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Iterative Interpolative Pressure Reconstruction for Improved Respiratory Mechanics Estimation During Asynchronous Volume Controlled Ventilation

机译:改进异步体积控制通气期间呼吸力学估计的迭代插入压力重建

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Asynchronous events (AEs) during mechanical ventilation (MV) breathing support can lead to poor respiratory mechanics estimation, as the patient's attempts to breath affects the measured airway pressure and flow. An algorithm that allows improved model-based estimation of respiratory system elastance, E_(rs) during asynchronous volume-controlled MV was developed. This method reconstructs a pseudo airway pressure waveform for each breath, that is similar to a breath that was unaffected by asynchronous efforts. The reconstructed waveforms can be used to estimate true respiratory system mechanics. To test the proposed algorithm, 10 retrospective airway pressure and flow datasets were obtained from 6 MV patients. Each dataset contains 475-500 breaths. Of the 9/10 datasets which contained AEs, 8 experienced a decrease in E? mean absolute deviation (MAD) and the 5~(th)-95~(th) range (Range90) after pressure reconstruction. The median [maximum (max), minimum (min)] decrease in Range90 divided by median elastance, was 51.3% (67.4%,-16.7%). Additionally, the median elastance for reconstructed breaths in these datasets moved closer to the true, non-asynchronous, elastance value. The median elastance change was 48.7%'closer towards the true value, with a maximum shift of 93.4%. The one dataset which did not experience an improvement was found to have a varying pressure amplitude indicative of external factors affecting the MV treatment, rather than a deficiency in the pressure reconstruction. The algorithm demonstrates the ability to consistently enhance elastance estimation in MV patients.
机译:机械通气期间的异步事件(AES)(MV)呼吸载体可能导致呼吸力学估计不良,因为患者的呼吸试图影响测量的气道压力和流量。开发了一种允许改进基于模型的模型的呼吸系统弹性估计,E_(RS)在异步体积控制的MV期间开发。该方法为每次呼吸重建伪气道压力波形,类似于不受异步努力的呼吸。重建的波形可用于估计真正的呼吸系统力学。为了测试所提出的算法,从6名MV患者获得10个回顾性气道压力和流量数据集。每个数据集包含475-500呼吸。在包含AES的9/10数据集中,8次经历了e减少?压力重建后,平均绝对偏差(MAD)和5〜(TH)-95〜(TH)范围(范围90)。中位数[最大(最大),最小(最小)]的范围50分除了中值弹性,为51.3%(67.4%, - 16.7%)。此外,这些数据集中重建呼吸的中位数弹性移动更接近真实,不同步的弹性值。中位数弹性变化为48.7%,更接近真实价值,最大转变为93.4%。没有经历改进的一个数据集被发现具有不同的压力幅度,这表明对影响MV处理的外部因素,而不是压力重建的缺陷。该算法表明能够在MV患者中一致地增强弹性估计。

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