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首页> 外文期刊>Magnetic resonance imaging: An International journal of basic research and clinical applications >MR image reconstruction of sparsely sampled 3D k-space data by projection-onto-convex sets
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MR image reconstruction of sparsely sampled 3D k-space data by projection-onto-convex sets

机译:凸投影集稀疏采样的3D k空间数据的MR图像重建

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In many rapid three-dimensional (3D) magnetic resonance (MR) imaging applications, such as when following a contrast bolus in the vasculature using a moving table technique, the desired k-space data cannot be fully acquired due to scan time limitations. One solution to this problem is to sparsely sample the data space. Typically, the central zone of k-space is fully sampled, but the peripheral zone is partially sampled. We have experimentally evaluated the application of the projection-onto-convex sets (POCS) and zero-filling (ZF) algorithms for the reconstruction of sparsely sampled 3D k-space data. Both a subjective assessment (by direct image visualization) and an objective analysis [using standard image quality parameters such as global and local performance error and signal-to-noise ratio (SNR)] were employed. Compared to ZF, the POCS algorithm was found to be a powerful and robust method for reconstructing images from sparsely sampled 3D k-space data, a practical strategy for greatly reducing scan time. The POCS algorithm reconstructed a faithful representation of the true image and improved image quality with regard to global and local performance error, with respect to the ZF images. SNR, however, was superior to ZF only when more than 20% of the data were sparsely sampled. POCS-based methods show potential for reconstructing fast 3D MR images obtained by sparse sampling. (C) 2006 Elsevier Inc. All rights reserved.
机译:在许多快速三维(3D)磁共振(MR)成像应用中,例如当使用移动台技术在脉管系统中进行对比推注时,由于扫描时间的限制,无法完全获取所需的k空间数据。解决此问题的一种方法是稀疏地采样数据空间。通常,对k空间的中心区域进行了完全采样,但对外围区域进行了部分采样。我们已经通过实验评估了凸投影集(POCS)和零填充(ZF)算法在稀疏采样3D k空间数据重建中的应用。主观评估(通过直接图像可视化)和客观分析都使用了[使用标准图像质量参数,例如全局和局部性能误差以及信噪比(SNR)]。与ZF相比,发现POCS算法是一种从稀疏采样的3D k空间数据中重建图像的强大而强大的方法,这是一种大大减少扫描时间的实用策略。 POCS算法针对ZF图像重建了真实图像的忠实表示,并针对全局和局部性能误差改进了图像质量。但是,只有在稀疏地采样了超过20%的数据时,SNR才优于ZF。基于POCS的方法显示了重建通过稀疏采样获得的快速3D MR图像的潜力。 (C)2006 Elsevier Inc.保留所有权利。

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