Angelini Leonardo, Maestri Roberto, Marinazzo Daniele, Nitti Luigi, Pellicoro Mario, Pinna Gian Domenico, Stramaglia Sebastiano, Tupputi Salvatore A
TIRES-Center of Innovative Technologies for Signal Detection and Processing, University of Bari, Via Amendola 173, 70126 Bari, Italy.
Artif Intell Med. 2007 Nov;41(3):237-50. doi: 10.1016/j.artmed.2007.07.012. Epub 2007 Oct 22.
Physiological systems are ruled by mechanisms operating across multiple temporal scales. A recently proposed approach, multiscale entropy analysis, measures the complexity at different time scales and has been successfully applied to long term electrocardiographic recordings. The purpose of this work is to show the applicability of this methodology, rooted on statistical physics ideas, to short term time series of simultaneously acquired samples of heart rate, blood pressure and lung volume, from healthy subjects and from subjects with chronic heart failure. In the same spirit, we also propose a multiscale approach, to evaluate interactions between time series, by performing a multivariate autoregressive (AR) modeling of the coarse grained time series.
We apply the multiscale entropy analysis to our data set of short term recordings. Concerning the multiscale version of the multivariate AR approach, we apply it to the four dimensional time series so as to detect scale dependent patterns of interactions between the physiological quantities.
Evaluating the complexity of signals at the multiple time scales inherent in physiologic dynamics, we find new quantitative indicators which are statistically correlated with the pathology. Our results show that multiscale entropy calculated on all the measured quantities significantly differs (P<10(-2) and less) in patients and control subjects, and confirms the complexity-loss theory of aging and disease. Also applying the multiscale autoregressive approach significant differences were found between controls and patients; in the sight of finding a possible diagnostic tools, satisfactory results came also from a receiver-operating-characteristic curve analysis (with some values above 0.8).
The multiscale entropy analysis can give useful information also when only short term physiological recordings are at disposal, thus enlarging the applicability of the methodology. Also the proposed multiscale version of the multivariate regressive analysis, applied to short term time series, can shed light on patterns of interactions between cardiorespiratory variables.
生理系统受跨多个时间尺度运行的机制所支配。最近提出的一种方法,即多尺度熵分析,可测量不同时间尺度下的复杂性,并已成功应用于长期心电图记录。这项工作的目的是展示这种基于统计物理思想的方法对于健康受试者和慢性心力衰竭患者同时采集的心率、血压和肺容积短期时间序列的适用性。本着同样的精神,我们还提出了一种多尺度方法,通过对粗粒化时间序列进行多元自回归(AR)建模来评估时间序列之间的相互作用。
我们将多尺度熵分析应用于短期记录的数据集。关于多元AR方法的多尺度版本,我们将其应用于四维时间序列,以检测生理量之间相互作用的尺度依赖性模式。
评估生理动力学固有多个时间尺度上信号的复杂性时,我们发现了与病理状况具有统计学相关性的新定量指标。我们的结果表明,在患者和对照受试者中,对所有测量量计算的多尺度熵存在显著差异(P<10^(-2)及更小),并证实了衰老和疾病的复杂性丧失理论。同样应用多尺度自回归方法,在对照和患者之间也发现了显著差异;为了找到可能的诊断工具,在接受者操作特征曲线分析中也得到了令人满意的结果(有些值高于0.8)。
即使只有短期生理记录可用,多尺度熵分析也能提供有用信息,从而扩大了该方法的适用性。同样,应用于短期时间序列的多尺度多元回归分析版本也能揭示心肺变量之间的相互作用模式。