Radiology and Radiological Sciences, Vanderbilt University Medical Center, Nashville, TN, United States of America.
Vanderbilt University Institute of Imaging Science, Vanderbilt University, Nashville, TN, United States of America.
PLoS One. 2020 Jul 31;15(7):e0236418. doi: 10.1371/journal.pone.0236418. eCollection 2020.
Diffusion magnetic resonance images may suffer from geometric distortions due to susceptibility induced off resonance fields, which cause geometric mismatch with anatomical images and ultimately affect subsequent quantification of microstructural or connectivity indices. State-of-the art diffusion distortion correction methods typically require data acquired with reverse phase encoding directions, resulting in varying magnitudes and orientations of distortion, which allow estimation of an undistorted volume. Alternatively, additional field maps acquisitions can be used along with sequence information to determine warping fields. However, not all imaging protocols include these additional scans and cannot take advantage of state-of-the art distortion correction. To avoid additional acquisitions, structural MRI (undistorted scans) can be used as registration targets for intensity driven correction. In this study, we aim to (1) enable susceptibility distortion correction with historical and/or limited diffusion datasets that do not include specific sequences for distortion correction and (2) avoid the computationally intensive registration procedure typically required for distortion correction using structural scans. To achieve these aims, we use deep learning (3D U-nets) to synthesize an undistorted b0 image that matches geometry of structural T1w images and intensity contrasts from diffusion images. Importantly, the training dataset is heterogenous, consisting of varying acquisitions of both structural and diffusion. We apply our approach to a withheld test set and show that distortions are successfully corrected after processing. We quantitatively evaluate the proposed distortion correction and intensity-based registration against state-of-the-art distortion correction (FSL topup). The results illustrate that the proposed pipeline results in b0 images that are geometrically similar to non-distorted structural images, and more closely match state-of-the-art correction with additional acquisitions. In addition, we show generalizability of the proposed approach to datasets that were not in the original training / validation / testing datasets. These datasets included varying populations, contrasts, resolutions, and magnitudes and orientations of distortion and show efficacious distortion correction. The method is available as a Singularity container, source code, and an executable trained model to facilitate evaluation.
扩散磁共振图像可能会因感应引起的离共振场而产生几何变形,这会导致与解剖图像的几何不匹配,并最终影响微结构或连接性指数的后续定量分析。最先进的扩散变形校正方法通常需要使用反转相位编码方向采集数据,这会导致变形的幅度和方向发生变化,从而可以估计未变形的体积。或者,可以使用附加的场图采集并结合序列信息来确定变形场。然而,并非所有的成像协议都包括这些额外的扫描,因此无法利用最先进的变形校正技术。为了避免额外的采集,可以将结构磁共振成像(未变形扫描)用作强度驱动校正的配准目标。在这项研究中,我们的目标是:(1)在不包括用于变形校正的特定序列的历史和/或有限的扩散数据集上启用磁化率变形校正;(2)避免使用结构扫描进行变形校正通常需要的计算密集型配准过程。为了实现这些目标,我们使用深度学习(3D U-net)来合成与结构 T1w 图像的几何形状和扩散图像的强度对比匹配的未变形 b0 图像。重要的是,训练数据集是异构的,由结构和扩散的不同采集组成。我们将我们的方法应用于保留的测试集,并表明在处理后可以成功校正变形。我们定量评估了所提出的变形校正和基于强度的配准方法与最先进的变形校正(FSL topup)的性能。结果表明,所提出的管道生成的 b0 图像在几何上与未变形的结构图像相似,并且与具有附加采集的最先进校正方法更匹配。此外,我们还展示了所提出的方法对不在原始训练/验证/测试数据集的数据集的泛化能力。这些数据集包括不同的人群、对比度、分辨率以及变形的幅度和方向,并且显示出有效的变形校正效果。该方法以 Singularity 容器、源代码和可执行训练模型的形式提供,以方便评估。