A New Nonlinear Autoregressive Exogenous (NARX)-based Intra-spinal Stimulation Approach to Decode Brain Electrical Activity for Restoration of Leg Movement in Spinally-injured Rabbits.

IF 1 Q4 NEUROSCIENCES
Mohamad Amin Younessi Heravi, Keivan Maghooli, Fereidoun Nowshiravan Rahatabad, Ramin Rezaee
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Abstract

Introduction: This study aimed at investigating the stimulation by intra-spinal signals decoded from electrocorticography (ECoG) assessments to restore the movements of the leg in an animal model of spinal cord injury (SCI).

Methods: The present work is comprised of three steps. First, ECoG signals and the associated leg joint changes (hip, knee, and ankle) in sedated healthy rabbits were recorded in different trials. Second, an appropriate set of intra-spinal electric stimuli was discovered to restore natural leg movements, using the three leg joint movements under a fuzzy-controlled strategy in spinally-injured rabbits under anesthesia. Third, a nonlinear autoregressive exogenous (NARX) neural network model was developed to produce appropriate intra-spinal stimulation developed from decoded ECoG information. The model was able to correlate the ECoG signal data to the intra-spinal stimulation data and finally, induced desired leg movements. In this study, leg movements were also developed from offline ECoG signals (deciphered from rabbits that were not injured) as well as online ECoG data (extracted from the same rabbit after SCI induction).

Results: Based on our data, the correlation coefficient was 0.74±0.15 and the normalized root means square error of the brain-spine interface was 0.22±0.10.

Conclusion: Overall, we found that using NARX, appropriate information from ECoG recordings can be extracted and used for the generation of proper intra-spinal electric stimulations for restoration of natural leg movements lost due to SCI.

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一种新的基于非线性自回归外源性(NARX)的脊髓内刺激方法,用于解码脊髓损伤兔腿部运动恢复的脑电活动。
引言:本研究旨在研究皮层电图(ECoG)评估解码的脊髓内信号对脊髓损伤(SCI)动物模型中腿部运动的刺激。方法:本工作由三个步骤组成。首先,在不同的试验中记录了镇静健康兔子的ECoG信号和相关的腿关节变化(髋、膝和踝)。其次,在麻醉下的脊髓损伤兔子中,在模糊控制策略下使用三个腿关节的运动,发现了一组合适的脊髓内电刺激来恢复自然的腿部运动。第三,开发了一个非线性自回归外源性(NARX)神经网络模型,以根据解码的ECoG信息产生适当的脊髓内刺激。该模型能够将ECoG信号数据与脊髓内刺激数据相关联,并最终诱导所需的腿部运动。在本研究中,还从离线ECoG信号(从未受伤的兔子身上破译)和在线ECoG数据(从SCI诱导后的同一只兔子身上提取)中开发了腿部运动。结果:基于我们的数据,相关系数为0.74±0.15,脑脊界面的归一化均方根误差为0.22±0.10。结论:总体而言,我们发现,使用NARX,可以从ECoG记录中提取适当的信息,并用于产生适当的脊髓内电刺激,以恢复因SCI而失去的自然腿部运动。
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来源期刊
CiteScore
2.60
自引率
0.00%
发文量
64
审稿时长
4 weeks
期刊介绍: BCN is an international multidisciplinary journal that publishes editorials, original full-length research articles, short communications, reviews, methodological papers, commentaries, perspectives and “news and reports” in the broad fields of developmental, molecular, cellular, system, computational, behavioral, cognitive, and clinical neuroscience. No area in the neural related sciences is excluded from consideration, although priority is given to studies that provide applied insights into the functioning of the nervous system. BCN aims to advance our understanding of organization and function of the nervous system in health and disease, thereby improving the diagnosis and treatment of neural-related disorders. Manuscripts submitted to BCN should describe novel results generated by experiments that were guided by clearly defined aims or hypotheses. BCN aims to provide serious ties in interdisciplinary communication, accessibility to a broad readership inside Iran and the region and also in all other international academic sites, effective peer review process, and independence from all possible non-scientific interests. BCN also tries to empower national, regional and international collaborative networks in the field of neuroscience in Iran, Middle East, Central Asia and North Africa and to be the voice of the Iranian and regional neuroscience community in the world of neuroscientists. In this way, the journal encourages submission of editorials, review papers, commentaries, methodological notes and perspectives that address this scope.
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