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首页> 外文期刊>Medical and Biological Engineering and Computing: Journal of the International Federation for Medical and Biological Engineering >Robustness of two different methods of monitoring respiratory system compliance during mechanical ventilation
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Robustness of two different methods of monitoring respiratory system compliance during mechanical ventilation

机译:两种不同方法监测机械通气期间呼吸系统符合性的鲁棒性

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摘要

Robustness measures the performance of estimation methods when they work under non-ideal conditions. We compared the robustness of artificial neural networks (ANNs) and multilinear fitting (MLF) methods in estimating respiratory system compliance (C (RS)) during mechanical ventilation (MV). Twenty-four anaesthetized pigs underwent MV. Airway pressure, flow and volume were recorded at fixed intervals after the induction of acute lung injury. After consecutive mechanical breaths, an inspiratory pause (BIP) was applied in order to calculate C-RS using the interrupter technique. From the breath preceding the BIP, ANN and MLF had to compute C-RS in the presence of two types of perturbations: transient sensor disconnection (TD) and random noise (RN). Performance of the two methods was assessed according to Bland and Altman. The ANN presented a higher bias and scatter than MLF during the application of RN, except when RN was lower than 2% of peak airway pressure. During TD, MLF algorithm showed a higher bias and scatter than ANN. After the application of RN, ANN and MLF maintain a stable performance, although MLF shows better results. ANNs have a more stable performance and yield a more robust estimation of C (RS) than MLF in conditions of transient sensor disconnection.
机译:鲁棒性测量在非理想条件下工作时估算方法的性能。我们将人工神经网络(ANNS)和多线性配件(MLF)方法的稳健性进行了比较估算机械通风期间呼吸系统依从性(C(RS))。二十四只无麻醉猪的MV。在急性肺损伤诱导后,在固定间隔记录气道压力,流量和体积。在连续机械呼吸后,应用了吸气暂停(BIP)以便使用断液器技术计算C-RS。从之前的BIP,ANN和MLF的呼吸必须在两种类型的扰动存在下计算C-RS:瞬态传感器断开(TD)和随机噪声(RN)。根据Bland和Altman评估这两种方法的性能。在施用RN期间,该ANN呈现比MLF更高的偏差和散射,除非rn低于峰值气道压力的2%。在TD期间,MLF算法显示比ANN更高的偏差和散射。在施用RN,ANN和MLF后保持稳定的性能,尽管MLF显示出更好的结果。在瞬态传感器断开条件下,ANNS具有更稳定的性能并产生比MLF更强大的C(RS)的估计。

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