电阻抗断层扫描头部成像的贝叶斯实验设计

IF 1.9 4区 数学 Q1 MATHEMATICS, APPLIED
N. Hyvönen, A. Jääskeläinen, R. Maity, A. Vavilov
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引用次数: 0

摘要

SIAM 应用数学杂志》,第 84 卷第 4 期,第 1718-1741 页,2024 年 8 月。 摘要这项研究考虑了电阻抗断层扫描头部成像中电极位置的优化问题。研究的动机是在监测中风患者病情时,最大限度地提高电极测量对电导率变化的灵敏度,这就需要采用完整电极模型的线性化版本作为前向模型。该算法的基础是通过电极位置的梯度下降找到(局部)A 最佳测量配置。高效计算完整电极模型所需的导数是重点之一。本文介绍了两种算法,并对三层头部模型进行了数值测试。第一种算法假定了一个感兴趣区域和大脑电导率的高斯先验值,它可以离线运行,即在进行任何测量之前。第二种算法首先通过将滞后扩散迭代与连续线性化相结合,计算中风造成的传导异常与初始电极配置的重构,可解释为产生近似高斯概率密度的传导扰动。然后,它采用第一种算法,以构建的密度为先验值,为可用电极找到信息量更大的新位置。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Bayesian Experimental Design for Head Imaging by Electrical Impedance Tomography
SIAM Journal on Applied Mathematics, Volume 84, Issue 4, Page 1718-1741, August 2024.
Abstract. This work considers the optimization of electrode positions in head imaging by electrical impedance tomography. The study is motivated by maximizing the sensitivity of electrode measurements to conductivity changes when monitoring the condition of a stroke patient, which justifies adopting a linearized version of the complete electrode model as the forward model. The algorithm is based on finding a (locally) A-optimal measurement configuration via gradient descent with respect to the electrode positions. The efficient computation of the needed derivatives of the complete electrode model is one of the focal points. Two algorithms are introduced and numerically tested on a three-layer head model. The first one assumes a region of interest and a Gaussian prior for the conductivity in the brain, and it can be run offline, i.e., prior to taking any measurements. The second algorithm first computes a reconstruction of the conductivity anomaly caused by the stroke with an initial electrode configuration by combining lagged diffusivity iteration with sequential linearizations, which can be interpreted to produce an approximate Gaussian probability density for the conductivity perturbation. It then resorts to the first algorithm to find new, more informative positions for the available electrodes with the constructed density as the prior.
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来源期刊
CiteScore
3.60
自引率
0.00%
发文量
79
审稿时长
12 months
期刊介绍: SIAM Journal on Applied Mathematics (SIAP) is an interdisciplinary journal containing research articles that treat scientific problems using methods that are of mathematical interest. Appropriate subject areas include the physical, engineering, financial, and life sciences. Examples are problems in fluid mechanics, including reaction-diffusion problems, sedimentation, combustion, and transport theory; solid mechanics; elasticity; electromagnetic theory and optics; materials science; mathematical biology, including population dynamics, biomechanics, and physiology; linear and nonlinear wave propagation, including scattering theory and wave propagation in random media; inverse problems; nonlinear dynamics; and stochastic processes, including queueing theory. Mathematical techniques of interest include asymptotic methods, bifurcation theory, dynamical systems theory, complex network theory, computational methods, and probabilistic and statistical methods.
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