) for QSM refinement. Simulation and in-vivo experiments demonstrated that the proposed AFTER-QSM network architecture had excellent generalizability. It can successfully reconstruct susceptibility maps from highly oblique and anisotropic scans, leading to the best image quality assessments in simulation tests and suppressed streaking artifacts and noise levels for in-vivo experiments compared with other methods. Furthermore, ablation studies showed that the RDN refinement network significantly reduced image blurring and susceptibility underestimation due to affine transformations. In addition, the AFTER-QSM network substantially shortened the reconstruction time from minutes using conventional methods to only a few seconds.
翻译:深心神经网络在解决定量可视性绘图(QSM)中极有可能解决低温转换问题。然而,大多数现有深层学习方法的性能随着购置方向和空间分辨率等不匹配的序列参数而急剧退化。我们提议为QSM建立一个终端到终端的AFFPine变形编辑和精炼(AFTER)深心神经网络,这个网络在任意获取方向和空间分辨率最高至0.6毫米的最优偏向性扫描中非常活跃。AFCTER-QSM神经网络从前方的直角转换层开始,然后是低温变异形的Unet,然后是反向直角变异形变形层,随后是QSMSM的后向偏差序列序列变异。模拟测试和反动变异性网络的模拟质量评估只能导致模拟测试中最佳的图像质量评估,并抑制静态变形制品和噪音水平,然后是逆向偏差变形变形变形的Unet(RDN)网络改进。模拟后,在微变型网络下进行了大幅降低常规变形,在平变形的网络下进行了升级。