Systems Neuroscience Group, QIMR Berghofer Medical Research Institute, Royal Brisbane and Women's Hospital, Brisbane, Australia; Centre for Integrative Brain Function, QIMR Berghofer Medical Research Institute, Royal Brisbane and Women's Hospital, Brisbane, Australia.
Wellcome Trust Centre for Neuroimaging, Institute of Neurology, University College London, London, United Kingdom.
Biol Psychiatry Cogn Neurosci Neuroimaging. 2017 Apr;2(3):225-234. doi: 10.1016/j.bpsc.2016.12.009. Epub 2017 Feb 10.
Brain activity derives from intrinsic dynamics (due to neurophysiology and anatomical connectivity) in concert with stochastic effects that arise from sensory fluctuations, brainstem discharges, and random microscopic states such as thermal noise. The dynamic evolution of systems composed of both dynamic and random fluctuations can be studied with stochastic dynamic models (SDMs). This article, Part II of a two-part series, reviews applications of SDMs to large-scale neural systems in health and disease. Stochastic models have already elucidated a number of pathophysiological phenomena, such as epilepsy and hypoxic ischemic encephalopathy, although their use in biological psychiatry remains rather nascent. Emerging research in this field includes phenomenological models of mood fluctuations in bipolar disorder and biophysical models of functional imaging data in psychotic and affective disorders. Together with deeper theoretical considerations, this work suggests that SDMs will play a unique and influential role in computational psychiatry, unifying empirical observations with models of perception and behavior.
脑活动源自内在动力学(由于神经生理学和解剖连通性),同时伴随着随机效应,这些随机效应源于感觉波动、脑干放电以及随机微观状态,如热噪声。由动态和随机波动组成的系统的动态演变可以使用随机动态模型 (SDM) 进行研究。本文是两部分系列的第二部分,回顾了 SDM 在健康和疾病中的大尺度神经系统中的应用。随机模型已经阐明了许多病理生理现象,如癫痫和缺氧缺血性脑病,尽管它们在生物精神病学中的应用还相当不成熟。该领域的新兴研究包括双相情感障碍情绪波动的现象学模型和精神病和情感障碍功能成像数据的生物物理模型。与更深入的理论考虑相结合,这项工作表明 SDM 将在计算精神病学中发挥独特而有影响力的作用,将感知和行为模型与经验观察统一起来。