Oxford Centre for Human Brain Activity, Warneford Hospital, Oxford, UK.
Neuroimage. 2013 Oct 15;80:330-8. doi: 10.1016/j.neuroimage.2013.03.059. Epub 2013 Apr 6.
A core goal of human connectomics is to characterise the neural pathways that underlie brain function. This can be largely achieved noninvasively by inferring white matter connectivity using diffusion MRI data. However, there are challenges. First, diffusion tractography is blind to directed connections, or whether a connection is expressed functionally. Second, we need to be able to go beyond the characterization of anatomical pathways, to understand distributed brain function that results from them. In particular, we need to characterise effective connectivity using functional imaging modalities, such as FMRI and M/EEG, to understand its context-sensitivity (e.g., modulation by task), and how it changes with synaptic plasticity. Here, we consider the critical role that biophysical network models have to play in meeting these challenges, by providing a principled way to conciliate information from anatomical and functional data. They also provide biophysically meaningful parameters, through which we can better understand brain function. In a translational setting, well-validated models may shed light on the mechanisms of individual disease processes.
人类连接组学的核心目标是描述大脑功能所依赖的神经通路。这可以通过使用弥散磁共振成像 (dMRI) 数据推断白质连接来在很大程度上非侵入性地实现。然而,存在一些挑战。首先,扩散轨迹追踪术对于有向连接或连接是否具有功能性是盲目的。其次,我们需要能够超越解剖通路的描述,以了解由此产生的分布式大脑功能。特别是,我们需要使用功能成像模式(如 fMRI 和 M/EEG)来描述有效连接,以了解其上下文敏感性(例如,任务的调制)以及它如何随突触可塑性而变化。在这里,我们考虑了生物物理网络模型在应对这些挑战方面所必须发挥的关键作用,为协调解剖学和功能数据提供了一种合理的方法。它们还提供了具有生物学意义的参数,通过这些参数我们可以更好地理解大脑功能。在转化研究中,经过充分验证的模型可能有助于揭示个体疾病过程的机制。