Time-Varying Functional Connectivity of Rat Brain during Bipedal Walking on Unexpected Terrain.

IF 10.5 Q1 ENGINEERING, BIOMEDICAL Cyborg and bionic systems (Washington, D.C.) Pub Date : 2023-01-01 DOI:10.34133/cbsystems.0017
Honghao Liu, Bo Li, Pengcheng Xi, Yafei Liu, Fenggang Li, Yiran Lang, Rongyu Tang, Nan Ma, Jiping He
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引用次数: 1

Abstract

The cerebral cortex plays an important role in human and other animal adaptation to unpredictable terrain changes, but little was known about the functional network among the cortical areas during this process. To address the question, we trained 6 rats with blocked vision to walk bipedally on a treadmill with a random uneven area. Whole-brain electroencephalography signals were recorded by 32-channel implanted electrodes. Afterward, we scan the signals from all rats using time windows and quantify the functional connectivity within each window using the phase-lag index. Finally, machine learning algorithms were used to verify the possibility of dynamic network analysis in detecting the locomotion state of rats. We found that the functional connectivity level was higher in the preparation phase compared to the walking phase. In addition, the cortex pays more attention to the control of hind limbs with higher requirements for muscle activity. The level of functional connectivity was lower where the terrain ahead can be predicted. Functional connectivity bursts after the rat accidentally made contact with uneven terrain, while in subsequent movement, it was significantly lower than normal walking. In addition, the classification results show that using the phase-lag index of multiple gait phases as a feature can effectively detect the locomotion states of rat during walking. These results highlight the role of the cortex in the adaptation of animals to unexpected terrain and may help advance motor control studies and the design of neuroprostheses.

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意外地形下大鼠两足行走时脑功能连接的时变研究。
大脑皮层在人类和其他动物适应不可预测的地形变化中起着重要作用,但在这一过程中,皮层区域之间的功能网络知之甚少。为了解决这个问题,我们训练了6只视力障碍的老鼠在一个随机不平坦区域的跑步机上两足行走。32通道植入电极记录全脑脑电图信号。随后,我们使用时间窗扫描所有大鼠的信号,并使用相位滞后指数量化每个窗口内的功能连通性。最后,利用机器学习算法验证了动态网络分析检测大鼠运动状态的可能性。我们发现,与行走阶段相比,准备阶段的功能连接水平更高。此外,大脑皮层更注重后肢的控制,对肌肉活动的要求更高。在可以预测前方地形的地方,功能连通性水平较低。当大鼠意外接触到不平整的地形后,功能连通性爆发,而在随后的运动中,功能连通性明显低于正常行走。此外,分类结果表明,将多阶段步态的相位滞后指数作为特征,可以有效地检测大鼠行走时的运动状态。这些结果强调了皮层在动物适应意外地形中的作用,并可能有助于推进运动控制研究和神经假体的设计。
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CiteScore
7.70
自引率
0.00%
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审稿时长
21 weeks
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