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An efficient method for model refinement in diffuse optical tomography

机译:扩散光学层析成像中模型细化的有效方法

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Diffuse optical tomography (DOT) is a non-linear, ill-posed, boundary value and optimization problem which necessitates regularization. Also, Bayesian methods are suitable owing to measurements data are sparse and correlated. In such problems which are solved with iterative methods, for stabilization and better convergence, the solution space must be small. These constraints subject to extensive and overdetermined system of equations which model retrieving criteria specially total least squares (TLS) must to refine model error. Using TLS is limited to linear systems which is not achievable when applying traditional Bayesian methods. This paper presents an efficient method for model refinement using regularized total least squares (RTLS) for treating on linearized DOT problem, having maximum a posteriori (MAP) estimator and Tikhonov regulator. This is done with combination Bayesian and regularization tools as preconditioner matrices, applying them to equations and then using RTLS to the resulting linear equations. The preconditioning matrixes are guided by patient specific information as well as a priori knowledge gained from the training set. Simulation results illustrate that proposed method improves the image reconstruction performance and localize the abnormally well. (c) 2007 Elsevier B.V. All rights reserved.
机译:漫射光学层析成像(DOT)是非线性,不适定边界值和优化问题,需要进行正则化。同样,由于测量数据稀疏和相关,所以贝叶斯方法是合适的。在用迭代方法解决的此类问题中,为了稳定和更好地收敛,解决方案空间必须很小。这些约束受方程式的广泛和超额确定的影响,这些方程式对检索标准进行建模,尤其是总最小二乘(TLS)必须精化模型误差。使用TLS仅限于线性系统,这在应用传统贝叶斯方法时是无法实现的。本文提出了一种使用正则化总最小二乘(RTLS)进行线性DOT问题处理的模型优化方法,该方法具有最大后验(MAP)估计量和Tikhonov调节器。这是通过将贝叶斯和正则化工具作为前置条件矩阵进行组合,将其应用于方程式,然后将RTLS应用于最终的线性方程式。预处理矩阵由患者特定信息以及从训练集中获得的先验知识指导。仿真结果表明,该方法提高了图像重建性能,并能很好地定位异常。 (c)2007 Elsevier B.V.保留所有权利。

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