Johnson M L, Straume M, Lampl M
Department of Pharmacology, National Science Foundation Science and Technology Center for Biological Timing, The University of Virginia Health System, Charlottesville 22908, USA.
Ann Hum Biol. 2001 Sep-Oct;28(5):491-504. doi: 10.1080/03014460010025149.
A nonlinear dynamics metric, approximate entropy (ApEn), is investigated as a diagnostic method for distinguishing between mathematical models, and the underlying mechanistic hypotheses that purport to describe the same time series experimental observations. ApEn measures the occurrence of pattern regularity within a time series, and is used here to investigate growth patterns in daily length growth. The notion investigated is that ApEn distributions for competing time series patterns expressed as mathematical formulations can be modelled by Monte Carlo and bootstrap methods and compared to the ApEn values for an original experimental data series. If the ApEn values for the different models do not overlap, then it is expected that ApEn can be utilized to distinguish these models and hypotheses, and to provide statistical assessment for the underlying biological patterns in experimental data. The conclusion is that the ApEn metric is successful as a time series diagnostic tool. It is a model-independent statistic that clearly differentiates saltatory growth from slowly varying continuous models of growth and serves to further document the saltatory nature of growth. This is a unique application of approximate entropy, illustrating the broad applicability of ApEn to biological time series, with the specific example of discriminating a saltatory growth process in longitudinal growth data. Future investigations of regularity in longitudinal time series in human biology with ApEn statistics are suggested.
一种非线性动力学指标——近似熵(ApEn),被作为一种诊断方法进行研究,用于区分数学模型以及那些旨在描述相同时间序列实验观测结果的潜在机制假设。近似熵衡量时间序列中模式规律性的出现情况,在此用于研究日长度增长中的增长模式。所研究的概念是,以数学公式表示的相互竞争的时间序列模式的近似熵分布可以通过蒙特卡罗方法和自助法进行建模,并与原始实验数据序列的近似熵值进行比较。如果不同模型的近似熵值不重叠,那么预计近似熵可用于区分这些模型和假设,并为实验数据中的潜在生物学模式提供统计评估。结论是,近似熵指标作为一种时间序列诊断工具是成功的。它是一种与模型无关的统计量,能够清晰地区分跳跃式增长与缓慢变化的连续增长模型,并进一步证明了增长的跳跃性本质。这是近似熵的一种独特应用,以纵向生长数据中区分跳跃式生长过程的具体例子,说明了近似熵在生物时间序列中的广泛适用性。建议未来使用近似熵统计方法对人类生物学纵向时间序列的规律性进行研究。