Huang W, Shen Z, Huang N E, Fung Y C
Department of Bioengineering, University of California, San Diego, La Jolla, CA 92093-0412, USA.
Proc Natl Acad Sci U S A. 1998 Apr 28;95(9):4816-21. doi: 10.1073/pnas.95.9.4816.
Almost all variables in biology are nonstationarily stochastic. For these variables, the conventional tools leave us a feeling that some valuable information is thrown away and that a complex phenomenon is presented imprecisely. Here, we apply recent advances initially made in the study of ocean waves to study the blood pressure waves in the lung. We note first that, in a long wave train, the handling of the local mean is of predominant importance. It is shown that a signal can be described by a sum of a series of intrinsic mode functions, each of which has zero local mean at all times. The process of deriving this series is called the "empirical mode decomposition method." Conventionally, Fourier analysis represents the data by sine and cosine functions, but no instantaneous frequency can be defined. In the new way, the data are represented by intrinsic mode functions, to which Hilbert transform can be used. Titchmarsh [Titchmarsh, E. C. (1948) Introduction to the Theory of Fourier Integrals (Oxford Univ. Press, Oxford)] has shown that a signal and i times its Hilbert transform together define a complex variable. From that complex variable, the instantaneous frequency, instantaneous amplitude, Hilbert spectrum, and marginal Hilbert spectrum have been defined. In addition, the Gumbel extreme-value statistics are applied. We present all of these features of the blood pressure records here for the reader to see how they look. In the future, we have to learn how these features change with disease or interventions.
生物学中的几乎所有变量都是非平稳随机的。对于这些变量,传统工具给我们一种感觉,即一些有价值的信息被丢弃了,复杂的现象也没有得到精确呈现。在此,我们应用最初在海浪研究中取得的最新进展来研究肺部的血压波。我们首先注意到,在一个长波列中,局部均值的处理至关重要。结果表明,一个信号可以由一系列本征模函数的和来描述,每个本征模函数在任何时候的局部均值都为零。推导这个序列的过程称为“经验模态分解法”。传统上,傅里叶分析用正弦和余弦函数来表示数据,但无法定义瞬时频率。在新方法中,数据由本征模函数表示,可以对其应用希尔伯特变换。蒂奇马什 [蒂奇马什,E.C.(1948 年)《傅里叶积分理论导论》(牛津大学出版社,牛津)] 表明,一个信号及其希尔伯特变换的虚部一起定义了一个复变量。从这个复变量中,定义了瞬时频率、瞬时幅度、希尔伯特谱和边际希尔伯特谱。此外,还应用了耿贝尔极值统计。我们在此展示血压记录的所有这些特征,以便读者了解它们的样子。未来,我们必须了解这些特征如何随疾病或干预而变化。