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婴儿睡眠期间反常胸廓运动的自动分析

Automated analysis of paradoxical ribcage motion during sleep in infants.

作者信息

Brown K A, Platt R, Bates J H T

机构信息

Department of Anesthesia, McGill University Health Centre/Montreal Children's Hospital, 2300 Tupper St., Room C-1119, Montreal, Quebec, Canada H3H 1P3.

出版信息

Pediatr Pulmonol. 2002 Jan;33(1):38-46. doi: 10.1002/ppul.10028.

Abstract

Identification of thoracoabdominal asynchrony (TAS) during breathing is currently detected by visual coding of records of ribcage (RC) and abdominal (AB) movements. There is thus a need to automate this process in order to save time and improve TAS detection accuracy. We studied 15 infants of 39-49 weeks postconceptional age. RC and AB signals were recorded continuously by inductance plethysmography for 4-24 hr immediately after herniorraphy. In our novel analysis approach, the records were divided into 10 sec epochs, and the equation RC = alphaAB + beta was fit to each epoch, using recursive linear regression with an exponential memory time constant of 1 and 2 sec. This yielded 10 sec signals for alpha corresponding to each epoch. The fraction of time that each alpha signal was positive was taken as a measure of synchrony between RC and AB for that epoch, while asynchrony was indicated by the fraction of time the signal was negative. We also assessed synchrony and asynchrony using a conventional measure known as thoracic delay (TD), which is based on the degree to which the peaks in RC and AB are coincident in time. Using TD as the basis of comparison, we found that our new recursive least squares method gave a positive predictive value of 99%. We conclude that our recursive least squares method is able to accurately identify portions of the RC and AB records that correspond to TAS, and we speculate that it may be useful in automating detection of TAS.

摘要

目前,呼吸过程中胸腹不同步(TAS)的识别是通过对胸廓(RC)和腹部(AB)运动记录进行视觉编码来实现的。因此,有必要实现这一过程的自动化,以节省时间并提高TAS检测的准确性。我们研究了15名孕龄39 - 49周的婴儿。在疝气修补术后,立即通过电感体积描记法连续记录RC和AB信号4 - 24小时。在我们新颖的分析方法中,记录被划分为10秒的时间段,并且使用指数记忆时间常数为1秒和2秒的递归线性回归,将方程RC =αAB +β拟合到每个时间段。这为每个时间段产生了对应于α的10秒信号。每个α信号为正的时间比例被用作该时间段内RC和AB之间同步性的度量,而信号为负的时间比例则表示不同步。我们还使用一种称为胸廓延迟(TD)的传统方法评估同步性和不同步性,该方法基于RC和AB中的峰值在时间上的重合程度。以TD作为比较基础,我们发现我们新的递归最小二乘法的阳性预测值为99%。我们得出结论,我们的递归最小二乘法能够准确识别RC和AB记录中与TAS相对应的部分,并且我们推测它可能有助于TAS检测的自动化。

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