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A systems identification approach to estimating the connectivity in a neuronal population model

机译:一种估计神经元群体模型中连通性的系统识别方法

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Mapping the brain and its complex networked structure has been one of the most researched topics in the last decade and continues to be the path towards understanding brain diseases. In this paper we present a new approach to estimating the connectivity between neurons in a network model. We use systems identification techniques for nonlinear dynamic models to compute the synaptic connections from other pre-synaptic neurons in the population. We are able to show accurate estimation even in the presence of model error and inaccurate assumption of post-synaptic potential dynamics. This allows to compute the connectivity matrix of the network using a very small time window of membrane potential data of the individual neurons. The specificity and sensitivity measures for randomly generated networks are reported.
机译:在过去的十年中,绘制大脑及其复杂的网络结构图一直是研究最多的主题之一,并且仍然是理解大脑疾病的途径。在本文中,我们提出了一种新的方法来估计网络模型中神经元之间的连通性。我们使用非线性动力学模型的系统识别技术来计算人口中其他突触前神经元的突触连接。即使在存在模型错误和突触后电位动态假设不正确的情况下,我们也能够显示出准确的估计值。这允许使用单个神经元的膜电位数据的非常小的时间窗口来计算网络的连接矩阵。报告了针对随机生成的网络的特异性和敏感性测度。

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