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机械通气期间无效触发和双重触发的自动检测

Automatic detection of ineffective triggering and double triggering during mechanical ventilation.

作者信息

Mulqueeny Qestra, Ceriana Piero, Carlucci Annalisa, Fanfulla Francesco, Delmastro Monica, Nava Stefano

机构信息

ResMed, Sydney, Australia.

出版信息

Intensive Care Med. 2007 Nov;33(11):2014-8. doi: 10.1007/s00134-007-0767-z. Epub 2007 Jul 5.

Abstract

OBJECTIVE

Imperfect patient-ventilator interaction is common during assisted ventilation, and the detection of clinically relevant mismatching requires visual monitoring of the ventilator screen. We have assessed the feasibility, sensitivity and specificity of an algorithm embedded in a ventilator system that is able to automatically detect the occurrence of ineffective triggering and double triggering in real time.

DESIGN

Prospective study.

SETTING

Respiratory intensive care unit.

METHODS

Twenty patients undergoing pressure-support ventilation, either non-invasively (NIV, n=10) or conventionally ventilated (n=10), were studied.

MEASUREMENTS

The detection of ineffective triggering and double triggering from the algorithm was compared by two operators with the "real" occurrence of the phenomena as assessed using the transdiaphragmatic pressure (Pdi).

RESULTS

Seven of the 20 patients exhibited gross mismatching, while in the remaining patients patient-ventilator mismatching was artificially induced using a pressure control, with a low respiratory rate. Ineffective triggering and double triggering were identified by the operators in 507 and 19 of the 3343 analyzed breaths, respectively. False positives were significantly more frequent in the NIV group than with conventional ventilation. The algorithm had an overall sensitivity of 91% and specificity of 97%. Specificity was statistically higher in the conventional ventilated group than with NIV (99% vs. 95%, p<0.05).

CONCLUSIONS

We have demonstrated the feasibility and efficacy of a new algorithm to detect the occurrence of impaired patient-ventilator interaction during mechanical ventilation in real time. This software may help the clinician in the identification of this problem, which has been shown to have important clinical consequences.

摘要

目的

在辅助通气过程中,患者与呼吸机的相互作用不完善很常见,而检测临床相关的不匹配需要对呼吸机屏幕进行视觉监测。我们评估了一种嵌入呼吸机系统的算法的可行性、敏感性和特异性,该算法能够实时自动检测无效触发和双重触发的发生情况。

设计

前瞻性研究。

设置

呼吸重症监护病房。

方法

对20例接受压力支持通气的患者进行研究,其中无创通气(NIV,n = 10)或传统通气(n = 10)。

测量

两名操作人员将算法检测到的无效触发和双重触发与使用跨膈压(Pdi)评估的现象的“实际”发生情况进行比较。

结果

20例患者中有7例表现出明显的不匹配,而其余患者通过压力控制人为诱导患者与呼吸机不匹配,呼吸频率较低。在分析的3343次呼吸中,操作人员分别识别出507次无效触发和19次双重触发。NIV组的假阳性比传统通气组更频繁。该算法的总体敏感性为91%,特异性为97%。传统通气组的特异性在统计学上高于NIV组(99%对95%,p<0.05)。

结论

我们已经证明了一种新算法在实时检测机械通气过程中患者与呼吸机相互作用受损情况的可行性和有效性。该软件可能有助于临床医生识别这一问题,该问题已被证明具有重要的临床后果。

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