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Analysis and compensation for errors in electrical impedance tomography images and ventilation-related measures due to serial data collection

机译:分析和补偿由于串行数据收集而引起的电阻抗断层图像和通风相关措施的错误

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摘要

Electrical impedance tomography (EIT) is increasingly being used as a bedside tool for monitoring regional lung ventilation. However, most clinical systems use serial data collection which, if uncorrected, results in image distortion, particularly at high breathing rates. The objective of this study was to determine the extent to which this affects derived parameters. Raw EIT data were acquired with the GOE-MF II EIT device (CareFusion, Höchberg, Germany) at a scan rate of 13 images/s during both spontaneous breathing and mechanical ventilation. Boundary data for periods of undisturbed tidal breathing were corrected for serial data collection errors using a Fourier based algorithm. Images were reconstructed for both the corrected and original data using the GREIT algorithm, and parameters describing the filling characteristics of the right and left lung derived on a breath by breath basis. Values from the original and corrected data were compared using paired t-tests. Of the 33 data sets, 23 showed significant differences in filling index for at least one region, 11 had significant differences in calculated tidal impedance change and 12 had significantly different filling fractions (p = 0.05). We conclude that serial collection errors should be corrected before image reconstruction to avoid clinically misleading results.Electronic supplementary materialThe online version of this article (doi:10.1007/s10877-016-9920-y) contains supplementary material, which is available to authorized users.
机译:电阻抗断层扫描(EIT)越来越多地用作监测局部肺通气的床头工具。但是,大多数临床系统使用串行数据收集,如果不进行校正,则会导致图像失真,特别是在高呼吸频率下。这项研究的目的是确定影响衍生参数的程度。在自发呼吸和机械通气期间,使用GOE-MF II EIT设备(CareFusion,德国霍希贝格)获取原始EIT数据,扫描速率为13图像/秒。使用基于傅立叶的算法校正了连续潮气呼吸时间段的边界数据的连续数据收集错误。使用GREIT算法为校正后的数据和原始数据重建图像,并逐个呼吸地得出描述右肺和左肺填充特征的参数。使用配对的t检验比较原始数据和校正后的数据中的值。在33个数据集中,至少23个区域的填充指数存在23个显着差异,潮汐阻抗变化的11个具有显着差异,填充分数存在12个显着不同(p = 0.05)。我们得出结论,应在图像重建之前纠正系列采集错误,以避免产生临床误导的结果。电子补充材料本文的在线版本(doi:10.1007 / s10877-016-9920-y)包含补充材料,授权用户可以使用。

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