The Mind Research Network, Albuquerque, New Mexico.
Department of Computer Science and Electrical Engineering, University of Maryland, Baltimore County, Baltimore, Maryland.
Hum Brain Mapp. 2018 Apr;39(4):1626-1636. doi: 10.1002/hbm.23939. Epub 2018 Jan 9.
Functional connectivity during the resting state has been shown to change over time (i.e., has a dynamic connectivity). However, resting-state fluctuations, in contrast to task-based experiments, are not initiated by an external stimulus. Consequently, a more complicated method needs to be designed to measure the dynamic connectivity. Previous approaches have been based on assumptions regarding the nature of the underlying dynamic connectivity to compensate for this knowledge gap. The most common assumption is what we refer to as locality assumption. Under a locality assumption, a single connectivity state can be estimated from data that are close in time. This assumption is so natural that it has been either explicitly or implicitly embedded in many current approaches to capture dynamic connectivity. However, an important drawback of methods using this assumption is they are unable to capture dynamic changes in connectivity beyond the embedded rate while, there has been no evidence that the rate of change in brain connectivity matches the rates enforced by this assumption. In this study, we propose an approach that enables us to capture functional connectivity with arbitrary rates of change, varying from very slow to the theoretically maximum possible rate of change, which is only imposed by the sampling rate of the imaging device. This method allows us to observe unique patterns of connectivity that were not observable with previous approaches. As we explain further, these patterns are also significantly correlated to the age and gender of study subjects, which suggests they are also neurobiologically related.
静息态功能连接随时间变化而改变(即具有动态连接)已得到证实。然而,与基于任务的实验不同,静息态波动不是由外部刺激引发的。因此,需要设计一种更复杂的方法来测量动态连接。以前的方法是基于对潜在动态连接的性质的假设来弥补这一知识空白。最常见的假设是我们称之为局部性假设。在局部性假设下,可以从时间上接近的数据中估计单个连接状态。这个假设是如此自然,以至于它已经被隐含或显式地嵌入到许多当前的方法中,以捕捉动态连接。然而,使用该假设的方法的一个重要缺点是,它们无法在嵌入率之外捕获连接的动态变化,而没有证据表明脑连接的变化率与该假设所施加的速率相匹配。在这项研究中,我们提出了一种方法,使我们能够以任意变化率捕获功能连接,变化率从非常缓慢到理论上可能的最快变化率,这仅受成像设备的采样率限制。这种方法使我们能够观察到以前的方法无法观察到的独特连接模式。正如我们进一步解释的那样,这些模式与研究对象的年龄和性别也有显著的相关性,这表明它们也与神经生物学有关。