Baysal U, Eyüboğlu B M
Department of Electrical and Electronics Engineering, Hacettepe University, Ankara, Turkey.
Phys Med Biol. 2000 Aug;45(8):2373-88. doi: 10.1088/0031-9155/45/8/322.
Geometrical uncertainties (organ boundary variation and electrode position uncertainties) are the biggest sources of error in estimating electrical resistivity of tissues from body surface measurements. In this study, in order to decrease estimation errors, the statistically constrained minimum mean squared error estimation algorithm (MiMSEE) is constrained with a priori knowledge of the geometrical uncertainties in addition to the constraints based on geometry, resistivity range, linearization and instrumentation errors. The MiMSEE calculates an optimum inverse matrix, which maps the surface measurements to the unknown resistivity distribution. The required data are obtained from four-electrode impedance measurements, similar to injected-current electrical impedance tomography (EIT). In this study, the surface measurements are simulated by using a numerical thorax model. The data are perturbed with additive instrumentation noise. Simulated surface measurements are then used to estimate the tissue resistivities by using the proposed algorithm. The results are compared with the results of conventional least squares error estimator (LSEE). Depending on the region, the MiMSEE yields an estimation error between 0.42% and 31.3% compared with 7.12% to 2010% for the LSEE. It is shown that the MiMSEE is quite robust even in the case of geometrical uncertainties.
几何不确定性(器官边界变化和电极位置不确定性)是通过体表测量估计组织电阻率时最大的误差来源。在本研究中,为了减少估计误差,统计约束最小均方误差估计算法(MiMSEE)除了基于几何、电阻率范围、线性化和仪器误差的约束外,还利用几何不确定性的先验知识进行约束。MiMSEE计算一个最优逆矩阵,该矩阵将表面测量值映射到未知的电阻率分布。所需数据通过四电极阻抗测量获得,类似于注入电流电阻抗断层成像(EIT)。在本研究中,使用数值胸部模型模拟表面测量。数据被加性仪器噪声干扰。然后使用所提出的算法,利用模拟表面测量来估计组织电阻率。将结果与传统最小二乘误差估计器(LSEE)的结果进行比较。根据区域不同,MiMSEE产生的估计误差在0.42%至31.3%之间,而LSEE的误差为7.12%至2010%。结果表明,即使在存在几何不确定性的情况下,MiMSEE也相当稳健。