Ability of ICU Health-Care Professionals to Identify Patient-Ventilator Asynchrony Using Waveform Analysis

Ivan I Ramirez, Daniel H Arellano, Rodrigo S Adasme, Jose M Landeros, Francisco A Salinas, Alvaro G Vargas, Francisco J Vasquez, Ignacio A Lobos, Magdalena L Oyarzun, Ruben D Restrepo, Ivan I Ramirez, Daniel H Arellano, Rodrigo S Adasme, Jose M Landeros, Francisco A Salinas, Alvaro G Vargas, Francisco J Vasquez, Ignacio A Lobos, Magdalena L Oyarzun, Ruben D Restrepo

Abstract

Background: Waveform analysis by visual inspection can be a reliable, noninvasive, and useful tool for detecting patient-ventilator asynchrony. However, it is a skill that requires a properly trained professional.

Methods: This observational study was conducted in 17 urban ICUs. Health-care professionals (HCPs) working in these ICUs were asked to recognize different types of asynchrony shown in 3 evaluation videos. The health-care professionals were categorized according to years of experience, prior training in mechanical ventilation, profession, and number of asynchronies identified correctly.

Results: A total of 366 HCPs were evaluated. Statistically significant differences were found when HCPs with and without prior training in mechanical ventilation (trained vs non-trained HCPs) were compared according to the number of asynchronies detected correctly (of the HCPs who identified 3 asynchronies, 63 [81%] trained vs 15 [19%] non-trained, P < .001; 2 asynchronies, 72 [65%] trained vs 39 [35%] non-trained, P = .034; 1 asynchrony, 55 [47%] trained vs 61 [53%] non-trained, P = .02; 0 asynchronies, 17 [28%] trained vs 44 [72%] non-trained, P < .001). HCPs who had prior training in mechanical ventilation also increased, nearly 4-fold, their odds of identifying ≥2 asynchronies correctly (odds ratio 3.67, 95% CI 1.93-6.96, P < .001). However, neither years of experience nor profession were associated with the ability of HCPs to identify asynchrony.

Conclusions: HCPs who have specific training in mechanical ventilation increase their ability to identify asynchrony using waveform analysis. Neither experience nor profession proved to be a relevant factor to identify asynchrony correctly using waveform analysis.

Keywords: critical care; intensive care unit; mechanical ventilation; patient-ventilator asynchrony; ventilator graphics; waveforms.

Copyright © 2017 by Daedalus Enterprises.

Source: PubMed

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