Toward Principles of Brain Network Organization and Function.

IF 10.4 1区 生物学 Q1 BIOPHYSICS
Suman Kulkarni, Dani S Bassett
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引用次数: 0

Abstract

The brain is immensely complex, with diverse components and dynamic interactions building upon one another to orchestrate a wide range of behaviors. Understanding the patterns of these complex interactions and how they are coordinated to support collective neural function is critical for parsing human and animal behavior, treating mental illness, and developing artificial intelligence. Rapid experimental advances in imaging, recording, and perturbing neural systems across various species now provide opportunities to distill underlying principles of brain organization and function. Here, we take stock of recent progress and review methods used in the statistical analysis of brain networks, drawing from fields of statistical physics, network theory, and information theory. Our discussion is organized by scale, starting with models of individual neurons and extending to large-scale networks mapped across brain regions. We then examine organizing principles and constraints that shape the biological structure and function of neural circuits. We conclude with an overview of several critical frontiers, including expanding current models, fostering tighter feedback between theory and experiment, and leveraging perturbative approaches to understand neural systems. Alongside these efforts, we highlight the importance of contextualizing their contributions by linking them to formal accounts of explanation and causation.

大脑是极其复杂的,其不同的组成部分和动态的相互作用相互依存,从而协调各种行为。了解这些复杂相互作用的模式以及它们如何协调以支持集体神经功能,对于解析人类和动物行为、治疗精神疾病和开发人工智能至关重要。目前,不同物种神经系统的成像、记录和扰动实验进展迅速,为提炼大脑组织和功能的基本原理提供了机会。在此,我们将从统计物理学、网络理论和信息论等领域出发,总结最近的进展,并回顾大脑网络统计分析中使用的方法。我们的讨论是按规模组织的,从单个神经元模型开始,扩展到跨脑区映射的大规模网络。然后,我们将研究塑造神经回路生物结构和功能的组织原则和制约因素。最后,我们概述了几个关键前沿领域,包括扩展现有模型、促进理论与实验之间更紧密的反馈,以及利用扰动方法理解神经系统。除了这些努力之外,我们还强调了将这些贡献与解释和因果关系的正式说明联系起来,从而使其背景化的重要性。
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来源期刊
Annual Review of Biophysics
Annual Review of Biophysics 生物-生物物理
CiteScore
21.00
自引率
0.00%
发文量
25
期刊介绍: The Annual Review of Biophysics, in publication since 1972, covers significant developments in the field of biophysics, including macromolecular structure, function and dynamics, theoretical and computational biophysics, molecular biophysics of the cell, physical systems biology, membrane biophysics, biotechnology, nanotechnology, and emerging techniques.
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