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相同输入的不同计算会在算法大脑网络中产生选择性行为。

Different computations over the same inputs produce selective behavior in algorithmic brain networks.

机构信息

School of Psychology and Neuroscience, University of Glasgow, Glasgow, United Kingdom.

Department of Psychology, Edge Hill University, Ormskirk, United Kingdom.

出版信息

Elife. 2022 Feb 17;11:e73651. doi: 10.7554/eLife.73651.

Abstract

A key challenge in neuroimaging remains to understand where, when, and now particularly human brain networks compute over sensory inputs to achieve behavior. To study such dynamic algorithms from mass neural signals, we recorded the magnetoencephalographic (MEG) activity of participants who resolved the classic XOR, OR, and AND functions as overt behavioral tasks (N = 10 participants/task, N-of-1 replications). Each function requires a different computation over the same inputs to produce the task-specific behavioral outputs. In each task, we found that source-localized MEG activity progresses through four computational stages identified within individual participants: (1) initial contralateral representation of each visual input in occipital cortex, (2) a joint linearly combined representation of both inputs in midline occipital cortex and right fusiform gyrus, followed by (3) nonlinear task-dependent input integration in temporal-parietal cortex, and finally (4) behavioral response representation in postcentral gyrus. We demonstrate the specific dynamics of each computation at the level of individual sources. The spatiotemporal patterns of the first two computations are similar across the three tasks; the last two computations are task specific. Our results therefore reveal where, when, and how dynamic network algorithms perform different computations over the same inputs to produce different behaviors.

摘要

神经影像学的一个关键挑战仍然是理解大脑网络在何处、何时以及现在特别是人类大脑网络如何对感官输入进行计算以实现行为。为了从大量神经信号中研究这种动态算法,我们记录了参与者的脑磁图 (MEG) 活动,这些参与者通过明显的行为任务解决了经典的 XOR、OR 和 AND 功能(N = 10 名参与者/任务,N-of-1 重复)。每个功能都需要对相同的输入进行不同的计算,以产生特定于任务的行为输出。在每个任务中,我们发现源定位 MEG 活动通过在个体参与者中识别的四个计算阶段进行:(1) 每个视觉输入在枕叶皮层中的初始对侧表示,(2) 两个输入在中线枕叶皮层和右侧梭状回中的联合线性组合表示,随后是 (3) 在颞顶叶皮层中的非线性任务相关输入整合,最后是 (4) 在中央后回中的行为反应表示。我们在单个源的水平上展示了每个计算的具体动态。前两个计算的时空模式在三个任务中相似;后两个计算是特定于任务的。因此,我们的结果揭示了动态网络算法在何处、何时以及如何对相同的输入进行不同的计算以产生不同的行为。

https://cdn.ncbi.nlm.nih.gov/pmc/blobs/cbe3/8853655/3a095ef04418/elife-73651-fig1.jpg

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