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一种使用NARMAX方法和分层神经网络对关节扰动的神经反应进行建模的新方法。

A Novel Approach for Modeling Neural Responses to Joint Perturbations Using the NARMAX Method and a Hierarchical Neural Network.

作者信息

Tian Runfeng, Yang Yuan, van der Helm Frans C T, Dewald Julius P A

机构信息

Department of Physical Therapy and Human Movement Sciences, Feinberg School of Medicine, Northwestern University, Chicago, IL, United States.

Department of Biomechanical Engineering, Northwestern University, Evanston, IL, United States.

出版信息

Front Comput Neurosci. 2018 Dec 6;12:96. doi: 10.3389/fncom.2018.00096. eCollection 2018.

Abstract

The human nervous system is an ensemble of connected neuronal networks. Modeling and system identification of the human nervous system helps us understand how the brain processes sensory input and controls responses at the systems level. This study aims to propose an advanced approach based on a hierarchical neural network and non-linear system identification method to model neural activity in the nervous system in response to an external somatosensory input. The proposed approach incorporates basic concepts of Non-linear AutoRegressive Moving Average Model with eXogenous input (NARMAX) and neural network to acknowledge non-linear closed-loop neural interactions. Different from the commonly used polynomial NARMAX method, the proposed approach replaced the polynomial non-linear terms with a hierarchical neural network. The hierarchical neural network is built based on known neuroanatomical connections and corresponding transmission delays in neural pathways. The proposed method is applied to an experimental dataset, where cortical activities from ten young able-bodied individuals are extracted from electroencephalographic signals while applying mechanical perturbations to their wrist joint. The results yielded by the proposed method were compared with those obtained by the polynomial NARMAX and Volterra methods, evaluated by the variance accounted for (VAF). Both the proposed and polynomial NARMAX methods yielded much better modeling results than the Volterra model. Furthermore, the proposed method modeled cortical responded with a mean VAF of 69.35% for a three-step ahead prediction, which is significantly better than the VAF from a polynomial NARMAX model (mean VAF 47.09%). This study provides a novel approach for precise modeling of cortical responses to sensory input. The results indicate that the incorporation of knowledge of neuroanatomical connections in building a realistic model greatly improves the performance of system identification of the human nervous system.

摘要

人类神经系统是由相互连接的神经元网络组成的集合。对人类神经系统进行建模和系统识别有助于我们从系统层面理解大脑如何处理感觉输入并控制反应。本研究旨在提出一种基于分层神经网络和非线性系统识别方法的先进方法,以对神经系统中响应外部体感输入的神经活动进行建模。所提出的方法结合了带有外部输入的非线性自回归滑动平均模型(NARMAX)和神经网络的基本概念,以认识到非线性闭环神经相互作用。与常用的多项式NARMAX方法不同,所提出的方法用分层神经网络取代了多项式非线性项。分层神经网络是基于已知的神经解剖连接和神经通路中的相应传输延迟构建的。所提出的方法应用于一个实验数据集,在该数据集中,从十名年轻健康个体的脑电图信号中提取皮质活动,同时对他们的腕关节施加机械扰动。将所提出的方法产生的结果与通过多项式NARMAX和沃尔泰拉方法获得的结果进行比较,并通过解释方差(VAF)进行评估。所提出的方法和多项式NARMAX方法都产生了比沃尔泰拉模型好得多的建模结果。此外,所提出的方法对皮质反应进行建模,三步超前预测的平均VAF为69.35%,这明显优于多项式NARMAX模型的VAF(平均VAF为47.09%)。本研究为精确建模皮质对感觉输入的反应提供了一种新方法。结果表明,在构建现实模型时纳入神经解剖连接知识可大大提高人类神经系统系统识别的性能。

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