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Prediction of Extubation readiness in extremely preterm infants by the automated analysis of cardiorespiratory behavior: study protocol

机译:通过自动分析心肺行为预测极早产儿的拔管准备:研究方案

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Background Extremely preterm infants (≤ 28?weeks gestation) commonly require endotracheal intubation and mechanical ventilation (MV) to maintain adequate oxygenation and gas exchange. Given that MV is independently associated with important adverse outcomes, efforts should be made to limit its duration. However, current methods for determining extubation readiness are inaccurate and a significant number of infants fail extubation and require reintubation, an intervention that may be associated with increased morbidities. A variety of objective measures have been proposed to better define the optimal time for extubation, but none have proven clinically useful. In a pilot study, investigators from this group have shown promising results from sophisticated, automated analyses of cardiorespiratory signals as a predictor of extubation readiness. The aim of this study is to develop an automated predictor of extubation readiness using a combination of clinical tools along with novel and automated measures of cardiorespiratory behavior, to assist clinicians in determining when extremely preterm infants are ready for extubation. Methods In this prospective, multicenter observational study, cardiorespiratory signals will be recorded from 250 eligible extremely preterm infants with birth weights ≤1250?g immediately prior to their first planned extubation. Automated signal analysis algorithms will compute a variety of metrics for each infant, and machine learning methods will then be used to find the optimal combination of these metrics together with clinical variables that provide the best overall prediction of extubation readiness. Using these results, investigators will develop an Automated system for Prediction of EXtubation (APEX) readiness that will integrate the software for data acquisition, signal analysis, and outcome prediction into a single application suitable for use by medical personnel in the neonatal intensive care unit. The performance of APEX will later be prospectively validated in 50 additional infants. Discussion The results of this research will provide the quantitative evidence needed to assist clinicians in determining when to extubate a preterm infant with the highest probability of success, and could produce significant improvements in extubation outcomes in this population. Trial registration Clinicaltrials.gov identifier: NCT01909947 . Registered on July 17 2013. Trial sponsor: Canadian Institutes of Health Research (CIHR).
机译:背景极早产婴儿(妊娠≤28周)通常需要气管插管和机械通气(MV),以维持充足的氧合作用和气体交换。鉴于MV与重要的不良后果独立相关,因此应努力限制其持续时间。但是,目前确定拔管准备情况的方法不准确,并且大量婴儿无法拔管,需要重新插管,这可能与发病率增加有关。已经提出了多种客观措施来更好地定义拔管的最佳时间,但没有一项被证明具有临床意义。在一项初步研究中,该组的研究人员显示了对心肺信号进行复杂,自动分析的成熟结果,这些结果可作为拔管准备情况的预测指标。这项研究的目的是使用临床工具以及新型和自动化的心肺行为测量方法,开发一种自动的拔管准备情况预测器,以帮助临床医生确定何时早产儿准备拔管。方法在这项前瞻性,多中心观察性研究中,将在250名符合条件的极早产婴儿中记录心肺信号,这些婴儿的首次计划拔管即刻出生体重≤1250 µg。自动信号分析算法将为每个婴儿计算各种指标,然后将使用机器学习方法来找到这些指标与临床变量的最佳组合,以提供最佳的拔管准备情况的整体预测。研究人员将利用这些结果开发出一种自动化的拔管预备系统(APEX),该系统会将用于数据采集,信号分析和结果预测的软件集成到一个适用于新生儿重症监护室医务人员的单一应用程序中。 APEX的性能稍后将在另外50个婴儿中得到前瞻性验证。讨论本研究的结果将提供必要的定量证据,以协助临床医生确定何时以最高的成功率对早产儿拔管,并可能显着改善该人群的拔管结局。试用注册Clinicaltrials.gov标识符:NCT01909947。 2013年7月17日注册。试验赞助商:加拿大卫生研究院(CIHR)。

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