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An EEG-fMRI Fusion Analysis Based on Symmetric Techniques Using Dempster Shafer Theory

机译:利用DEMPSTER SHAFER理论基于对称技术的EEG-FMRI融合分析

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EEG-fMRI data fusion provides a better insight of the brain activity due to its high spatiotemporal resolution. The current paper presents a new framework on EEG-fMRI data using symmetric data fusion based on Dempster Shafer theory. Basically, symmetric methods require the use of a common theoretical model to explore Electroencephalogram (EEG) and functional Magnetic Resonance Imaging (fMRI) data jointly. Dempster Shafer theory has a multivariate use in resolving problems related to uncertainty. Accordingly, Basic Belief Assignment and the combination rule offered by such theory allow fusing multimodel sources such EEG (temporal modality) and fMRI (spatial modality). In particular, mass functions for each modality have been calculated. Then, the combination rule has been computed. Finally, this measure has been used to detect the activated areas in the brain via clustering using the potential-based hierarchical agglomerative clustering method. Both real auditory and artificial data simulation have been employed to evaluate the performance of the proposed approach. Also, true, false activation rates and Receiver Operating Characteristic (ROC curve) have been used to establish a comparison with jointICA method. The obtained results have clearly shown the ability of the introduced approach to outperform a standard method of data analysis to reveal a better activation map.
机译:EEG-FMRI数据融合由于其高空间分辨率,为大脑活动提供了更好的洞察力。目前纸张在EEG-FMRI数据上使用基于Dempster Shafer理论的对称数据融合提供了一种新的框架。基本上,对称方法需要使用公共理论模型来共同探索脑电图(EEG)和功能磁共振成像(FMRI)数据。 Dempster Shafer理论在解决与不确定性相关的问题方面具有多变量的用途。因此,这种理论提供的基本信念分配和提供的组合规则允许融合多模态来源,如脑电图(时间方式)和FMRI(空间模型)。特别地,已经计算了每个模态的质量函数。然后,已经计算了组合规则。最后,通过使用基于潜在的分层附聚类聚类方法,该措施用于通过聚类来检测脑中的激活区域。已经采用了真正的听觉和人工数据模拟来评估所提出的方法的性能。此外,已经使用真实的,假激活速率和接收器操作特性(ROC曲线)与Connectica方法建立比较。所获得的结果已经清楚地显示了引入方法优于越大的数据分析方法以揭示更好的激活图。

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