John Yohan J, Sawyer Kayle S, Srinivasan Karthik, Müller Eli J, Munn Brandon R, Shine James M
Neural Systems Laboratory, Department of Health Sciences, Boston University, Boston, MA, USA.
Departments of Anatomy and Neurobiology, Boston University, Boston University, Boston, MA, USA.
Netw Neurosci. 2022 Oct 1;6(4):960-979. doi: 10.1162/netn_a_00230. eCollection 2022.
Most human neuroscience research to date has focused on statistical approaches that describe stationary patterns of localized neural activity or blood flow. While these patterns are often interpreted in light of dynamic, information-processing concepts, the static, local, and inferential nature of the statistical approach makes it challenging to directly link neuroimaging results to plausible underlying neural mechanisms. Here, we argue that dynamical systems theory provides the crucial mechanistic framework for characterizing both the brain's time-varying quality and its partial stability in the face of perturbations, and hence, that this perspective can have a profound impact on the interpretation of human neuroimaging results and their relationship with behavior. After briefly reviewing some key terminology, we identify three key ways in which neuroimaging analyses can embrace a dynamical systems perspective: by shifting from a local to a more global perspective, by focusing on dynamics instead of static snapshots of neural activity, and by embracing modeling approaches that map neural dynamics using "forward" models. Through this approach, we envisage ample opportunities for neuroimaging researchers to enrich their understanding of the dynamic neural mechanisms that support a wide array of brain functions, both in health and in the setting of psychopathology.
迄今为止,大多数人类神经科学研究都集中在描述局部神经活动或血流的静态模式的统计方法上。虽然这些模式通常根据动态的信息处理概念来解释,但统计方法的静态、局部和推理性质使得将神经成像结果直接与合理的潜在神经机制联系起来具有挑战性。在此,我们认为动力系统理论为表征大脑随时间变化的特性及其在面对扰动时的部分稳定性提供了关键的机制框架,因此,这种观点可能会对人类神经成像结果的解释及其与行为的关系产生深远影响。在简要回顾一些关键术语后,我们确定了神经成像分析可以采用动力系统观点的三种关键方式:从局部视角转向更全局的视角,关注动态而非神经活动的静态快照,以及采用使用“前向”模型映射神经动力学的建模方法。通过这种方法,我们设想神经成像研究人员有充足的机会丰富他们对支持广泛脑功能(包括健康状态和精神病理学背景下)的动态神经机制的理解。