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首页> 外文期刊>NeuroImage >Determining functional connectivity using fMRI data with diffusion-based anatomical weighting
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Determining functional connectivity using fMRI data with diffusion-based anatomical weighting

机译:使用功能磁共振成像数据和基于扩散的解剖加权确定功能连通性

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There is strong interest in investigating both functional connectivity (FC) using functional magnetic resonance imaging (fMRI) and structural connectivity (SC) using diffusion tensor imaging (DTI). There is also emerging evidence of correspondence between functional and structural pathways within many networks (Greicius, et al., 2009; Skudlarski et al., 2008; van den Heuvel et al., 2009), although some regions without SC exhibit strong FC (Honey et al., 2008). These findings suggest that FC may be mediated by (direct or indirect) anatomical connections, offering an opportunity to supplement fMRI data with DTI data when determining FC. We develop a novel statistical method for determining FC, called anatomically weighted FC (awFC), which combines fMRI and DTI data. Our awFC approach implements a hierarchical clustering algorithm that establishes neural processing networks using a new distance measure consisting of two components, a primary functional component that captures correlations between fMRI signals from different regions and a secondary anatomical weight reflecting probabilities of SC. The awFC approach defaults to conventional unweighted clustering for specific parameter settings. We optimize awFC parameters using a strictly functional criterion, therefore our approach will generally perform at least as well as an unweighted analysis, with respect to intracluster coherence or autocorrelation. AwFC also yields more informative results since it provides structural properties associated with identified functional networks. We apply awFC to two fMRI data sets: resting-state data from 6 healthy subjects and data from 17 subjects performing an auditory task. In these examples, awFC leads to more highly autocorrelated networks than a conventional analysis. We also conduct a simulation study, which demonstrates accurate performance of awFC and confirms that awFC generally yields comparable, if not superior, accuracy relative to a standard approach.
机译:对使用功能磁共振成像(fMRI)的功能连接性(FC)和使用扩散张量成像(DTI)的结构连接性(SC)进行研究的兴趣浓厚。尽管有些地区没有SC表现出很强的FC效应,但也有许多新证据表明许多网络中的功能和结构途径之间存在对应关系(Greicius等,2009; Skudlarski等,2008; van den Heuvel等,2009)。 Honey等,2008)。这些发现表明FC可能是由(直接或间接)解剖学连接介导的,为确定FC时提供了用DTI数据补充fMRI数据的机会。我们开发了一种新的用于确定FC的统计方法,称为解剖学加权FC(awFC),该方法结合了fMRI和DTI数据。我们的awFC方法实现了一种层次化的聚类算法,该算法使用由两个组件组成的新距离度量来建立神经处理网络,该组件包括捕获来自不同区域的fMRI信号之间的相关性的主要功能组件以及反映SC概率的次要解剖结构权重。对于特定的参数设置,awFC方法默认为常规的非加权聚类。我们使用严格的功能标准来优化awFC参数,因此,对于集群内相关性或自相关性,我们的方法通常至少会执行以及进行非加权分析。 AwFC还提供了与已识别功能网络相关的结构特性,因此也产生了更多信息。我们将awFC应用于两个fMRI数据集:来自6个健康受试者的静止状态数据和来自执行听觉任务的17个受试者的数据。在这些示例中,与传统分析相比,awfFC导致了更高的自相关网络。我们还进行了一项仿真研究,该研究证明了awFC的准确性能,并确认awFC通常可产生与标准方法相当的准确性,即使不是更好。

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