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使用维纳滤波器和卡尔曼滤波器对多试次电生理数据中的同步活动进行噪声滤波。

Filtering noise for synchronised activity in multi-trial electrophysiology data using Wiener and Kalman filters.

作者信息

Zhan Yang, Guo Shuixia, Kendrick Keith M, Feng Jianfeng

机构信息

The Babraham Institute, Cambridge, UK.

出版信息

Biosystems. 2009 Apr;96(1):1-13. doi: 10.1016/j.biosystems.2008.11.007. Epub 2008 Nov 25.

Abstract

Novel approaches to effectively reduce noise in data recorded from multi-trial physiology experiments have been investigated using two-dimensional filtering methods, adaptive Wiener filtering and reduced update Kalman filtering. Test data based on signal and noise model consisting of different conditions of signal components mixed with noise have been considered with filtering effects evaluated using analysis of frequency coherence and of time-dependent coherence. Various situations that may affect the filtering results have been explored and reveal that Wiener and Kalman filtering can considerably improve the coherence values between two channels of multi-trial data and suppress uncorrelated components. We have extended our approach to experimental data: multi-electrode array (MEA) local field potential (LFPs) recordings from the inferotemporal cortex of sheep and LFP vs. electromyogram (LFP-EMG) recording data during resting tremor in Parkinson's disease patients. Finally general procedures for implementation of these filtering techniques are described.

摘要

已使用二维滤波方法、自适应维纳滤波和简化更新卡尔曼滤波研究了有效降低多试验生理学实验记录数据中噪声的新方法。基于由与噪声混合的不同信号分量条件组成的信号和噪声模型的测试数据,通过频率相干分析和时间相关相干分析评估滤波效果。探索了可能影响滤波结果的各种情况,结果表明维纳滤波和卡尔曼滤波可以显著提高多试验数据两个通道之间的相干值,并抑制不相关分量。我们已将我们的方法扩展到实验数据:来自绵羊颞下皮质的多电极阵列(MEA)局部场电位(LFP)记录以及帕金森病患者静息震颤期间的LFP与肌电图(LFP-EMG)记录数据。最后描述了实施这些滤波技术的一般程序。

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