Department of Biomedical Engineering, McGill University, Montreal, QC, Canada.
IEEE Trans Biomed Eng. 2011 Jun;58(6):1724-33. doi: 10.1109/TBME.2011.2112657. Epub 2011 Feb 10.
Previously, we presented automated methods for thoraco-abdominal asynchrony estimation and movement artifact detection in respiratory inductance plethysmography (RIP) signals. This paper combines and improves these methods to give a method for the automated, off-line detection of pause, movement artifact, and asynchrony. Simulation studies demonstrated that the new combined method is accurate and robust in the presence of noise. The new procedure was successfully applied to cardiorespiratory signals acquired postoperatively from infants in the recovery room. A comparison of the events detected with the automated method to those visually scored by an expert clinician demonstrated a higher agreement (κ = 0.52) than that amongst several human scorers (κ = 0.31) in a clinical study . The method provides the following advantages: first, it is fully automated; second, it is more efficient than visual scoring; third, the analysis is repeatable and standardized; fourth, it provides greater agreement with an expert scorer compared to the agreement between trained scorers; fifth, it is amenable to online detection; and lastly, it is applicable to uncalibrated RIP signals. Examples of applications include respiratory monitoring of postsurgical patients and sleep studies.
先前,我们提出了自动估计胸腹异步和呼吸感应体积描记(RIP)信号中运动伪影的方法。本文结合并改进了这些方法,提供了一种自动、离线检测暂停、运动伪影和异步的方法。模拟研究表明,新的组合方法在存在噪声的情况下是准确和鲁棒的。新的程序成功地应用于恢复室中手术后婴儿的心肺信号。对自动方法检测到的事件与专家临床医生视觉评分的比较表明,在临床研究中,与几个人类评分者(κ=0.31)相比,具有更高的一致性(κ=0.52)。该方法具有以下优点:首先,它是全自动的;其次,它比视觉评分更有效;第三,分析是可重复和标准化的;第四,与训练有素的评分者之间的一致性相比,它与专家评分者的一致性更高;第五,它适用于在线检测;最后,它适用于未校准的 RIP 信号。应用示例包括术后患者的呼吸监测和睡眠研究。