Sarlabous Leonardo, Torres Abel, Fiz Jose A, Gea J, Martinez-Llorens J M, Morera J, Jane Raimon
Dept. ESAII, Universitat Politècnica de Catalunya, Institut de Bioenginyeria de Catalunya (IBEC), Barcelona, Spain.
Annu Int Conf IEEE Eng Med Biol Soc. 2010;2010:5967-70. doi: 10.1109/IEMBS.2010.5627570.
A new method for the quantification of amplitude variations in biomedical signals through moving approximate entropy is presented. Unlike the usual method to calculate the approximate entropy (ApEn), in which the tolerance value (r) varies based on the standard deviation of each moving window, in this work ApEn has been computed using a fixed value of r. We called this method, moving approximate entropy with fixed tolerance values: ApEn(f). The obtained results indicate that ApEn(f) allows determining amplitude variations in biomedical data series. These amplitude variations are better determined when intermediate values of tolerance are used. The study performed in diaphragmatic mechanomyographic signals shows that the ApEn(f) curve is more correlated with the respiratory effort than the standard RMS amplitude parameter. Furthermore, it has been observed that the ApEn(f) parameter is less affected by the existence of impulsive, sinusoidal, constant and Gaussian noises in comparison with the RMS amplitude parameter.
提出了一种通过移动近似熵对生物医学信号中的幅度变化进行量化的新方法。与计算近似熵(ApEn)的常用方法不同,在常用方法中,容忍度值(r)基于每个移动窗口的标准差而变化,在本研究中,ApEn是使用固定的r值计算的。我们将此方法称为具有固定容忍度值的移动近似熵:ApEn(f)。所得结果表明,ApEn(f)能够确定生物医学数据序列中的幅度变化。当使用中间容忍度值时,这些幅度变化能得到更好的确定。在膈肌肌动图信号中进行的研究表明,ApEn(f)曲线与呼吸努力的相关性比标准均方根幅度参数更高。此外,还观察到,与均方根幅度参数相比,ApEn(f)参数受脉冲、正弦、恒定和高斯噪声存在的影响较小。