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Multiple Slice k-space Deep Learning for Magnetic Resonance Imaging Reconstruction

机译:用于磁共振成像重建的多层k空间深度学习

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Magnetic resonance imaging (MRI) has been one of the most powerful and valuable imaging methods for medical diagnosis and staging of disease. Due to the long scan time of MRI acquisition, k-space under-samplings is required during the acquisition processing. Thus, MRI reconstruction, which transfers undersampled k-space data to high-quality magnetic resonance imaging, becomes an important and meaningful task. There have been many explorations on k-space interpolation for MRI reconstruction. However, most of these methods ignore the strong correlation between target slice and its adjacent slices. Inspired by this, we propose a fully data-driven deep learning algorithm for k-space interpolation, utilizing the correlation information between the target slice and its neighboring slices. A novel network is proposed, which models the inter-dependencies between different slices. In addition, the network is easily implemented and expended. Experiments show that our methods consistently surpass existing image-domain and k-space-domain magnetic resonance imaging reconstructing methods.
机译:磁共振成像(MRI)一直是用于医学诊断和疾病分期的最强大,最有价值的成像方法之一。由于MRI采集的扫描时间较长,因此在采集过程中需要进行k空间欠采样。因此,将欠采样的k空间数据传输到高质量磁共振成像的MRI重建成为一项重要而有意义的任务。关于k空间插值以进行MRI重建的方法已有许多探索。但是,大多数这些方法都忽略了目标切片及其相邻切片之间的强相关性。受此启发,我们提出了一种完全数据驱动的深度学习算法,用于k空间插值,它利用了目标切片及其相邻切片之间的相关信息。提出了一种新颖的网络,该网络对不同片段之间的相互依赖性进行建模。另外,该网络易于实施和扩展。实验表明,我们的方法始终优于现有的图像域和k空间域磁共振成像重建方法。

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