Analyzing the Brain's Dynamic Response to Targeted Stimulation using Generative Modeling

Rishikesan Maran, Eli J. Müller, Ben D. Fulcher
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Abstract

Generative models of brain activity have been instrumental in testing hypothesized mechanisms underlying brain dynamics against experimental datasets. Beyond capturing the key mechanisms underlying spontaneous brain dynamics, these models hold an exciting potential for understanding the mechanisms underlying the dynamics evoked by targeted brain-stimulation techniques. This paper delves into this emerging application, using concepts from dynamical systems theory to argue that the stimulus-evoked dynamics in such experiments may be shaped by new types of mechanisms distinct from those that dominate spontaneous dynamics. We review and discuss: (i) the targeted experimental techniques across spatial scales that can both perturb the brain to novel states and resolve its relaxation trajectory back to spontaneous dynamics; and (ii) how we can understand these dynamics in terms of mechanisms using physiological, phenomenological, and data-driven models. A tight integration of targeted stimulation experiments with generative quantitative modeling provides an important opportunity to uncover novel mechanisms of brain dynamics that are difficult to detect in spontaneous settings.
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利用生成模型分析大脑对定向刺激的动态响应
大脑活动的生成模型有助于根据实验数据集检验假定的大脑动力学机制。除了捕捉自发脑动力学的关键机制外,这些模型还具有令人兴奋的潜力,可用于理解定向脑刺激技术所唤起的脑动力学的内在机制。本文深入探讨了这一新兴应用,利用动力系统理论的概念论证了刺激诱发的实验动力学可能是由不同于主导自发动力学的新型机制形成的。我们回顾并讨论了(i) 跨越空间尺度的定向实验技术,这些技术既能将大脑扰动到新的状态,又能将其弛豫轨迹解析回自发动力学;(ii) 我们如何利用生理学、现象学和数据驱动模型从机制角度理解这些动力学。将定向刺激实验与生成性定量建模紧密结合,为揭示在自发环境中难以检测到的脑动力学新机制提供了重要机会。
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