Convergent iterative algorithms for joint reconstruction of activity and attenuation from time-of-flight PET data

Sangtae Ahn, H. Qian, R. Manjeshwar
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引用次数: 8

Abstract

Joint reconstruction of activity and attenuation maps from emission data only, while being a long-standing problem in emission tomography, has been gaining recent interests because of its application to MR-based attenuation correction in PET/MR scanners where CT images are not available. Furthermore, recent studies showed that TOF (time-of-flight) information can substantially reduce, or completely remove in theory, crosstalk artifacts, which had been one of the hurdles preventing joint reconstruction techniques from being used clinically. Nonetheless, estimating both activity and attenuation from TOF emission data is a computationally challenging nonconvex optimization problem with high-dimensional data size. Therefore, as a tool for investigating and optimizing the joint estimation techniques for clinical use, we need numerical algorithms that are derived in a principled way and guaranteed to converge to a solution. Here, in a PL (penalized-likelihood) framework, we present a block alternating MM (minorization maximization) algorithm, which is provably globally convergent although the PL objective function is nonconcave. By using linear parameterization of attenuation maps, the algorithm applies to a variety of scenarios, depending on the type of and the degree of prior information, in a unified way. In addition, we provide a proof of the uniqueness of solutions to joint estimation problems for a continuous-space TOF PET system whose TOF kernels do not need to be Gaussian.
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从飞行时间PET数据中联合重建活动和衰减的收敛迭代算法
仅从发射数据中联合重建活度图和衰减图,虽然是发射断层扫描中一个长期存在的问题,但由于其应用于PET/MR扫描仪中无法获得CT图像的基于MR的衰减校正,最近得到了人们的关注。此外,最近的研究表明,TOF(飞行时间)信息在理论上可以大大减少或完全消除串扰伪影,而串扰伪影一直是关节重建技术在临床上应用的障碍之一。尽管如此,从TOF发射数据中估计活度和衰减是一个具有计算挑战性的高维数据规模的非凸优化问题。因此,作为研究和优化临床应用的联合估计技术的工具,我们需要以有原则的方式推导并保证收敛于解决方案的数值算法。本文在惩罚似然框架下,提出了一种块交替的最小化最大化算法,该算法可证明在PL目标函数非凹的情况下是全局收敛的。该算法通过对衰减图进行线性参数化,根据先验信息的类型和程度,统一适用于多种场景。此外,我们还证明了连续空间TOF PET系统联合估计问题解的唯一性,该系统的TOF核不需要是高斯的。
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