Department of Mathematics, University of California, Los Angeles, CA 90095, USA.
Phys Med Biol. 2011 Jun 7;56(11):3181-98. doi: 10.1088/0031-9155/56/11/002. Epub 2011 May 4.
The purpose of this paper for four-dimensional (4D) computed tomography (CT) is threefold. (1) A new spatiotemporal model is presented from the matrix perspective with the row dimension in space and the column dimension in time, namely the robust PCA (principal component analysis)-based 4D CT model. That is, instead of viewing the 4D object as a temporal collection of three-dimensional (3D) images and looking for local coherence in time or space independently, we perceive it as a mixture of low-rank matrix and sparse matrix to explore the maximum temporal coherence of the spatial structure among phases. Here the low-rank matrix corresponds to the 'background' or reference state, which is stationary over time or similar in structure; the sparse matrix stands for the 'motion' or time-varying component, e.g., heart motion in cardiac imaging, which is often either approximately sparse itself or can be sparsified in the proper basis. Besides 4D CT, this robust PCA-based 4D CT model should be applicable in other imaging problems for motion reduction or/and change detection with the least amount of data, such as multi-energy CT, cardiac MRI, and hyperspectral imaging. (2) A dynamic strategy for data acquisition, i.e. a temporally spiral scheme, is proposed that can potentially maintain similar reconstruction accuracy with far fewer projections of the data. The key point of this dynamic scheme is to reduce the total number of measurements, and hence the radiation dose, by acquiring complementary data in different phases while reducing redundant measurements of the common background structure. (3) An accurate, efficient, yet simple-to-implement algorithm based on the split Bregman method is developed for solving the model problem with sparse representation in tight frames.
本文的目的是对四维(4D)计算机断层扫描(CT)进行三方面的研究。(1)从矩阵的角度提出了一种新的时空模型,行维为空间,列维为时间,即基于鲁棒主成分分析(PCA)的 4D CT 模型。也就是说,我们不是将 4D 物体视为三维(3D)图像的时间集合,并分别寻找时间或空间上的局部一致性,而是将其视为低秩矩阵和稀疏矩阵的混合体,以探索相位间空间结构的最大时间一致性。这里低秩矩阵对应于“背景”或参考状态,其在时间上是静止的或结构相似的;稀疏矩阵代表“运动”或时变分量,例如心脏成像中的心脏运动,它通常本身是近似稀疏的,或者可以在适当的基上稀疏化。除了 4D CT,这种基于鲁棒 PCA 的 4D CT 模型还应该适用于其他成像问题,以减少运动或/和变化检测所需的数据量,例如多能 CT、心脏 MRI 和高光谱成像。(2)提出了一种动态数据采集策略,即时间螺旋方案,它可以在使用更少投影的情况下潜在地保持相似的重建精度。该动态方案的关键是通过在不同相位采集互补数据,同时减少常见背景结构的冗余测量,从而减少总测量次数,从而降低辐射剂量。(3)开发了一种基于分裂布格曼方法的准确、高效、易于实现的算法,用于解决具有紧框架稀疏表示的模型问题。