Biguri A, Grychtol B, Adler A, Soleimani M
Engineering Tomography Lab (ETL), Electronic and Electrical Engineering, University of Bath, Bath, North East Somerset BA2 7AY, UK.
Physiol Meas. 2015 Jun;36(6):1119-35. doi: 10.1088/0967-3334/36/6/1119. Epub 2015 May 26.
Electrical impedance tomography (EIT) has shown significant promise for lung imaging. One key challenge for EIT in this application is the movement of electrodes during breathing, which introduces artefacts in reconstructed images. Various approaches have been proposed to compensate for electrode movement, but no comparison of these approaches is available. This paper analyses boundary model mismatch and electrode movement in lung EIT. The aim is to evaluate the extent to which various algorithms tolerate movement, and to determine if a patient specific model is required for EIT lung imaging. Movement data are simulated from a CT-based model, and image analysis is performed using quantitative figures of merit. The electrode movement is modelled based on expected values of chest movement and an extended Jacobian method is proposed to make use of exterior boundary tracking. Results show that a dynamical boundary tracking is the most robust method against any movement, but is computationally more expensive. Simultaneous electrode movement and conductivity reconstruction algorithms show increased robustness compared to only conductivity reconstruction. The results of this comparative study can help develop a better understanding of the impact of shape model mismatch and electrode movement in lung EIT.
电阻抗断层成像(EIT)在肺部成像方面已显示出巨大的前景。EIT在该应用中的一个关键挑战是呼吸过程中电极的移动,这会在重建图像中引入伪影。已经提出了各种方法来补偿电极移动,但尚无这些方法的比较。本文分析了肺部EIT中的边界模型不匹配和电极移动。目的是评估各种算法对移动的容忍程度,并确定EIT肺部成像是否需要患者特定模型。从基于CT的模型模拟移动数据,并使用定量品质因数进行图像分析。基于胸部移动的预期值对电极移动进行建模,并提出一种扩展雅可比方法以利用外部边界跟踪。结果表明,动态边界跟踪是针对任何移动最稳健的方法,但计算成本更高。与仅进行电导率重建相比,同时进行电极移动和电导率重建算法显示出更高的稳健性。这项比较研究的结果有助于更好地理解形状模型不匹配和电极移动在肺部EIT中的影响。