Medical Research Council (MRC) Biostatistics Unit, Cambridge CB2 0SR, United Kingdom.
Medical Research Council (MRC) Biostatistics Unit, Cambridge CB2 0SR, United Kingdom.
Neuroimage. 2017 Aug 15;157:635-647. doi: 10.1016/j.neuroimage.2017.05.065. Epub 2017 Jun 1.
Several methods have been developed to measure dynamic functional connectivity (dFC) in fMRI data. These methods are often based on a sliding-window analysis, which aims to capture how the brain's functional organization varies over the course of a scan. The aim of many studies is to compare dFC across groups, such as younger versus older people. However, spurious group differences in measured dFC may be caused by other sources of heterogeneity between people. For example, the shape of the haemodynamic response function (HRF) and levels of measurement noise have been found to vary with age. We use a generic simulation framework for fMRI data to investigate the effect of such heterogeneity on estimates of dFC. Our findings show that, despite no differences in true dFC, individual differences in measured dFC can result from other (non-dynamic) features of the data, such as differences in neural autocorrelation, HRF shape, connectivity strength and measurement noise. We also find that common dFC methods such as k-means and multilayer modularity approaches can detect spurious group differences in dynamic connectivity due to inappropriate setting of their hyperparameters. fMRI studies therefore need to consider alternative sources of heterogeneity across individuals before concluding differences in dFC.
已经开发出几种方法来测量 fMRI 数据中的动态功能连接(dFC)。这些方法通常基于滑动窗口分析,旨在捕捉大脑功能组织在扫描过程中的变化。许多研究的目的是比较不同组之间的 dFC,例如年轻人与老年人之间的比较。然而,测量的 dFC 中存在虚假的组间差异可能是由于人与人之间其他异质性来源造成的。例如,已经发现血流动力学响应函数(HRF)的形状和测量噪声的水平随年龄而变化。我们使用 fMRI 数据的通用模拟框架来研究这种异质性对 dFC 估计的影响。我们的研究结果表明,尽管真实的 dFC 没有差异,但测量的 dFC 中的个体差异可能来自数据的其他(非动态)特征,例如神经自相关、HRF 形状、连接强度和测量噪声的差异。我们还发现,常见的 dFC 方法,如 k-均值和多层模块化方法,由于其超参数设置不当,可能会检测到动态连接中的虚假组间差异。因此,在得出 dFC 差异的结论之前,fMRI 研究需要考虑个体之间的替代异质性来源。