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极早产儿呼吸行为的自动分析与拔管准备情况

Automated analysis of respiratory behavior in extremely preterm infants and extubation readiness.

作者信息

Robles-Rubio C A, Kaczmarek J, Chawla S, Kovacs L, Brown K A, Kearney R E, Sant Anna G M

机构信息

Department of Biomedical Engineering, McGill University, Montreal, Canada.

出版信息

Pediatr Pulmonol. 2015 May;50(5):479-86. doi: 10.1002/ppul.23151. Epub 2015 Jan 20.

Abstract

BACKGROUND

Rates of extubation failure of extremely preterm infants remain high. Analysis of breathing patterns variability during spontaneous breathing under endotracheal tube continuous positive airway pressure (ETT-CPAP) is a potential tool to predict extubation readiness.

OBJECTIVE

To investigate if automated analysis of respiratory signals would reveal differences in respiratory behavior between infants that were successfully extubated or not.

METHODS

Respiratory Inductive Plethysmography (RIP) signals were recorded during ETT-CPAP just prior to extubation. Signals were digitized, and analyzed using an Automated Unsupervised Respiratory Event Analysis (AUREA). Extubation failure was defined as reintubation within 72 hr. Statistical differences between infants who were successfully extubated or failed were calculated.

RESULTS

A total of 56 infants were enrolled and one was excluded due to instability during the ETT-CPAP; 11 out of 55 infants studied failed extubation (20%). No differences in demographics were observed between the success and failure groups. Significant differences on the variability of some respiratory parameters or 'metrics' estimated by AUREA were observed between the 2 groups. Indeed, a simple classification using the variability of two metrics of respiratory behavior predicted extubation failure with high accuracy.

CONCLUSION

Automated analysis of respiratory behavior during a short ETT-CPAP period may help in the prediction of extubation readiness in extremely preterm infants.

摘要

背景

极早产儿拔管失败率仍然很高。分析气管插管持续气道正压通气(ETT-CPAP)期间自主呼吸时的呼吸模式变异性是预测拔管准备情况的一种潜在工具。

目的

探讨呼吸信号的自动分析是否能揭示成功拔管和未成功拔管婴儿之间的呼吸行为差异。

方法

在拔管前的ETT-CPAP期间记录呼吸感应体积描记法(RIP)信号。信号数字化后,使用自动无监督呼吸事件分析(AUREA)进行分析。拔管失败定义为在72小时内再次插管。计算成功拔管和失败婴儿之间的统计学差异。

结果

共纳入56例婴儿,1例因ETT-CPAP期间不稳定而被排除;55例研究婴儿中有11例拔管失败(20%)。成功组和失败组在人口统计学上未观察到差异。两组之间在AUREA估计的一些呼吸参数或“指标”的变异性上观察到显著差异。事实上,使用两种呼吸行为指标的变异性进行简单分类可高度准确地预测拔管失败。

结论

在短时间的ETT-CPAP期间对呼吸行为进行自动分析可能有助于预测极早产儿的拔管准备情况。

https://cdn.ncbi.nlm.nih.gov/pmc/blobs/1ce4/6680183/f5aef8071ebd/PPUL-50-479-g001.jpg

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