Saatci Esra, Saatci Ertugrul
IEEE Trans Biomed Eng. 2021 Dec;68(12):3582-3592. doi: 10.1109/TBME.2021.3079160. Epub 2021 Nov 19.
System approach to the human respiratory system and input/output signals which characterize the system properties were not explored in detail in the literature. The aim of this study is to propose a combination of methods to investigate the indirect relationship between the fractal properties of Respiratory Signals (RS) and Respiratory Sound Signals (RSS) and the clinically measured respiratory parameters.
We used Hurst exponent to reveal the fractal properties of RS and RSS and to estimate the pressures in the respiratory system. The combination of well-known statistical signal processing methods and optimization were applied to the experimentally acquired 23 records. Pearson correlation coefficient and Bland-Altman analysis were the chosen validation methods.
Considerable amounts of Hurst exponent values of RSS were found to be between 0.5 and 1, which means increasing trend or decreasing trend can be seen in RSS with fractional Gaussian process properties. Results of the pressure estimator revealed that internal pressure due to tissue viscoelasticity is higher than the pressure due to static elasticity. Feature power and skewness also provided distinctive results for all recordings.
Hurst exponent values of the RSS are fruitful representation of the signals which bring the underlaying system characteristics into the surface. We illustrated that required number of sensors can be reduced in the feature calculation to ease implementation effort on the hardware of the handheld devices.
Bland-Altman plots were very successful to demonstrate the connection between the sets of measured respiratory parameters and calculated features.
文献中尚未详细探讨人类呼吸系统的系统方法以及表征系统特性的输入/输出信号。本研究的目的是提出一种方法组合,以研究呼吸信号(RS)和呼吸音信号(RSS)的分形特性与临床测量的呼吸参数之间的间接关系。
我们使用赫斯特指数来揭示RS和RSS的分形特性,并估计呼吸系统中的压力。将著名的统计信号处理方法和优化方法相结合,应用于实验获取的23条记录。选择皮尔逊相关系数和布兰德-奥特曼分析作为验证方法。
发现大量RSS的赫斯特指数值在0.5到1之间,这意味着RSS具有分数高斯过程特性,呈现出上升或下降趋势。压力估计器的结果表明,组织粘弹性引起的内部压力高于静态弹性引起的压力。特征功率和偏度也为所有记录提供了独特的结果。
RSS的赫斯特指数值有效地表示了信号,将潜在的系统特征展现出来。我们表明,在特征计算中可以减少所需的传感器数量,以简化手持设备硬件上的实现工作。
布兰德-奥特曼图非常成功地展示了测量的呼吸参数集与计算特征之间的联系。