Dammers Jürgen, Schiek Michael, Boers Frank, Silex Carmen, Zvyagintsev Mikhail, Pietrzyk Uwe, Mathiak Klaus
Research Centre Jülich, Institute of Neuroscience and Biophysics, 52425 Jülich, Germany.
IEEE Trans Biomed Eng. 2008 Oct;55(10):2353-62. doi: 10.1109/TBME.2008.926677.
In magnetoencephalography (MEG) and electroencephalography (EEG), independent component analysis is widely applied to separate brain signals from artifact components. A number of different methods have been proposed for the automatic or semiautomatic identification of artifact components. Most of the proposed methods are based on amplitude statistics of the decomposed MEG/EEG signal. We present a fully automated approach based on amplitude and phase statistics of decomposed MEG signals for the isolation of biological artifacts such as ocular, muscle, and cardiac artifacts (CAs). The performance of different artifact identification measures was investigated. In particular, we show that phase statistics is a robust and highly sensitive measure to identify strong and weak components that can be attributed to cardiac activity, whereas a combination of different measures is needed for the identification of artifacts caused by ocular and muscle activity. With the introduction of a rejection performance parameter, we are able to quantify the rejection quality for eye blinks and CAs. We demonstrate in a set of MEG data the good performance of the fully automated procedure for the removal of cardiac, ocular, and muscle artifacts. The new approach allows routine application to clinical measurements with small effect on the brain signal.
在脑磁图(MEG)和脑电图(EEG)中,独立成分分析被广泛应用于从伪迹成分中分离脑信号。已经提出了许多不同的方法用于自动或半自动识别伪迹成分。大多数提出的方法基于分解后的MEG/EEG信号的幅度统计。我们提出了一种基于分解后的MEG信号的幅度和相位统计的全自动方法,用于分离诸如眼部、肌肉和心脏伪迹(CAs)等生物伪迹。研究了不同伪迹识别方法的性能。特别是,我们表明相位统计是一种稳健且高度敏感的方法,可用于识别可归因于心脏活动的强成分和弱成分,而对于识别由眼部和肌肉活动引起的伪迹,则需要结合不同的方法。通过引入拒绝性能参数,我们能够量化对眨眼和心脏伪迹的拒绝质量。我们在一组MEG数据中展示了用于去除心脏、眼部和肌肉伪迹的全自动程序的良好性能。新方法允许常规应用于临床测量,对脑信号的影响很小。