论文标题
EEG和fMRI通过张量分解的早期柔软而柔软的融合
Early soft and flexible fusion of EEG and fMRI via tensor decompositions
论文作者
论文摘要
数据融合是指对多个数据集的联合分析,这些数据集提供了相同任务的互补视图。在此预印本中,考虑了共同分析脑电图(EEG)和功能磁共振成像(fMRI)数据的问题。共同分析脑电图和fMRI测量值对研究大脑功能非常有益,因为这些方式具有互补的时空分辨率:EEG提供了良好的时间分辨率,而fMRI的空间分辨率更好。迄今为止,融合方法忽略了至少一种模式中的数据的基本多向性质和/或依赖于两个数据集关系的非常有力的假设。在此预印本中,这两个点是通过在这两种模式中首次采用张量模型来解决的,同时还探索了双耦合张量分解,并采用柔和,灵活的耦合方法来实现多模式分析。为了应对脑电图中与事件相关的潜力(ERP)变异性,采用PARAFAC2模型。将获得的结果与模拟和实际数据中的平行独立组件分析(ICA)和硬耦合替代方案进行了比较。我们的结果证实了张力方法比基于ICA的方法的优越性。在不符合坚硬耦合基础的假设的情况下,可以清楚地证明了柔软和柔性耦合分解的优势。
Data fusion refers to the joint analysis of multiple datasets which provide complementary views of the same task. In this preprint, the problem of jointly analyzing electroencephalography (EEG) and functional Magnetic Resonance Imaging (fMRI) data is considered. Jointly analyzing EEG and fMRI measurements is highly beneficial for studying brain function because these modalities have complementary spatiotemporal resolution: EEG offers good temporal resolution while fMRI is better in its spatial resolution. The fusion methods reported so far ignore the underlying multi-way nature of the data in at least one of the modalities and/or rely on very strong assumptions about the relation of the two datasets. In this preprint, these two points are addressed by adopting for the first time tensor models in the two modalities while also exploring double coupled tensor decompositions and by following soft and flexible coupling approaches to implement the multi-modal analysis. To cope with the Event Related Potential (ERP) variability in EEG, the PARAFAC2 model is adopted. The results obtained are compared against those of parallel Independent Component Analysis (ICA) and hard coupling alternatives in both simulated and real data. Our results confirm the superiority of tensorial methods over methods based on ICA. In scenarios that do not meet the assumptions underlying hard coupling, the advantage of soft and flexible coupled decompositions is clearly demonstrated.