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通过递归最小二乘法估计时变呼吸力学参数

Estimation of time-varying respiratory mechanical parameters by recursive least squares.

作者信息

Lauzon A M, Bates J H

机构信息

Meakins-Christie Laboratories, McGill University, Montreal, Quebec, Canada.

出版信息

J Appl Physiol (1985). 1991 Sep;71(3):1159-65. doi: 10.1152/jappl.1991.71.3.1159.

Abstract

Continuous estimation of time-varying respiratory mechanical parameters is required to fully characterize the time course of bronchoconstriction. To achieve such estimation, we developed an estimator that uses the recursive linear least-squares algorithm to fit the equation Ptr = RV + EV + K to measurements of tracheal pressure (Ptr) and flow (V). The volume (V) is obtained by numerical integration of V. The estimator has a finite memory with length into the past at each point in time that varies inversely with the difference between the current measurement of Ptr and that predicted by the model, to allow the algorithm to track rapidly varying parameters (R, E, and K). V usually exhibits significant drift and must be corrected. Of the several correction methods investigated, subtraction of the recursively weighted average of V before integration to V was found to perform best. The estimator was tested on simulated noisy data where it successfully followed a fivefold increase in R and a twofold increase in E occurring over 10 s. Three dogs and two cats were anesthetized, paralyzed, tracheostomized, and challenged with a bolus of methacholine (approximately 13 mg/kg iv). Increases of 3- to 10-fold were observed in R and 2- to 3-fold in E, beginning within 10-40 s after the bolus injection. In some animals we found that the increase in E occurred more slowly than that in R, which the V signal suggested was due to dynamic hyperinflation of the lungs. These results demonstrate that our recursive estimator is able to track rapid changes in respiratory mechanical parameters during bronchoconstrictor challenge.

摘要

为了全面描述支气管收缩的时间进程,需要对时变呼吸力学参数进行连续估计。为实现这种估计,我们开发了一种估计器,它使用递归线性最小二乘法算法,将方程Ptr = RV + EV + K拟合到气管压力(Ptr)和流量(V)的测量值上。体积(V)通过对V进行数值积分获得。该估计器具有有限记忆,在每个时间点其记忆长度延伸到过去,且与Ptr的当前测量值和模型预测值之间的差异成反比,以使算法能够跟踪快速变化的参数(R、E和K)。V通常会出现显著漂移,必须进行校正。在研究的几种校正方法中,发现积分前减去V的递归加权平均值效果最佳。该估计器在模拟噪声数据上进行了测试,在该数据中它成功跟踪了10秒内R增加五倍和E增加两倍的情况。对三只狗和两只猫进行麻醉、麻痹、气管切开,并静脉注射一剂乙酰甲胆碱(约13 mg/kg)进行激发试验。推注后10 - 40秒内,观察到R增加3至10倍,E增加2至3倍。在一些动物中,我们发现E的增加比R的增加更慢,V信号表明这是由于肺动态过度充气所致。这些结果表明,我们的递归估计器能够在支气管收缩激发试验期间跟踪呼吸力学参数的快速变化。

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