Simulating Human Single Motor Units Using Self-Organizing Agents

Ö. Gürcan, C. Bernon, K. Türker, J. Mano, P. Glize, Oğuz Dikenelli
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引用次数: 11

Abstract

Understanding functional synaptic connectivity of human central nervous system is one of the holy grails of the neuroscience. Due to the complexity of nervous system, it is common to reduce the problem to smaller networks such as motor unit pathways. In this sense, we designed and developed a simulation model that learns acting in the same way of human single motor units by using findings on human subjects. The developed model is based on self-organizing agents whose nominal and cooperative behaviors are based on the current knowledge on biological neural networks. The results show that the simulation model generates similar functionality with the observed data.
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用自组织代理模拟人体单个运动单元
了解人类中枢神经系统的功能性突触连通性是神经科学的圣杯之一。由于神经系统的复杂性,通常将问题缩小到更小的网络,如运动单元通路。从这个意义上讲,我们设计并开发了一个模拟模型,该模型通过对人类受试者的研究结果,以与人类单个运动单元相同的方式学习动作。该模型基于自组织智能体,其名义和合作行为基于生物神经网络的现有知识。结果表明,仿真模型与观测数据具有相似的功能。
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