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首页> 外文期刊>International journal for uncertainty quantifications >RECONSTRUCTION OF DOMAIN BOUNDARY AND CONDUCTIVITY IN ELECTRICAL IMPEDANCE TOMOGRAPHY USING THE APPROXIMATION ERROR APPROACH
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RECONSTRUCTION OF DOMAIN BOUNDARY AND CONDUCTIVITY IN ELECTRICAL IMPEDANCE TOMOGRAPHY USING THE APPROXIMATION ERROR APPROACH

机译:用近似误差法重建电阻抗层析成像中的域界和电导率

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摘要

Electrical impedance tomography (EIT) is a highly unstable problem with respect to measurement and modeling errors. With clinical measurements, knowledge about the body shape is usually uncertain. Since the use of an incorrect model domain in the measurement model is bound to lead to severe estimation errors, one possibility is to estimate both the conductivity and parametrization of the domain boundary. This could in principle be carried out using the Bayesian inversion paradigm and Markov chain Monte Carlo sampling, but such an approach would lead in clinical situation to an impractical solution because of the excessive computational complexity. In this paper, we adapt the so-called approximation error approach for approximate recovery of the domain boundary and the conductivity. In the approximation error approach, the modeling error caused by an inaccurately known boundary is treated as an auxiliary noise process in the measurement model and sample statistics for the noise process are estimated based on the prior models of the conductivity and boundary shape. Using the approximation error model, we reconstruct the conductivity and a low rank approximation for the realization of the modeling error, and then recover an approximation for the domain boundary using the joint distribution of the modeling error and the boundary parametrization. We also compute approximate spread estimates for the reconstructed boundary. We evaluate the approach with simulated examples of thorax imaging and also with experimental data from a laboratory setting. The reconstructed boundaries and posterior uncertainty are feasible; in particular, the actual domain boundaries are essentially within the posterior spread estimates.
机译:就测量和建模误差而言,电阻抗断层扫描(EIT)是一个非常不稳定的问题。通过临床测量,关于身体形状的知识通常是不确定的。由于在测量模型中使用不正确的模型域必然会导致严重的估计误差,因此一种可能性是估计域边界的电导率和参数化。原则上,这可以使用贝叶斯反演范式和马尔可夫链蒙特卡洛采样来进行,但是由于计算量过多,这种方法在临床上会导致不切实际的解决方案。在本文中,我们将所谓的近似误差方法用于域边界和电导率的近似恢复。在逼近误差方法中,由不准确的边界引起的建模误差在测量模型中被视为辅助噪声过程,并且基于现有的电导率和边界形状模型来估算噪声过程的样本统计量。使用逼近误差模型,我们重建电导率和低阶逼近以实现建模误差,然后使用建模误差和边界参数化的联合分布来恢复域边界的逼近。我们还计算了重建边界的近似扩展估计。我们通过胸部成像的模拟示例以及实验室设置的实验数据来评估该方法。重建的边界和后验不确定性是可行的;特别是,实际域边界基本上在后扩展估计范围内。

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