Pourzanjani Arya, Herzog Erik D, Petzold Linda R
Department of Computer Science, University of California, Santa Barbara, Santa Barbara, California, United States of America.
Department of Biology, Washington University, St. Louis, Missouri, United States of America.
PLoS One. 2015 Sep 28;10(9):e0137540. doi: 10.1371/journal.pone.0137540. eCollection 2015.
Being able to infer one way direct connections in an oscillatory network such as the suprachiastmatic nucleus (SCN) of the mammalian brain using time series data is difficult but crucial to understanding network dynamics. Although techniques have been developed for inferring networks from time series data, there have been no attempts to adapt these techniques to infer directional connections in oscillatory time series, while accurately distinguishing between direct and indirect connections. In this paper an adaptation of Granger Causality is proposed that allows for inference of circadian networks and oscillatory networks in general called Adaptive Frequency Granger Causality (AFGC). Additionally, an extension of this method is proposed to infer networks with large numbers of cells called LASSO AFGC. The method was validated using simulated data from several different networks. For the smaller networks the method was able to identify all one way direct connections without identifying connections that were not present. For larger networks of up to twenty cells the method shows excellent performance in identifying true and false connections; this is quantified by an area-under-the-curve (AUC) 96.88%. We note that this method like other Granger Causality-based methods, is based on the detection of high frequency signals propagating between cell traces. Thus it requires a relatively high sampling rate and a network that can propagate high frequency signals.
利用时间序列数据推断诸如哺乳动物大脑视交叉上核(SCN)这样的振荡网络中的单向直接连接是困难的,但对于理解网络动态至关重要。尽管已经开发出从时间序列数据推断网络的技术,但尚未有人尝试将这些技术应用于推断振荡时间序列中的方向性连接,同时准确区分直接连接和间接连接。本文提出了一种格兰杰因果关系的改进方法,它可以推断昼夜节律网络和一般的振荡网络,称为自适应频率格兰杰因果关系(AFGC)。此外,还提出了该方法的一种扩展,用于推断具有大量细胞的网络,称为套索AFGC。该方法使用来自几个不同网络的模拟数据进行了验证。对于较小的网络,该方法能够识别所有单向直接连接,而不会识别不存在的连接。对于多达20个细胞的较大网络,该方法在识别真假连接方面表现出色;这通过曲线下面积(AUC)96.88%来量化。我们注意到,与其他基于格兰杰因果关系的方法一样,该方法基于检测细胞轨迹之间传播的高频信号。因此,它需要相对较高的采样率和一个能够传播高频信号的网络。