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Data-driven evaluation of functional connectivity metrics

机译:数据驱动的功能连接性指标评估

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One essential problem in functional brain network study is measuring the functional connectivity among brain regions of interest (ROIs). Several widely-used functional connectivity metrics have been proposed so far in the field. However, their advantages and potential pitfalls have not been adequately examined. In this paper, we address this problem via a data-driven strategy. We perform classification experiments based on the large-scale functional connectivity patterns derived from resting-state fMRI (rs-fMRI) data and natural stimulus fMRI data (NfMRI) of video watching, respectively. Functional connectivities were measured via commonly used metrics including the Pearson correlation (PeCo), partial correlation (PaCo), mutual information (MI), and wavelet transform coherence (WTC). The accuracies in classification tasks are then used as the criteria to evaluate the aforementioned four metrics. Our experimental results show that WTC can achieve the best classification performance in both patient-control and video classification tasks, suggesting that WTC is a preferable functional connectivity metric for functional brain network study, in at least classification applications.
机译:功能性大脑网络研究中的一个基本问题是测量感兴趣的大脑区域(ROI)之间的功能连接性。迄今为止,在该领域中已经提出了几种广泛使用的功能连接性度量。但是,它们的优点和潜在的陷阱尚未得到充分检查。在本文中,我们通过数据驱动策略解决了这个问题。我们基于分别来自视频观看的静止状态功能磁共振成像(rs-fMRI)数据和自然刺激功能磁共振成像数据(NfMRI)的大规模功能连接模式进行分类实验。通过通常使用的度量标准来测量功能连接性,这些度量标准包括Pearson相关性(PeCo),部分相关性(PaCo),互信息(MI)和小波变换相干性(WTC)。然后,将分类任务中的准确性用作评估上述四个指标的标准。我们的实验结果表明,WTC可以在患者控制和视频分类任务中均达到最佳分类性能,这表明WTC至少在分类应用中是功能性大脑网络研究的首选功能连通性度量标准。

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