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首页> 外文期刊>Medical Imaging, IEEE Transactions on >Dynamic MR Image Reconstruction–Separation From Undersampled (${bf k},t$)-Space via Low-Rank Plus Sparse Prior
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Dynamic MR Image Reconstruction–Separation From Undersampled (${bf k},t$)-Space via Low-Rank Plus Sparse Prior

机译:动态MR图像重建-通过低秩加稀疏与欠采样( $ {bf k},t $ )-空间分离事前

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摘要

Dynamic magnetic resonance imaging (MRI) is used in multiple clinical applications, but can still benefit from higher spatial or temporal resolution. A dynamic MR image reconstruction method from partial ( k, t)-space measurements is introduced that recovers and inherently separates the information in the dynamic scene. The reconstruction model is based on a low-rank plus sparse decomposition prior, which is related to robust principal component analysis. An algorithm is proposed to solve the convex optimization problem based on an alternating direction method of multipliers. The method is validated with numerical phantom simulations and cardiac MRI data against state of the art dynamic MRI reconstruction methods. Results suggest that using the proposed approach as a means of regularizing the inverse problem remains competitive with state of the art reconstruction techniques. Additionally, the decomposition induced by the reconstruction is shown to help in the context of motion estimation in dynamic contrast enhanced MRI.
机译:动态磁共振成像(MRI)已在多种临床应用中使用,但仍可受益于更高的空间或时间分辨率。介绍了一种从局部(k,t)空间测量中获取动态MR图像的方法,该方法可恢复并固有地分离出动态场景中的信息。重建模型基于先验低阶加稀疏分解,与鲁棒主成分分析有关。提出了一种基于乘法器交替方向法的凸优化算法。该方法已通过数字体模仿真和心脏MRI数据针对最新动态MRI重建方法进行了验证。结果表明,使用提出的方法作为反问题正则化的手段,与最新的重建技术相比仍具有竞争力。此外,在动态对比度增强的MRI中,重建重建引起的分解被证明有助于运动估计。

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