用于新型神经科学实验的实时机器学习策略

Ayesha Vermani, Matthew Dowling, Hyungju Jeon, Ian Jordan, Josue Nassar, Yves Bernaerts, Yuan Zhao, Steven Van Vaerenbergh, Il Memming Park
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引用次数: 0

摘要

神经系统的功能和功能障碍与神经状态的时间演变息息相关。目前在显示其因果作用方面的局限性主要来自于缺乏能够实时探测大脑内部状态的工具。这一空白限制了对推进基础和临床神经科学至关重要的实验范围。实时机器学习技术的最新进展,尤其是将神经时间序列作为非线性随机动力系统进行分析的技术,正在开始弥合这一差距。这些技术能够立即解释神经系统并与之互动,为神经计算提供了新的见解。然而,仍然存在一些重大挑战。收敛速度慢、高维数据复杂性、结构噪声、不可识别性以及普遍缺乏为神经动力学量身定制的归纳偏差等问题都是关键的障碍。要全面实现实时神经数据分析,用于神经计算的因果关系研究和基于扰动的高级脑机接口,克服这些挑战至关重要。在本文中,我们对该领域的现状提供了一个全面的视角,重点关注这些长期存在的问题,并概述了潜在的前进道路。我们强调大规模综合神经科学计划的重要性以及元学习在克服这些挑战中的作用。这些方法代表了大有可为的研究方向,可以重新定义神经科学实验和脑机接口的前景,促进在理解大脑功能和治疗神经系统疾病方面取得突破性进展。
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Real-Time Machine Learning Strategies for a New Kind of Neuroscience Experiments
Function and dysfunctions of neural systems are tied to the temporal evolution of neural states. The current limitations in showing their causal role stem largely from the absence of tools capable of probing the brain's internal state in real-time. This gap restricts the scope of experiments vital for advancing both fundamental and clinical neuroscience. Recent advances in real-time machine learning technologies, particularly in analyzing neural time series as nonlinear stochastic dynamical systems, are beginning to bridge this gap. These technologies enable immediate interpretation of and interaction with neural systems, offering new insights into neural computation. However, several significant challenges remain. Issues such as slow convergence rates, high-dimensional data complexities, structured noise, non-identifiability, and a general lack of inductive biases tailored for neural dynamics are key hurdles. Overcoming these challenges is crucial for the full realization of real-time neural data analysis for the causal investigation of neural computation and advanced perturbation based brain machine interfaces. In this paper, we provide a comprehensive perspective on the current state of the field, focusing on these persistent issues and outlining potential paths forward. We emphasize the importance of large-scale integrative neuroscience initiatives and the role of meta-learning in overcoming these challenges. These approaches represent promising research directions that could redefine the landscape of neuroscience experiments and brain-machine interfaces, facilitating breakthroughs in understanding brain function, and treatment of neurological disorders.
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