Usman Muhammad, Vaillant Ghislain, Atkinson David, Schaeffter Tobias, Prieto Claudia
King's College London, Division of Imaging Sciences and Biomedical Engineering, British Heart Foundation (BHF) Centre of Excellence, Medical Engineering Centre of Research Excellence, London, United Kingdom.
Magn Reson Med. 2014 Oct;72(4):1130-40. doi: 10.1002/mrm.25010. Epub 2013 Nov 11.
To present and validate a manifold learning (ML)-based method that estimates the respiratory signal directly from undersampled k-space data and that can be applied for respiratory self-gated liver MRI.
ML methods embed high-dimensional space data in a low-dimensional space while preserving their characteristic properties. These methods have been used to estimate one-dimensional respiratory motion (low-dimensional manifold) from a set of high-dimensional free-breathing abdominal MR images. These approaches require MR images to be reconstructed first from the acquired undersampled data. Recently, the concept of compressive manifold learning (CML) has been introduced that combines compressed sensing with ML by learning low-dimensional manifolds directly from a partial set of compressed measurements, provided that the sampling satisfies the restricted isometry property. We propose to use the CML concept to extract the respiratory signal directly from undersampled k-space data.
Simulation results from free-breathing abdominal MR data show that CML can accurately estimate respiratory motion from highly retrospectively undersampled k-space (up to 25-fold acceleration under ideal assumptions). Prospective free-breathing golden-angle radial two-dimensional (2D) acquisitions further demonstrate the feasibility of the CML method for respiratory self-gating acquisition, estimating the respiratory motion from up to 15-fold accelerated MR data.
The proposed method performs accurate respiratory signal estimation from highly undersampled k-space data and can be used for respiratory self-navigated 2D liver MRI.
提出并验证一种基于流形学习(ML)的方法,该方法可直接从欠采样的k空间数据中估计呼吸信号,并可应用于呼吸自门控肝脏磁共振成像(MRI)。
ML方法将高维空间数据嵌入到低维空间中,同时保留其特征属性。这些方法已被用于从一组高维自由呼吸腹部磁共振图像中估计一维呼吸运动(低维流形)。这些方法需要首先从采集的欠采样数据中重建磁共振图像。最近,引入了压缩流形学习(CML)的概念,该概念通过直接从部分压缩测量集中学习低维流形,将压缩感知与ML相结合,前提是采样满足受限等距特性。我们建议使用CML概念直接从欠采样的k空间数据中提取呼吸信号。
自由呼吸腹部磁共振数据的模拟结果表明,CML可以从高度回顾性欠采样的k空间中准确估计呼吸运动(在理想假设下加速高达25倍)。前瞻性自由呼吸黄金角径向二维(2D)采集进一步证明了CML方法用于呼吸自门控采集的可行性,可从高达15倍加速的磁共振数据中估计呼吸运动。
所提出的方法能够从高度欠采样的k空间数据中准确估计呼吸信号,并可用于呼吸自导航二维肝脏MRI。