利用互信息的在线欠采样动态MRI重建

M. Farzi, A. Ghaffari, E. Fatemizadeh
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引用次数: 0

摘要

我们提出了一种基于互信息的算法来解决从部分k空间测量中在线重建动态MRI的问题。以往大多数基于压缩感知(CS)的方法成功地利用稀疏性约束进行MR图像的离线重建,但由于其复杂性,它们并未用于在线应用。在本文中,我们将重建描述为一个约束优化问题,并试图最大化当前和以前的时间框架之间的互信息。采用共轭梯度法求解优化问题。利用笛卡尔掩模对k空间测量进行下采样,将ModCS的3.41%、ModCS_Res的1.57%和canm的1.16%的平均每帧重构误差降低到0.61%。此外,以每秒2到10帧的速度快速重建图像使我们的方法成为当前在线动态MRI应用中基于CS的方法的一个很好的替代方案。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Online undersampled dynamic MRI reconstruction using mutual information
We propose an algorithm based on mutual information to address the problem of online reconstruction of dynamic MRI from partial k-space measurements. Most of previous compressed sensing (CS) based methods successfully leverage sparsity constraint for offline reconstruction of MR images, yet they are not used in online applications due to their complexities. In this paper, we formulate the reconstruction as a constraint optimization problem and try to maximize the mutual information between the current and the previous time frames. Conjugate gradient method is used to solve the optimization problem. Using Cartesian mask to undersample k-space measurements, the proposed method reduces reconstruction error from 3.41% in ModCS, 1.57% in ModCS_Res and 1.16% in CaNNM to 0.61% on average per frame. Moreover, fast reconstruction of images at the rate of 2 to 10 frames per second makes our method a good alternative for current CS based methods in online dynamic MRI applications.
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