Simultaneous estimation of attenuation and activity images using optimization transfer

M. Jacobson, J. Fessler
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引用次数: 4

Abstract

This paper addresses the application of optimization transfer to simultaneous statistical estimation of attenuation and activity images in tomographic Image reconstruction. Although the technique we propose has wider applicability, we focus on the problem of reconstructing from data acquired via a post-injection transmission scan protocol. In this protocol, emission scan data Is supplemented with transmission scan data that is acquired after the patient has received the Injection of radio-tracer. The negative loglikelihood function for this data is a complicated function of the activity and attenuation images, leading to an objective function for the model that is difficult to minimize for the purpose of estimation. Previous work on this problem showed that when either the attenuation or activity image was held fixed, a paraboloidal surrogate could be found for the negative loglikelihood as a function of the remaining variables. This led to an algorithm In which the model's objective function is alternately minimized as a function of the attenuation and activity, using the optimization transfer technique. In the work we present here, however, we develop bivariate surrogates for the loglikelihood, i.e., functions that serve as surrogates with respect to both the attenuation and activity variables. Hence, simultaneous minimization in all variables can be carried out, potentially leading to convergence in fewer surrogate minimizations.
利用优化传递的衰减和活动图像的同时估计
本文研究了优化转移在层析图像重建中衰减和活动图像同时统计估计中的应用。虽然我们提出的技术具有更广泛的适用性,但我们关注的是通过注入后传输扫描协议获得的数据进行重建的问题。在本方案中,发射扫描数据补充了在患者接受放射性示踪剂注射后获得的传输扫描数据。该数据的负对数似然函数是活动和衰减图像的复杂函数,导致模型的目标函数难以最小化以进行估计。先前对这个问题的研究表明,当衰减或活动图像保持固定时,可以找到一个抛物面替代作为剩余变量的负对数似然函数。这导致了一种算法,其中模型的目标函数作为衰减和活动的函数交替最小化,使用优化传递技术。然而,在我们这里提出的工作中,我们开发了对数似然的二元替代函数,即作为衰减和活动变量的替代函数。因此,所有变量的同时最小化可以进行,潜在地导致在更少的代理最小化中收敛。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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