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Large-Scale Circuitry Interactions Upon Earthquake Experiences Revealed by Recurrent Neural Networks

机译:循环神经网络揭示了地震经历后的大规模电路相互作用

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摘要

Brain dynamics has recently received increasing interest due to its significant importance in basic and clinical neurosciences. However, due to inherent difficulties in both data acquisition and data analysis methods, studies on large-scale brain dynamics of mouse with local field potential (LFP) recording are very rare. In this paper, we did a series of works on modeling large-scale mouse brain dynamic activities responding to fearful earthquake. Based on LFP recording data from 13 brain regions that are closely related to fear learning and memory and the effective Bayesian connectivity change point model, we divided the response time series into four stages: “Before,” “Earthquake,” “Recovery,” and “After.” We first reported the changes in power and theta–gamma coupling during stage transitions. Then, a recurrent neural network model was designed to model the functional dynamics in these thirteen brain regions and six frequency bands in response to the fear stimulus. Interestingly, our results showed that the functional brain connectivities in theta and gamma bands exhibited distinct response processes: in theta band, there is a separated–united–separated alternation in whole-brain connectivity and a low-high-low change in connectivity strength; however, gamma bands have a united–separated–united transition and a high-low-high alternation in connectivity pattern and strength. In general, our results offer a novel perspective in studying functional brain dynamics under fearful stimulus and reveal its relationship to the brain’s structural connectivity substrates.
机译:由于其在基础和临床神经科学中的重要作用,近来人们对脑动力学的兴趣日益增加。但是,由于数据采集和数据分析方法都存在固有的困难,因此对具有局部场电势(LFP)记录的小鼠的大规模脑动力学研究很少。在本文中,我们进行了一系列工作,以对响应可怕地震的大型小鼠大脑动态活动进行建模。根据LFP记录的来自与恐惧学习和记忆密切相关的13个大脑区域的数据以及有效的贝叶斯连通性变化点模型,我们将响应时间序列分为四个阶段:“之前”,“地震”,“恢复”和“后。”我们首先报道了在相变期间功率和θ-γ耦合的变化。然后,设计了一个递归神经网络模型,以对这13个大脑区域和6个频带中的功能动力学进行建模,以响应恐惧刺激。有趣的是,我们的结果表明,θ和γ波段的功能性大脑连接表现出不同的响应过程:在θ波段,全脑连接存在分离-联合-分离的交替,并且连接强度呈低-高-低变化。但是,伽马波段具有统一的,分离的统一的过渡,并且连接模式和强度之间存在高-低-高交替。总体而言,我们的研究结果为研究可怕刺激下的功能性大脑动力学提供了新颖的视角,并揭示了其与大脑结构连接基质的关系。

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  • 作者单位

    College of Biomedical Engineering & Instrument Science, Zhejiang University, Hangzhou, China;

    Brain Decoding Center, Banna Biomedical Research Institute, Yunnan Academy of Science and Technology, Xishuangbanna, China;

    School of Computer Science and Engineering, Nanjing University of Science and Technology, Nanjing, China;

    College of Biomedical Engineering & Instrument Science, Zhejiang University, Hangzhou, China;

    Zhejiang Provincial Key Laboratory for Network Multimedia Technologies, Hangzhou, China;

    Department of Math and Statistics, Georgia State University, Atlanta, GA, USA;

    State Key Laboratory of Industrial Control Technology, Zhejiang University, Hangzhou, China;

    Brain and Behavior Discovery Institute, Medical College of Georgia at Augusta University, Augusta, GA, USA;

    Department of Computer Science, Cortical Architecture Imaging and Discovery Laboratory, Bioimaging Research Center, University of Georgia, Athens, GA, USA;

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  • 原文格式 PDF
  • 正文语种 eng
  • 中图分类
  • 关键词

    Mice; Earthquakes; Brain modeling; Recurrent neural networks; Hidden Markov models; Data models;

    机译:小鼠;地震;脑模型;递归神经网络;隐马尔可夫模型;数据模型;

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