MEG and EEG fusion in Bayesian frame

S. Jun
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引用次数: 6

Abstract

In biomedical brain imaging, several distinctive brain imaging modalities have been developed with each demonstrating particular strengths and weaknesses. Despite such recent developments in biomedical brain imaging, an essential question persists: How can multi-modalities be effectively integrated so that they complement each other without compromising their inherently beneficial qualities? Toward such an end, Bayesian frame represents a reasonable solution for even the most complicated problems since corresponding fusion is particularly straightforward. Accordingly, a Bayesian integrative strategy for MEG and EEG brain imaging modalities is proposed in this work. The corresponding effects of synergy as well as overall feasibility are examined through numerical simulations. In addition, spatiotemporal noise covariance incorporated into the fusion frame is discussed.
贝叶斯框架下脑电信号与脑电信号的融合
在生物医学脑成像中,已经发展了几种不同的脑成像模式,每种模式都显示出特定的优势和劣势。尽管最近在生物医学脑成像方面有了这样的发展,但一个基本问题仍然存在:如何才能有效地整合多种模式,使它们相互补充而不损害其固有的有益品质?为此,贝叶斯框架为最复杂的问题提供了合理的解决方案,因为相应的融合特别直接。因此,本研究提出了一种基于贝叶斯的脑电与脑电脑成像模式整合策略。通过数值模拟验证了相应的协同效应和整体可行性。此外,还讨论了融合框架中的时空噪声协方差。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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