Bollt Erik M, Skufca Joseph D, McGregor Stephen J
Clarkson University, P.O. Box 5815, Potsdam, NY 13699-5815, United States.
Math Biosci Eng. 2009 Jan;6(1):1-25. doi: 10.3934/mbe.2009.6.1.
We propose an entropy statistic designed to assess the behavior of slowly varying parameters of real systems. Based on correlation entropy, the method uses symbol dynamics and analysis of increments to achieve sufficient recurrence in a short time series to enable entropy measurements on small data sets. We analyze entropy along a moving window of a time series, the entropy statistic tracking the behavior of slow variables of the data series. We employ the technique against several physiological time series to illustrate its utility in characterizing the constraints on a physiological time series. We propose that changes in the entropy of measured physiological signal (e.g. power output) during dynamic exercise will indicate changes in underlying constraint of the system of interest. This is compelling because CE may serve as a non-invasive, objective means of determining physiological stress under non-steady state conditions such as competition or acute clinical pathologies. If so, CE could serve as a valuable tool for dynamically monitoring health status in a wide range of non-stationary systems.
我们提出一种熵统计量,旨在评估实际系统中缓慢变化参数的行为。该方法基于相关熵,利用符号动力学和增量分析,在短时间序列中实现充分的递归,从而能够对小数据集进行熵测量。我们沿着时间序列的移动窗口分析熵,该熵统计量跟踪数据序列中慢变量的行为。我们将该技术应用于多个生理时间序列,以说明其在表征生理时间序列约束方面的效用。我们提出,动态运动期间测量的生理信号(如功率输出)的熵变化将表明感兴趣系统的潜在约束变化。这很有说服力,因为相关熵可以作为一种在竞争或急性临床病理等非稳态条件下确定生理应激的非侵入性、客观手段。如果是这样,相关熵可以作为一种有价值的工具,用于动态监测各种非平稳系统中的健康状况。