生理噪声:神经系统信息随机性的综合综述

IF 13.7 1区 生物学 Q1 BIOLOGY
Andrea Scarciglia , Claudio Bonanno , Gaetano Valenza
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引用次数: 0

摘要

在生物医学信号的分析中,噪声通常被认为是单纯的干扰。尽管如此,随机性在复杂系统的动力学中起着重要的信息作用,特别是在神经心血管系统和神经系统中。本文对生理背景下的信息随机性进行了全面的探索,追溯了噪声研究的演变,从布朗运动的基础到其在神经系统中的应用,包括心血管动力学的神经自主调节。在输出(测量)噪声和动态(固有)噪声之间进行了关键的区分,它们直接影响系统在各个层面的行为。几种生理噪声识别技术,如随机微分方程,贝叶斯方法和卡尔曼滤波器,在现实世界的情况下进行了评估。特别强调生理噪声在多尺度神经系统中的作用,如脑动力学、神经元通信和心脑相互作用,强调它如何塑造复杂的功能。此外,生理噪声被认为是一种潜在的临床生物标志物,可以深入了解神经系统的潜在结构和健康状况。鼓励未来的研究调查多元噪声估计方法及其对理解神经心血管网络的因果关系和系统相互作用的意义。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Physiological noise: a comprehensive review on informative randomness in neural systems
Noise is often regarded as mere interference in the analysis of biomedical signals. Nonetheless, stochasticity plays a critical and informative role in the dynamics of complex systems, particularly in neurocardiovascular and neural systems. This review provides a comprehensive exploration on informative randomness in physiological contexts, tracing the evolution of noise research from its foundations on Brownian motion to its applications in neural systems, including the neuroautonomic regulation of cardiovascular dynamics. Key distinctions are made between output (measurement) noise and dynamic (intrinsic) noise, which directly influence the system behaviors at various levels. Several physiological noise identification techniques, such as stochastic differential equations, Bayesian methods, and Kalman filters, are evaluated in real-world scenarios. Special emphasis is placed on the role of physiological noise in multiscale neural systems, such as brain dynamics, neuronal communication, and heart-brain interactions, highlighting how it shapes complex functions. Furthermore, physiological noise is presented as a potential clinical biomarker, offering insights into the underlying structure and health of neural systems. Future research is encouraged to investigate multivariate noise estimation methods and their implications for understanding causality and systemic interactions in neurocardiovascular networks.
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来源期刊
Physics of Life Reviews
Physics of Life Reviews 生物-生物物理
CiteScore
20.30
自引率
14.50%
发文量
52
审稿时长
8 days
期刊介绍: Physics of Life Reviews, published quarterly, is an international journal dedicated to review articles on the physics of living systems, complex phenomena in biological systems, and related fields including artificial life, robotics, mathematical bio-semiotics, and artificial intelligent systems. Serving as a unifying force across disciplines, the journal explores living systems comprehensively—from molecules to populations, genetics to mind, and artificial systems modeling these phenomena. Inviting reviews from actively engaged researchers, the journal seeks broad, critical, and accessible contributions that address recent progress and sometimes controversial accounts in the field.
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