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首页> 外文期刊>International Journal of Neural Systems >A Predictive Modeling Approach to Analyze Data in EEG-fMRI Experiments
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A Predictive Modeling Approach to Analyze Data in EEG-fMRI Experiments

机译:在EEG-fMRI实验中分析数据的预测建模方法

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摘要

In this paper, a novel technique based on blind source extraction (BSE) using linear prediction is proposed to extract rolandic beta rhythm from electroencephalogram (EEG) recorded in a simultaneous EEG-fMRI experiment. We call this method CLP-BSE standing for constrained-linear-prediction BSE. Extracting event-related oscillations is a crucial task due to nonphase-locked nature and inter-trial variability of this event. The main objective of this work is to extract rolandic beta rhythm to measure event-related synchronization (ERS) with acceptable signal-to-noise ratio (SNR). The extracted rhythm is utilized for constructing a regressor to analyze functional magnetic resonance imaging (fMRI). The proposed method is a semi-blind technique which uses a spatio-temporal constraint for beta rhythm extraction. This constraint is derived from recorded EEG signals based on the prior knowledge about the frequency and location of the source of interest. The main reason of employing linear prediction as an effective algorithm to extract the EEG rhythm is the ability of extracting sources which have specific temporal structure. Performance of the proposed method is evaluated using both synthetic and real EEG data. The obtained results show that the proposed technique is able to extract ERS effectively. The maximum percentage of ERS obtained by filtering is 152% while the obtained ERS by CLP-BSE is 214%. In another experiment, the extracted event-related oscillations in beta band are used to make the necessary regressor for fMRI analysis. The results of EEG-fMRI coregistration confirm that there are correlation between the extracted rolandic beta rhythm and simultaneously recorded fMRI. This conclude that, the results of EEG-fMRI combination support the reliability of CLP-BSE output.
机译:本文提出了一种基于线性预测的盲源提取(BSE)的新技术,用于从同时进行EEG-fMRI实验的脑电图(EEG)中提取rolandicβ节奏。我们称此方法CLP-BSE代表约束线性预测BSE。由于此事件的非锁相性质和试验间的可变性,因此提取与事件相关的振荡是一项至关重要的任务。这项工作的主要目的是提取rolandicβ节奏,以可接受的信噪比(SNR)来测量事件相关的同步(ERS)。提取的节奏用于构建回归器以分析功能磁共振成像(fMRI)。所提出的方法是一种半盲技术,它使用时空约束进行β节奏提取。基于关于感兴趣源的频率和位置的先验知识,从记录的EEG信号中得出此约束。采用线性预测作为一种有效的算法来提取脑电节律的主要原因是提取具有特定时间结构的源的能力。使用合成的和实际的EEG数据评估了所提出方法的性能。所得结果表明,所提出的技术能够有效地提取ERS。通过过滤获得的ERS的最大百分比为152%,而通过CLP-BSE获得的ERS为214%。在另一个实验中,提取的与β带有关的事件相关的振荡被用于进行fMRI分析所需的回归。脑电图功能磁共振成像的结果证实,提取的rolandicβ节律与同时记录的功能磁共振成像之间存在相关性。结论是,EEG-fMRI结合的结果支持CLP-BSE输出的可靠性。

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