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Independent component analysis with mixture density model and its application to localize the brain alpha activity in fMRI and EEG

机译:具有混合密度模型的独立成分分析及其在fMRI和EEG中定位脑α活性的应用

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Recently, independent component analysis (ICA) has been introduced to solve the blind source separation problem. In the original and extended versions of ICA, nonlinearity functions are fixed to have specific forms such as supergaussian or subgaussian, limiting their performance. In this paper, we utilized ICA with mixture density model such that any assumption about the source density is not required, thus better separation is possible by matching flexible parametric nonlinearity to any kind of density of sources. Through simulation studies, the algorithm was validated and its better performance was demonstrated in comparison to other versions of ICA. Then mixture density ICA was applied to functional magnetic resonance imaging (fMRI) and electroencephalogram (EEG) data to localize the independent sources for alpha activity. We found that there is a strong spatial correlation between the sources in fMRI and EEG, proving the usefulness of our approach in its application to source separation problem in biomedical signal processing.
机译:最近,独立成分分析(ICA)已被引入以解决盲源分离问题。在ICA的原始版本和扩展版本中,非线性函数被固定为具有特定形式,例如超高斯或次高斯,从而限制了它们的性能。在本文中,我们将ICA与混合密度模型结合使用,因此不需要关于源密度的任何假设,因此,通过将灵活的参数非线性与任何类型的源密度匹配,可以实现更好的分离。通过仿真研究,对该算法进行了验证,并且与其他版本的ICA相比,它表现出了更好的性能。然后将混合物密度ICA应用于功能磁共振成像(fMRI)和脑电图(EEG)数据,以定位α活性的独立来源。我们发现功能磁共振成像和脑电图的来源之间存在很强的空间相关性,证明了我们的方法在将其应用于生物医学信号处理中的来源分离问题中的有用性。

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