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首页> 外文期刊>Biomedical Engineering, IEEE Transactions on >Automatic Identification of Functional Clusters in fMRI Data Using Spatial Dependence
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Automatic Identification of Functional Clusters in fMRI Data Using Spatial Dependence

机译:利用空间依赖性自动识别fMRI数据中的功能簇

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In independent component analysis (ICA) of functional magnetic resonance imaging (fMRI) data, extracting a large number of maximally independent components provides a detailed functional segmentation of brain. However, such high-order segmentation does not establish the relationships among different brain networks, and also studying and classifying components can be challenging. In this study, we present a multidimensional ICA (MICA) scheme to achieve automatic component clustering. In our MICA framework, stable components are hierarchically grouped into clusters based on higher order statistical dependence—mutual information—among spatial components, instead of the typically used temporal correlation among time courses. The final cluster membership is determined using a statistical hypothesis testing method. Since ICA decomposition takes into account the modulation of the spatial maps, i.e., temporal information, our ICA-based approach incorporates both spatial and temporal information effectively. Our experimental results from both simulated and real fMRI datasets show that the use of spatial dependence leads to physiologically meaningful connectivity structure of brain networks, which is consistently identified across various ICA model orders and algorithms. In addition, we observe that components related to artifacts, including cerebrospinal fluid, arteries, and large draining veins, are grouped together and encouragingly distinguished from other components of interest.
机译:在功能磁共振成像(fMRI)数据的独立成分分析(ICA)中,提取大量最大独立成分可以对大脑进行详细的功能分割。但是,这种高阶分割无法在不同的大脑网络之间建立联系,并且对组件进行研究和分类也可能是一个挑战。在这项研究中,我们提出了一种多维ICA(MICA)方案来实现自动组件聚类。在我们的MICA框架中,稳定成分基于空间成分之间的高阶统计依赖性(相互信息)而不是时程之间通常使用的时间相关性,按层次结构分组为群集。使用统计假设检验方法确定最终的群集成员。由于ICA分解考虑了空间图的调制,即时间信息,因此我们基于ICA的方法有效地合并了空间和时间信息。我们从模拟和实际fMRI数据集获得的实验结果表明,空间依赖性的使用导致大脑网络具有生理意义的连接结构,可以在各种ICA模型阶次和算法中一致地确定这种结构。此外,我们观察到与人工制品(包括脑脊液,动脉和大引流静脉)相关的组件被组合在一起,并与其他感兴趣的组件令人鼓舞地区分开来。

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