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Data-driven fusion of EEG, functional and structural MRI: A comparison of two models

机译:脑电,功能和结构MRI的数据驱动融合:两种模型的比较

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It has become quite common for multiple brain imaging types to be collected for a particular study. This raises the issue of how to combine these imaging types to gain the most useful information for inference. One can perform data integration, where one modality is used to improve the results of another, or true data fusion, where multiple modalities are used to inform one another. We propose two new methods of data fusion, entropy bound minimization (EBM) for joint independent component analysis (jICA) and independent vector analysis with a Gaussian prior (IVA-G), and compare them to the established data fusion techniques of multiset canonical correlation analysis (MCCA) and jICA using Infomax. Additionally, we propose a simulation model and use it to probe the limitations of these methods. Results show that EBM with jICA outperforms the other selected methods but is highly sensitive to the availability of joint information provided by these modalities.
机译:收集多种脑成像类型用于特定研究已变得非常普遍。这就提出了如何组合这些成像类型以获得最有用的信息进行推理的问题。一个人可以执行数据集成(其中一种模式用于改进另一种模式的结果),或者执行真正的数据融合(其中多种模式用于通知彼此)。我们提出了两种新的数据融合方法:用于联合独立分量分析(jICA)的熵绑定最小化(EBM)和使用高斯先验(IVA-G)进行的独立矢量分析,并将它们与已建立的多集规范相关的数据融合技术进行比较使用Infomax进行分析(MCCA)和jICA。此外,我们提出了一个仿真模型,并用它来探讨这些方法的局限性。结果表明,采用jICA的EBM优于其他选择的方法,但对这些模式提供的联合信息的可用性高度敏感。

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