首页> 外文期刊>Magnetic resonance imaging: An International journal of basic research and clinical applications >An unsupervised deep learning technique for susceptibility artifact correction in reversed phase-encoding EPI images
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An unsupervised deep learning technique for susceptibility artifact correction in reversed phase-encoding EPI images

机译:逆相位ePI图像中易受敏感性伪影校正的无监督深度学习技术

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摘要

Echo planar imaging (EPI) is a fast and non-invasive magnetic resonance imaging technique that supports data acquisition at high spatial and temporal resolutions. However, susceptibility artifacts, which cause the misalignment to the underlying structural image, are unavoidable distortions in EPI. Traditional susceptibility artifact correction (SAC) methods estimate the displacement field by optimizing an objective function that involves one or more pairs of reversed phase-encoding (PE) images. The estimated displacement field is then used to unwarp the distorted images and produce the corrected images. Since this conventional approach is time-consuming, we propose an end-to-end deep learning technique, named S-Net, to correct the susceptibility artifacts the reversed-PE image pair. The proposed S-Net consists of two components: (i) a convolutional neural network to map a reversed-PE image pair to the displacement field; and (ii) a spatial transform unit to unwarp the input images and produce the corrected images. The S-Net is trained using a set of reversed-PE image pairs and an unsupervised loss function, without ground-truth data. For a new image pair of reversed-PE images, the displacement field and corrected images are obtained simultaneously by evaluating the trained S-Net directly. Evaluations on three different datasets demonstrate that S-Net can correct the susceptibility artifacts in the reversed-PE images. Compared with two state-of-the-art SAC methods (TOPUP and TISAC), the proposed S-Net runs significantly faster: 20 times faster than TISAC and 369 times faster than TOPUP, while achieving a similar correction accuracy. Consequently, S-Net accelerates the medical image processing pipelines and makes the real-time correction for MRI scanners feasible. Our proposed technique also opens up a new direction in learning-based SAC.
机译:回声平面成像(EPI)是一种快速和非侵入性磁共振成像技术,其支持高空间和时间分辨率的数据采集。然而,导致对潜在结构形象的未对准的易感性伪影是ePI中不可避免的扭曲。传统的敏感性伪影校正(SAC)方法通过优化涉及一个或多对反相(PE)图像的目标函数来估计位移领域。然后将估计的位移场用于勿喇离的扭曲图像并产生校正的图像。由于这种传统方法是耗时的,我们提出了一个名为S-Net的端到端深度学习技术,以校正易感性伪像对逆转体图像对。所提出的S-Net由两个组件组成:(i)卷积神经网络,用于将反向PE图像对映射到位移场; (ii)空间变换单元以借助输入图像并产生校正的图像。 S-NET使用一组反向PE图像对和无监督丢失功能进行培训,而无需基础真实数据。对于新的图像对反向PE图像,通过直接评估训练的S-NET来同时获得位移场和校正图像。三个不同数据集的评估表明,S-NET可以校正反向PE图像中的易感性伪影。与两个最先进的囊方法(充值和TISAC)相比,所提出的S-NET更快地运行:比TISAC快20倍,而不是放大369倍,同时实现了类似的校正精度。因此,S-Net加速了医学图像处理管道,并为MRI扫描仪进行实时校正可行。我们所提出的技术在学习的囊中也开辟了新的方向。

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