首页> 外文期刊>Mathematical Biosciences: An International Journal >Activity pattern detection in electroneurographic and electromyogram signals through a heteroscedastic change-point method
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Activity pattern detection in electroneurographic and electromyogram signals through a heteroscedastic change-point method

机译:通过异方差变化点方法检测电描记图和肌电图信号中的活动模式

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摘要

In this work, we propose a heteroscedastic method in the detection of activity patterns of electroneurographic and electromyogram signals involved in rhythmic activities of nerves and muscles, respectively. The electric behavior observed in such signals is characterized by phases of activity and silence. The beginning and the length of electrically active and electrically silent phases in a signal allow us to quantitatively analyze the changes and the effects on a rhythmic activity produced by experimental changes. In order to distinguish between these two phases, signals are assumed to be a sample of a time-dependent, normally distributed random variable with non-constant variance, and that the determination of the variance at each point allows us to determine in which phase is the signal. The parameters of the model are determined by means of an iterative process which maximizes the log-likelihood under the proposed model. Moreover, we apply our method to the determination of the activity phases and silence phases in sequences of experimental and synthetic electroneurographic and electromyogram signals. The results obtained with synthetic data show that the method performs well in the determination of these activity patterns. Finally, the study of particular signals simulated under a generalized autoregressive conditional heteroscedasticity model suggests the robustness of the method with respect to the assumption of independence.
机译:在这项工作中,我们提出了一种异方差方法来检测分别与神经和肌肉的节律活动有关的电描记图和肌电图信号的活动模式。在这种信号中观察到的电行为的特征在于活动和沉默的阶段。信号中电激活和电静音阶段的开始和长度,使我们能够定量分析变化以及实验变化对节律活动的影响。为了区分这两个阶段,假设信号是具有非恒定方差的时间相关,正态分布的随机变量的样本,并且通过确定每个点的方差,我们可以确定哪个相位是信号。该模型的参数是通过迭代过程确定的,该过程使所提出模型下的对数似然性最大化。此外,我们将我们的方法应用于确定实验性和合成的电描记图和肌电图信号序列中的活动阶段和沉默阶段。利用合成数据获得的结果表明,该方法在确定这些活动模式方面表现良好。最后,对在广义自回归条件异方差模型下模拟的特定信号的研究表明,该方法相对于独立性假设具有鲁棒性。

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