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Identification of Functional Connections in Biological Neural Networks Using Dynamic Bayesian Networks

机译:使用动态贝叶斯网络识别生物神经网络中的功能连接

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Abstract: Investigation of the underlying structural characteristics and network properties of biological networks is crucial to understanding the system-level regulatory mechanism of network behaviors. A Dynamic Bayesian Network (DBN) identification method is developed based on the Minimum Description Length (MDL) to identify and locate functional connections among Pulsed Neural Networks (PNN), which are typical in synthetic biological networks. A score of MDL is evaluated for each candidate network structure which includes two factors: i) the complexity of the network; and ii) the likelihood of the network structure based on network dynamic response data. These two factors are combined together to determine the network structure. The DBN is then used to analyze the time-series data from the PNNs, thereby discerning causal connections which collectively show the network structures. Numerical studies on PNN with different number of nodes illustrate the effectiveness of the proposed strategy in network structure identification.
机译:摘要:研究生物网络的基本结构特征和网络特性对于理解网络行为的系统级调节机制至关重要。基于最小描述长度(MDL),开发了一种动态贝叶斯网络(DBN)识别方法,以识别和定位脉冲神经网络(PNN)之间的功能连接,这在合成生物网络中很常见。为每个候选网络结构评估MDL分数,其中包括两个因素:i)网络的复杂性; ii)基于网络动态响应数据的网络结构的可能性。将这两个因素组合在一起以确定网络结构。然后使用DBN分析来自PNN的时间序列数据,从而辨别因果关系,这些因果关系共同显示了网络结构。对不同节点数量的PNN的数值研究表明,该策略在网络结构识别中是有效的。

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