Gagnon Hervé, Grychtol Bartłomiej, Adler Andy
Department of Systems and Computer Engineering, Carleton University, Ottawa K1S 5B6, Canada.
Physiol Meas. 2015 Jun;36(6):1093-107. doi: 10.1088/0967-3334/36/6/1093. Epub 2015 May 26.
Electrical impedance tomography (EIT) provides low-resolution images of internal conductivity distributions, but is able to achieve relatively high temporal resolutions. Most EIT image reconstruction algorithms do not explicitly account for the temporal constraints on the measurements or physiological processes under investigation. Instead, algorithms typically assume both that the conductivity distribution does not change during the acquisition of each EIT data frame, and that frames can be reconstructed independently, without consideration of the correlation between images. A failure to account for these temporal effects will result in aliasing-related artefacts in images. Several methods have been proposed to compensate for these effects, including interpolation of raw data, and reconstruction algorithms using Kalman and temporal filtering. However, no systematic work has been performed to understand the severity of the temporal artefacts nor the extent to which algorithms can account for them. We seek to address this need by developing a temporal comparison framework and figures of merit to assess the ability of reconstruction algorithms to account for temporal effects. Using this approach, we compare combinations of three reconstruction algorithms using three EIT data frame types: perfect, realistic and interpolated. The results show that, without accounting for temporal effects, artefacts are present in images for dynamic conductivity contrasts at frequencies 10-20 times slower than the frame rate. The proposed methods show some improvements in reducing these artefacts.
电阻抗断层成像(EIT)可提供内部电导率分布的低分辨率图像,但能够实现相对较高的时间分辨率。大多数EIT图像重建算法并未明确考虑所研究测量或生理过程的时间约束。相反,算法通常假定在每个EIT数据帧采集期间电导率分布不变,并且各帧可独立重建,而不考虑图像之间的相关性。不考虑这些时间效应会导致图像中出现与混叠相关的伪影。已经提出了几种方法来补偿这些效应,包括原始数据插值以及使用卡尔曼滤波和时间滤波的重建算法。然而,尚未开展系统性工作来了解时间伪影的严重程度以及算法能够考虑这些伪影的程度。我们试图通过开发一个时间比较框架和品质因数来满足这一需求,以评估重建算法考虑时间效应的能力。使用这种方法,我们比较了三种重建算法在三种EIT数据帧类型(完美、真实和插值)下的组合。结果表明,在不考虑时间效应的情况下,对于动态电导率对比,当频率比帧率慢10至20倍时,图像中会出现伪影。所提出的方法在减少这些伪影方面显示出一些改进。