Qiao Yuchuan, Shi Yonggang
IEEE Trans Med Imaging. 2022 May;41(5):1165-1175. doi: 10.1109/TMI.2021.3134496. Epub 2022 May 2.
Susceptibility induced distortion is a major artifact that affects the diffusion MRI (dMRI) data analysis. In the Human Connectome Project (HCP), the state-of-the-art method adopted to correct this kind of distortion is to exploit the displacement field from the B0 image in the reversed phase encoding images. However, both the traditional and learning-based approaches have limitations in achieving high correction accuracy in certain brain regions, such as brainstem. By utilizing the fiber orientation distribution (FOD) computed from the dMRI, we propose a novel deep learning framework named DistoRtion Correction Net (DrC-Net), which consists of the U-Net to capture the latent information from the 4D FOD images and the spatial transformer network to propagate the displacement field and back propagate the losses between the deformed FOD images. The experiments are performed on two datasets acquired with different phase encoding (PE) directions including the HCP and the Human Connectome Low Vision (HCLV) dataset. Compared to two traditional methods topup and FODReg and two deep learning methods S-Net and flow-net, the proposed method achieves significant improvements in terms of the mean squared difference (MSD) of fractional anisotropy (FA) images and minimum angular difference between two PEs in white matter and also brainstem regions. In the meantime, the proposed DrC-Net takes only several seconds to predict a displacement field, which is much faster than the FODReg method.
敏感性诱导失真(Susceptibility induced distortion)是一种影响扩散磁共振成像(dMRI)数据分析的主要伪影。在人类连接组计划(HCP)中,用于校正此类失真的最先进方法是利用反相位编码图像中B0图像的位移场。然而,传统方法和基于学习的方法在某些脑区(如脑干)实现高校正精度方面都存在局限性。通过利用从dMRI计算得到的纤维取向分布(FOD),我们提出了一种名为失真校正网络(DistoRtion Correction Net,DrC-Net)的新型深度学习框架,它由U-Net组成,用于从4D FOD图像中捕获潜在信息,以及空间变换网络,用于传播位移场并反向传播变形FOD图像之间的损失。实验在两个使用不同相位编码(PE)方向采集的数据集上进行,包括HCP和人类连接组低视力(HCLV)数据集。与两种传统方法topup和FODReg以及两种深度学习方法S-Net和flow-net相比,所提出的方法在分数各向异性(FA)图像的均方差异(MSD)以及白质和脑干区域中两个PE之间的最小角度差异方面取得了显著改进。同时,所提出的DrC-Net预测一个位移场仅需几秒钟,这比FODReg方法快得多。