Mayer Michael, Brunner Patricia, Merwa Robert, Smolle-Jüttner Freyja Maria, Maier Alfred, Scharfetter Hermann
Institute of Medical Engineering, Graz University of Technology, Austria.
Physiol Meas. 2006 May;27(5):S93-101. doi: 10.1088/0967-3334/27/5/S08. Epub 2006 Apr 18.
The basic purpose of electrical impedance tomography (EIT) is the reconstruction of conductivity distributions. While multifrequency measurements are of common use, the majority of reconstructed images are still conductivity distributions from one single frequency. More interesting than conductivities at each frequency are electrical tissue parameters, which describe the frequency-dependent conductivity changes of tissue. These parameters give information about physiological or electrical properties of tissues. By using this spectral information, a classification of different tissue types is possible. To get a distribution of tissue parameters, usually a posterior fitting of a tissue model to the conductivity spectra obtained with classical reconstruction algorithms at various frequencies is used. In this work, a single-step reconstruction algorithm for differential imaging was developed for the direct estimation of Cole parameters. This method is termed differential parametric reconstruction. The Cole model was used as the underlying tissue model, where only the relative changes of the two conductivity parameters sigma(0) and sigma(infinity) were reconstructed and the other two parameters of the model which are less identifiable were set to constant values. The reconstruction algorithm was tested with simulated noisy datasets and real measurement data from EIT measurements on the human thorax. These measurements were taken from healthy subjects and from patients with a serious lung injury. The new method yields a good image quality and higher robustness against noise compared to conventional reconstruction methods.
电阻抗断层成像(EIT)的基本目的是重建电导率分布。虽然多频测量很常用,但大多数重建图像仍然是单一频率下的电导率分布。比每个频率下的电导率更有趣的是组织电参数,它描述了组织随频率变化的电导率变化。这些参数提供了有关组织生理或电学特性的信息。通过使用这种频谱信息,可以对不同组织类型进行分类。为了获得组织参数的分布,通常采用将组织模型后验拟合到通过经典重建算法在不同频率下获得的电导率谱的方法。在这项工作中,开发了一种用于差分成像的单步重建算法,用于直接估计科尔参数。该方法被称为差分参数重建。采用科尔模型作为基础组织模型,其中仅重建两个电导率参数σ(0)和σ(∞)的相对变化,并将模型中其他较难识别的两个参数设置为恒定值。使用模拟噪声数据集和来自人体胸部EIT测量的实际测量数据对重建算法进行了测试。这些测量数据来自健康受试者和患有严重肺损伤的患者。与传统重建方法相比,新方法具有良好的图像质量和更高的抗噪声鲁棒性。