Freiberger Manuel, Egger Herbert, Scharfetter Hermann
IEEE Trans Biomed Eng. 2010 Nov;57(11). doi: 10.1109/TBME.2010.2053035. Epub 2010 Jun 17.
Fluorescence optical tomography is a non-invasive imaging modality that employs the absorption and re-emission of light by fluorescent dyes. The aim is to reconstruct the fluorophore distribution in a body from measurements of light intensities at the boundary. Due to the diffusive nature of light propagation in tissue, fluorescence tomography is a nonlinear and severely ill-posed problem, and some sort of regularization is required for a stable solution. In this paper we investigate reconstruction methods based on Tikhonov regularization with nonlinear penalty terms, namely total-variation regularization and a levelset-type method using a nonlinear parameterization of the unknown function. Moreover, we use the full threedimensional nonlinear forward model, which arises from the governing system of partial differential equations. We discuss the numerical realization of the regularization schemes by Newtontype iterations, present some details of the discretization by finite element methods, and outline the efficient implementation of sensitivity systems via adjoint methods. As we will demonstrate in numerical tests, the proposed nonlinear methods provide better reconstructions than standard methods based on linearized forward models and linear penalty terms. We will additionally illustrate, that the careful discretization of the methods derived on the continuous level allows to obtain reliable, mesh independent reconstruction algorithms.
荧光光学断层扫描是一种非侵入性成像方式,它利用荧光染料对光的吸收和再发射。其目的是根据边界处光强的测量值重建体内荧光团的分布。由于光在组织中传播具有扩散特性,荧光断层扫描是一个非线性且严重不适定的问题,需要某种正则化来获得稳定解。在本文中,我们研究基于带有非线性惩罚项的蒂霍诺夫正则化的重建方法,即总变分正则化和使用未知函数非线性参数化的水平集类型方法。此外,我们使用由偏微分方程控制体系产生的全三维非线性正向模型。我们通过牛顿型迭代讨论正则化方案的数值实现,给出有限元方法离散化的一些细节,并概述通过伴随方法有效实现灵敏度系统。正如我们将在数值测试中展示的那样,所提出的非线性方法比基于线性化正向模型和线性惩罚项的标准方法能提供更好的重建效果。我们还将说明,对在连续层面上推导的方法进行仔细离散化能够获得可靠的、与网格无关的重建算法。