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基于植入式脑电图信号的脑功能定向连接性的大鼠运动检测

Rat Locomotion Detection Based on Brain Functional Directed Connectivity from Implanted Electroencephalography Signals.

作者信息

Li Bo, Zhang Minjian, Liu Yafei, Hu Dingyin, Zhao Juan, Tang Rongyu, Lang Yiran, He Jiping

机构信息

School of Mechatronical Engineering, Beijing Institute of Technology, Beijing 100081, China.

Beijing Innovation Centre for Intelligent Robots and Systems, Beijing Institute of Technology, Beijing 100081, China.

出版信息

Brain Sci. 2021 Mar 9;11(3):345. doi: 10.3390/brainsci11030345.

Abstract

Previous findings have suggested that the cortex involved in walking control in freely locomotion rats. Moreover, the spectral characteristics of cortical activity showed significant differences in different walking conditions. However, whether brain connectivity presents a significant difference during rats walking under different behavior conditions has yet to be verified. Similarly, whether brain connectivity can be used in locomotion detection remains unknown. To address those concerns, we recorded locomotion and implanted electroencephalography signals in freely moving rats performing two kinds of task conditions (upslope and downslope walking). The Granger causality method was used to determine brain functional directed connectivity in rats during these processes. Machine learning algorithms were then used to categorize the two walking states, based on functional directed connectivity. We found significant differences in brain functional directed connectivity varied between upslope and downslope walking. Moreover, locomotion detection based on brain connectivity achieved the highest accuracy (91.45%), sensitivity (90.93%), specificity (91.3%), and F1-score (91.43%). Specifically, the classification results indicated that connectivity features in the high gamma band contained the most discriminative information with respect to locomotion detection in rats, with the support vector machine classifier exhibiting the most efficient performance. Our study not only suggests that brain functional directed connectivity in rats showed significant differences in various behavioral contexts but also proposed a method for classifying the locomotion states of rat walking, based on brain functional directed connectivity. These findings elucidate the characteristics of neural information interaction between various cortical areas in freely walking rats.

摘要

先前的研究结果表明,在自由运动的大鼠中,大脑皮层参与行走控制。此外,皮层活动的频谱特征在不同的行走条件下显示出显著差异。然而,在不同行为条件下大鼠行走时大脑连接性是否存在显著差异尚未得到验证。同样,大脑连接性是否可用于运动检测也仍然未知。为了解决这些问题,我们记录了自由移动的大鼠在执行两种任务条件(上坡和下坡行走)时的运动情况并植入了脑电图信号。采用格兰杰因果关系方法来确定大鼠在这些过程中的大脑功能定向连接性。然后使用机器学习算法根据功能定向连接性对两种行走状态进行分类。我们发现上坡行走和下坡行走之间大脑功能定向连接性存在显著差异。此外,基于大脑连接性的运动检测达到了最高准确率(91.45%)、灵敏度(90.93%)、特异性(91.3%)和F1分数(91.43%)。具体而言,分类结果表明,高伽马波段的连接性特征在大鼠运动检测方面包含最具判别力的信息,支持向量机分类器表现出最有效的性能。我们的研究不仅表明大鼠的大脑功能定向连接性在各种行为背景下存在显著差异,还提出了一种基于大脑功能定向连接性对大鼠行走运动状态进行分类的方法。这些发现阐明了自由行走大鼠中各个皮层区域之间神经信息交互的特征。

https://cdn.ncbi.nlm.nih.gov/pmc/blobs/71f6/7998315/858ecb9048f3/brainsci-11-00345-g001.jpg

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