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首页> 外文期刊>Neural Networks: The Official Journal of the International Neural Network Society >A multivariate extension of mutual information for growing neural networks
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A multivariate extension of mutual information for growing neural networks

机译:多元延长跨神经网络的共同信息

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摘要

Abstract Recordings of neural network activity in vitro are increasingly being used to assess the development of neural network activity and the effects of drugs, chemicals and disease states on neural network function. The high-content nature of the data derived from such recordings can be used to infer effects of compounds or disease states on a variety of important neural functions, including network synchrony. Historically, synchrony of networks in vitro has been assessed either by determination of correlation coefficients (e.g. Pearson’s correlation), by statistics estimated from cross-correlation histograms between pairs of active electrodes, and/or by pairwise mutual information and related measures. The present study examines the application of Normalized Multiinformation (NMI) as a scalar measure of shared information content in a multivariate network that is robust with respect to changes in network size. Theoretical simulations are designed to investigate NMI as a measure of complexity and synchrony in a developing network relative to several alternative approaches. The NMI approach is applied to these simulations and also to data collected during exposure of in vitro neural networks to neuroactive compounds during the first 12 days in vitro, and compared to other common measures, including correlation coefficients and mean firing rates of neurons. NMI is shown to be more sensitive to developmental effects than first order synchronous and nonsynchronous measures of network complexity. Finally, NMI is a scalar measure of global (rather than pairwise) mutual information in a multivariate network, and hence relies on less assumptions for cross-network comparisons than historical approaches.
机译:摘要越来越多地用于评估神经网络活动的发展和药物,化学品和疾病状态对神经网络功能的影响的录像。源自此类记录的数据的高含量性质可用于推断化合物或疾病状态对包括网络同步的各种重要神经功能的影响。从历史上看,通过测定相关系数(例如Pearson的相关性),通过从主动电极对之间的互相关直方图估计的统计来评估网络中的网络同步。和/或通过成对相互信息和相关措施。本研究审查了归一化多功能(NMI)在多变量网络中的共享信息内容的标量测量的应用,这对于网络大小的变化具有鲁棒的共享信息内容。理论模拟旨在调查NMI,作为相对于几种替代方法的发展网络中的复杂性和同步的量度。 NMI方法应用于这些模拟,并且还应用于在体外前12天内的体外神经网络到神经活性化合物期间收集的数据,并与其他常见措施相比,包括相关系数和神经元的平均烧制率。 NMI显示对发展效应更敏感,而不是一阶同步和网络复杂度的非同步措施。最后,NMI是多元网络中全局(而不是成对)相互信息的标量测量,因此依赖于跨网络比较的假设而不是历史方法。

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