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Compressed Sensing MRI Reconstruction with Multiple Sparsity Constraints on Radial Sampling

机译:压缩传感MRI重建与径向采样的多个稀疏限制

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Compressed Sensing Magnetic Resonance Imaging (CS-MRI) is a promising technique for accelerating MRI acquisitions by using fewer k-space data. Exploiting more sparsity is an important approach to improving the CS-MRI reconstruction quality. We propose a novel CS-MRI framework based on multiple sparse priors to increase reconstruction accuracy. The wavelet sparsity, wavelet tree structured sparsity, and nonlocal total variation (NLTV) regularizations were integrated in the CS-MRI framework, and the optimization problem was solved using a fast composite splitting algorithm (FCSA). The proposed method was evaluated on different types of MR images with different radial sampling schemes and different sampling ratios and compared with the state-of-the-art CS-MRI reconstruction methods in terms of peak signal-to-noise ratio (PSNR), feature similarity (FSIM), relative l2 norm error (RLNE), and mean structural similarity (MSSIM). The results demonstrated that the proposed method outperforms the traditional CS-MRI algorithms in both visual and quantitative comparisons.
机译:压缩传感磁共振成像(CS-MRI)是一种希望通过使用较少的K空间数据加速MRI采集的有希望的技术。利用更多稀疏性是提高CS-MRI重建质量的重要方法。我们提出了一种基于多个稀疏前锋的新型CS-MRI框架,以提高重建准确性。小波稀疏性,小波树结构稀疏性和非局部总变化(NLTV)正规化在CS-MRI框架中集成,并使用快速复合分割算法(FCSA)解决了优化问题。在不同类型的MR图像上用不同的径向采样方案和不同的采样比评估所提出的方法,并在峰值信噪比(PSNR)方面与最先进的CS-MRI重建方法进行比较,特征相似性(FSIM),相对L2标准错误(RLNE)和平均结构相似性(MSSIM)。结果表明,所提出的方法在视觉和定量比较中优于传统的CS-MRI算法。

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