The arrow of time of brain signals in cognition: Potential intriguing role of parts of the default mode network.

IF 3.6 3区 医学 Q2 NEUROSCIENCES Network Neuroscience Pub Date : 2023-10-01 eCollection Date: 2023-01-01 DOI:10.1162/netn_a_00300
Gustavo Deco, Yonatan Sanz Perl, Laura de la Fuente, Jacobo D Sitt, B T Thomas Yeo, Enzo Tagliazucchi, Morten L Kringelbach
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引用次数: 5

Abstract

A promising idea in human cognitive neuroscience is that the default mode network (DMN) is responsible for coordinating the recruitment and scheduling of networks for computing and solving task-specific cognitive problems. This is supported by evidence showing that the physical and functional distance of DMN regions is maximally removed from sensorimotor regions containing environment-driven neural activity directly linked to perception and action, which would allow the DMN to orchestrate complex cognition from the top of the hierarchy. However, discovering the functional hierarchy of brain dynamics requires finding the best way to measure interactions between brain regions. In contrast to previous methods measuring the hierarchical flow of information using, for example, transfer entropy, here we used a thermodynamics-inspired, deep learning based Temporal Evolution NETwork (TENET) framework to assess the asymmetry in the flow of events, 'arrow of time', in human brain signals. This provides an alternative way of quantifying hierarchy, given that the arrow of time measures the directionality of information flow that leads to a breaking of the balance of the underlying hierarchy. In turn, the arrow of time is a measure of nonreversibility and thus nonequilibrium in brain dynamics. When applied to large-scale Human Connectome Project (HCP) neuroimaging data from close to a thousand participants, the TENET framework suggests that the DMN plays a significant role in orchestrating the hierarchy, that is, levels of nonreversibility, which changes between the resting state and when performing seven different cognitive tasks. Furthermore, this quantification of the hierarchy of the resting state is significantly different in health compared to neuropsychiatric disorders. Overall, the present thermodynamics-based machine-learning framework provides vital new insights into the fundamental tenets of brain dynamics for orchestrating the interactions between cognition and brain in complex environments.

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大脑信号在认知中的时间箭头:默认模式网络部分的潜在有趣作用。
人类认知神经科学中一个很有前途的想法是,默认模式网络(DMN)负责协调网络的招募和调度,以计算和解决特定任务的认知问题。有证据表明,DMN区域的物理和功能距离与包含与感知和行动直接相关的环境驱动神经活动的感觉运动区域最大限度地分离,这将使DMN能够从层次的顶部协调复杂的认知。然而,发现大脑动力学的功能层次需要找到测量大脑区域之间相互作用的最佳方法。与之前使用传递熵等方法测量分层信息流的方法不同,我们在这里使用了一个受热力学启发的、基于深度学习的时间进化网络(TENET)框架来评估人脑信号中事件流“时间箭头”的不对称性。这提供了一种量化层次结构的替代方法,因为时间箭头衡量的是信息流的方向性,这会导致底层层次结构的平衡被打破。反过来,时间之箭是衡量大脑动力学不可逆性和不平衡性的指标。当应用于来自近千名参与者的大规模人类连接体项目(HCP)神经成像数据时,TENET框架表明,DMN在协调层次结构(即不可逆性水平)方面发挥着重要作用,不可逆性在静息状态和执行七种不同认知任务时发生变化。此外,与神经精神疾病相比,这种静息状态层次的量化在健康方面有显著不同。总的来说,目前基于热力学的机器学习框架为大脑动力学的基本原理提供了重要的新见解,以协调复杂环境中认知和大脑之间的相互作用。
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来源期刊
Network Neuroscience
Network Neuroscience NEUROSCIENCES-
CiteScore
6.40
自引率
6.40%
发文量
68
审稿时长
16 weeks
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