Chen Ya-Chen, Hsiao Tzu-Chien
Institute of Computer Science and Engineering, National Chiao Tung University, Hsinchu, 30010, Taiwan.
Department of Computer Science, National Chiao Tung University, Hsinchu, 30010, Taiwan.
Biomed Eng Online. 2016 Oct 6;15(1):112. doi: 10.1186/s12938-016-0233-7.
Thoracoabdominal asynchrony is often adopted to discriminate respiratory diseases in clinics. Conventionally, Lissajous figure analysis is the most frequently used estimation of the phase difference in thoracoabdominal asynchrony. However, the temporal resolution of the produced results is low and the estimation error increases when the signals are not sinusoidal. Other previous studies have reported time-domain procedures with the use of band-pass filters for phase-angle estimation. Nevertheless, the band-pass filters need calibration for phase delay elimination.
To improve the estimation, we propose a novel method (named as instantaneous phase difference) that is based on complementary ensemble empirical mode decomposition for estimating the instantaneous phase relation between measured thoracic wall movement and abdominal wall movement. To validate the proposed method, experiments on simulated time series and human-subject respiratory data with two breathing types (i.e., thoracic breathing and abdominal breathing) were conducted. Latest version of Lissajous figure analysis and automatic phase estimation procedure were compared.
The simulation results show that the standard deviations of the proposed method were lower than those of two other conventional methods. The proposed method performed more accurately than the two conventional methods. For the human-subject respiratory data, the results of the proposed method are in line with those in the literature, and the correlation analysis result reveals that they were positively correlated with the results generated by the two conventional methods. Furthermore, the standard deviation of the proposed method was also the smallest.
To summarize, this study proposes a novel method for estimating instantaneous phase differences. According to the findings from both the simulation and human-subject data, our approach was demonstrated to be effective. The method offers the following advantages: (1) improves the temporal resolution, (2) does not introduce a phase delay, (3) works with non-sinusoidal signals, (4) provides quantitative phase estimation without estimating the embedded frequency of breathing signals, and (5) works without calibrated measurements. The results demonstrate a higher temporal resolution of the phase difference estimation for the evaluation of thoracoabdominal asynchrony.
胸腹部异步性在临床上常被用于鉴别呼吸系统疾病。传统上,李萨如图形分析是胸腹部异步性中最常用的相位差估计方法。然而,所产生结果的时间分辨率较低,并且当信号不是正弦波时,估计误差会增加。其他先前的研究报道了使用带通滤波器进行相角估计的时域方法。然而,带通滤波器需要进行校准以消除相位延迟。
为了改进估计,我们提出了一种基于互补总体经验模态分解的新方法(称为瞬时相位差),用于估计测量的胸壁运动和腹壁运动之间的瞬时相位关系。为了验证所提出的方法,对具有两种呼吸类型(即胸式呼吸和腹式呼吸)的模拟时间序列和人体呼吸数据进行了实验。将最新版本的李萨如图形分析和自动相位估计程序进行了比较。
模拟结果表明,所提出方法的标准差低于其他两种传统方法。所提出的方法比两种传统方法执行得更准确。对于人体呼吸数据,所提出方法的结果与文献中的结果一致,并且相关性分析结果表明它们与两种传统方法产生的结果呈正相关。此外,所提出方法的标准差也是最小的。
总之,本研究提出了一种估计瞬时相位差的新方法。根据模拟和人体数据的研究结果,我们的方法被证明是有效的。该方法具有以下优点:(1)提高时间分辨率,(2)不引入相位延迟,(3)适用于非正弦信号,(4)无需估计呼吸信号的固有频率即可提供定量相位估计,(5)无需校准测量即可工作。结果表明,在评估胸腹部异步性时,相位差估计具有更高的时间分辨率。