Microscale multicircuit brain stimulation: Achieving real-time brain state control for novel applications

Yuri B. Saalmann , Sima Mofakham , Charles B. Mikell , Petar M. Djuric
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引用次数: 1

Abstract

Neurological and psychiatric disorders typically result from dysfunction across multiple neural circuits. Most of these disorders lack a satisfactory neuromodulation treatment. However, deep brain stimulation (DBS) has been successful in a limited number of disorders; DBS typically targets one or two brain areas with single contacts on relatively large electrodes, allowing for only coarse modulation of circuit function. Because of the dysfunction in distributed neural circuits – each requiring fine, tailored modulation – that characterizes most neuropsychiatric disorders, this approach holds limited promise. To develop the next generation of neuromodulation therapies, we will have to achieve fine-grained, closed-loop control over multiple neural circuits. Recent work has demonstrated spatial and frequency selectivity using microstimulation with many small, closely-spaced contacts, mimicking endogenous neural dynamics. Using custom electrode design and stimulation parameters, it should be possible to achieve bidirectional control over behavioral outcomes, such as increasing or decreasing arousal during central thalamic stimulation. Here, we discuss one possible approach, which we term microscale multicircuit brain stimulation (MMBS). We discuss how machine learning leverages behavioral and neural data to find optimal stimulation parameters across multiple contacts, to drive the brain towards desired states associated with behavioral goals. We expound a mathematical framework for MMBS, where behavioral and neural responses adjust the model in real-time, allowing us to adjust stimulation in real-time. These technologies will be critical to the development of the next generation of neurostimulation therapies, which will allow us to treat problems like disorders of consciousness and cognition.

Abstract Image

微尺度多电路脑刺激:实现实时脑状态控制的新应用
神经和精神疾病通常由多个神经回路的功能障碍引起。这些疾病大多缺乏令人满意的神经调控治疗。然而,脑深部刺激(DBS)在数量有限的疾病中取得了成功;DBS通常以一个或两个大脑区域为目标,在相对较大的电极上进行单一接触,只允许粗略调节电路功能。由于分布式神经回路的功能障碍——每个回路都需要精细的、量身定制的调节——是大多数神经精神疾病的特征,这种方法的前景有限。为了开发下一代神经调控疗法,我们必须实现对多个神经回路的精细闭环控制。最近的工作已经证明了使用具有许多小的、紧密间隔的接触的微刺激来模拟内源性神经动力学的空间和频率选择性。使用定制的电极设计和刺激参数,应该可以实现对行为结果的双向控制,例如在中枢丘脑刺激期间增加或减少唤醒。在这里,我们讨论了一种可能的方法,我们称之为微尺度多回路脑刺激(MMBS)。我们讨论了机器学习如何利用行为和神经数据在多个接触中找到最佳刺激参数,以驱动大脑达到与行为目标相关的期望状态。我们阐述了MMBS的数学框架,其中行为和神经反应实时调整模型,使我们能够实时调整刺激。这些技术将对下一代神经刺激疗法的发展至关重要,这将使我们能够治疗意识和认知障碍等问题。
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CiteScore
2.20
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