论文标题
使用Synchrosqueezing转换和局部固定的高斯过程回归从胸腔和腹部运动中恢复气流
Airflow recovery from thoracic and abdominal movements using Synchrosqueezing Transform and Locally Stationary Gaussian Process Regression
论文作者
论文摘要
气流信号编码有关呼吸系统的丰富信息。虽然测量气流的金标准是使用带有闭合密封的肺活量计,但对于患者的门诊监测是不切实际的。传感器技术的进步使胸部和腹部的运动可行,可与小型廉价设备进行可行的衡量,但是这些时间序列中气流的估计既有挑战性。我们建议使用非线性型时频分析工具,即同步性转换,以正确地表示胸腔和腹部运动信号作为特征,这些特征用于通过本地固定的高斯进程来恢复气流。我们表明,使用在正常睡眠条件下包含呼吸信号的数据集,可以通过将所提出的模型拟合在内部和受试者间设置中的特征空间中来实现准确的预测。我们还将我们的方法应用于更具挑战性的案例,在此情况下,大麻醉下的受试者经过了从压力支持到无助的通风的过渡,以进一步证明该方法的实用性。
Airflow signal encodes rich information about respiratory system. While the gold standard for measuring airflow is to use a spirometer with an occlusive seal, this is not practical for ambulatory monitoring of patients. Advances in sensor technology have made measurement of motion of the thorax and abdomen feasible with small inexpensive devices, but estimation of airflow from these time series is challenging. We propose to use the nonlinear-type time-frequency analysis tool, synchrosqueezing transform, to properly represent the thoracic and abdominal movement signals as the features, which are used to recover the airflow by the locally stationary Gaussian process. We show that, using a dataset that contains respiratory signals under normal sleep conditions, an accurate prediction can be achieved by fitting the proposed model in the feature space both in the intra- and inter-subject setups. We also apply our method to a more challenging case, where subjects under general anesthesia underwent transitions from pressure support to unassisted ventilation to further demonstrate the utility of the proposed method.