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BAEPs averaging analysis using autoregressive modelling.

机译:BAEPS使用自回归建模平均分析。

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OBJECTIVE: The present paper introduces a new perspective on the classical ensemble averaging which can be useful to analyse the Brainstem Auditory Evoked Potentials (BAEPs). The analysis of the dynamics, related to the BAEP, is performed directly after its acquisition from the electroencephalogram (EEG). METHODS: The method primarily consists of dynamically modelling the averaged potential, obtained during the acquisition mode. Each averaging of signal at a given instant is considered as an autoregressive (AR) process. RESULTS: It has been shown that the predicting error power of AR modelling can be useful to provide an efficient tool to analyse the BAEPs. It has also been shown that the method is capable of taking the non-stationarities of both the BAEP and the EEG into account. CONCLUSION: In order to validate our approach, the proposed technique has been implemented for both simulated and real signals. This approach can also be employed in the context of estimating other evoked potentials and showsrich promise for potential clinical applications in future.
机译:目的:本文介绍了一种关于古典集合平均的新视角,这对于分析脑干听觉诱发潜力(BAEPS)有用。与BAEP相关的动态分析在其从脑电图(EEG)的获取后直接进行。方法:该方法主要包括在采集模式期间获得的平均电位。给定时刻的信号的每个平均被认为是自回归(AR)过程。结果:已经表明,AR建模的预测误差功率可用于提供分析BAEPS的有效工具。还表明该方法能够考虑BAEP和EEG的非公平性。结论:为了验证我们的方法,已经为模拟和实际信号实施了所提出的技术。这种方法也可以在估计其他诱发的潜力和潜在临床应用的潜在潜力和潜在的临床应用中的上下文中。

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