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Performance analysis of four nonlinearity analysis methods using a model with variable complexity and application to uterine EMG signals

机译:使用可变复杂度模型的四种非线性分析方法的性能分析及其在子宫肌电信号中的应用

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Several measures have been proposed to detect nonlinear characteristics in time series. Results on time series, multiple surrogates and their z-score are used to statistically test for the presence or absence of non-linearity. The z-score itself has sometimes been used as a measure of nonlinearity. The sensitivity of nonlinear methods to the nonlinearity level and their robustness to noise have rarely been evaluated in the past. While surrogates are important tools to rigorously detect nonlinearity, their usefulness for evaluating the level of nonlinearity is not clear. In this paper we investigate the performance of four methods arising from three families that are widely used in non-linearity detection: statistics (time reversibility), predictability (sample entropy, delay vector variance) and chaos theory (Lyapunov exponents). We used sensitivity to increasing complexity and the mean square error (MSE) of Monte Carlo instances for quantitative comparison of their performances. These methods were applied to a Henon nonlinear synthetic model in which we can vary the complexity degree (CD). This was done first by applying the methods directly to the signal and then using the z-score (surrogates) with and without added noise. The methods were then applied to real uterine EMG signals and used to distinguish between pregnancy and labor contraction bursts. The discrimination performances were compared to linear frequency based methods classically used for the same purpose such as mean power frequency (MPF), peak frequency (PF) and median frequency (MF). The results show noticeable difference between different methods, with a clear superiority of some of the nonlinear methods (time reversibility, Lyapunov exponents) over the linear methods. Applying the methods directly to the signals gave better results than using the z-score, except for sample entropy.
机译:已经提出了几种措施来检测时间序列中的非线性特征。时间序列,多个替代指标及其z分数的结果用于统计检验非线性的存在或不存在。 z分数本身有时被用作非线性度的度量。过去很少评估非线性方法对非线性水平的敏感性及其对噪声的鲁棒性。尽管代理人是严格检测非线性的重要工具,但对于评估非线性水平的用途尚不清楚。在本文中,我们研究了广泛应用于非线性检测的三个族的四种方法的性能:统计(时间可逆性),可预测性(样本熵,延迟矢量方差)和混沌理论(Lyapunov指数)。我们使用敏感性增加的复杂性和蒙特卡洛实例的均方误差(MSE)对其性能进行定量比较。这些方法被应用于Henon非线性综合模型,在其中我们可以改变复杂度(CD)。首先通过将方法直接应用于信号,然后使用带有或不带有附加噪声的z分数(替代)来完成。然后将这些方法应用于实际的子宫肌电信号,并用于区分妊娠和分娩收缩爆发。将辨别性能与传统上基于线性频率的,通常用于相同目的的方法进行了比较,例如平均功率频率(MPF),峰值频率(PF)和中值频率(MF)。结果显示了不同方法之间的显着差异,其中某些非线性方法(时间可逆性,Lyapunov指数)明显优于线性方法。除了样本熵外,直接将这些方法应用于信号比使用z分数能获得更好的结果。

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