IEEE Trans Med Imaging. 2017 Nov;36(11):2308-2318. doi: 10.1109/TMI.2017.2718028. Epub 2017 Jun 21.
In fluorescence optical tomography, many works in the literature focus on the linear reconstruction problem to obtain the fluorescent yield or the linearized reconstruction problem to obtain the absorption coefficient. The nonlinear reconstruction problem, to reconstruct the fluorophore absorption coefficient, is of interest in imaging studies as it presents the possibility of better reconstructions owing to a more appropriate model. Accurate and computationally efficient forward models are also critical in the reconstruction process. The approximation to the radiative transfer equation (RTE) is gaining importance for tomographic reconstructions owing to its computational advantages over the full RTE while being more accurate and applicable than the commonly used diffusion approximation. This paper presents Gauss-Newton-based fully nonlinear reconstruction for the approximated fluorescence optical tomography problem with respect to shape as well as the conventional finite-element method-based representations. The contribution of this paper is the Frechet derivative calculations for this problem and demonstration of reconstructions in both representations. For the shape reconstructions, radial-basis-function represented level-set-based shape representations are used. We present reconstructions for tumor-mimicking test objects in scattering and absorption dominant settings, respectively, for moderately noisy data sets in order to demonstrate the viability of the formulation. Comparisons are presented between the nonlinear and linearized reconstruction schemes in an element wise setting to illustrate the benefits of using the former especially for absorption dominant media.
在荧光光学层析成像中,许多文献都集中在获得荧光产率的线性重建问题或获得吸收系数的线性化重建问题上。由于更合适的模型,吸收系数的非线性重建问题在成像研究中很有意义,因为它有可能实现更好的重建。准确且高效的正向模型在重建过程中也很关键。由于其在计算上的优势,相对于完整的 RTE,对辐射传输方程(RTE)的近似在层析重建中变得越来越重要,同时它比常用的扩散近似更准确且适用。本文提出了基于高斯-牛顿的完全非线性重建,针对形状以及传统的基于有限元方法的表示,针对带有形状的近似荧光光学层析成像问题。本文的贡献在于针对这个问题进行了 Frechet 导数计算,并展示了两种表示方法的重建结果。对于形状重建,我们使用基于径向基函数的水平集形状表示。我们分别在散射和吸收主导的设置下,针对中度噪声数据集的肿瘤模拟测试对象进行了重建,以证明该方法的可行性。在元素层面上,我们还比较了非线性和线性化重建方案,说明了使用前者的好处,特别是在吸收主导的介质中。