Institute for Complex Systems, CNR, Sesto Fiorentino, Italy.
J Neurophysiol. 2013 Mar;109(5):1457-72. doi: 10.1152/jn.00873.2012. Epub 2012 Dec 5.
Recently, the SPIKE-distance has been proposed as a parameter-free and timescale-independent measure of spike train synchrony. This measure is time resolved since it relies on instantaneous estimates of spike train dissimilarity. However, its original definition led to spuriously high instantaneous values for eventlike firing patterns. Here we present a substantial improvement of this measure that eliminates this shortcoming. The reliability gained allows us to track changes in instantaneous clustering, i.e., time-localized patterns of (dis)similarity among multiple spike trains. Additional new features include selective and triggered temporal averaging as well as the instantaneous comparison of spike train groups. In a second step, a causal SPIKE-distance is defined such that the instantaneous values of dissimilarity rely on past information only so that time-resolved spike train synchrony can be estimated in real time. We demonstrate that these methods are capable of extracting valuable information from field data by monitoring the synchrony between neuronal spike trains during an epileptic seizure. Finally, the applicability of both the regular and the real-time SPIKE-distance to continuous data is illustrated on model electroencephalographic (EEG) recordings.
最近,SPIKE-distance 被提出作为一种无参数和时间尺度独立的测量尖峰序列同步的方法。这个测量方法是时间分辨的,因为它依赖于对尖峰序列相似度的即时估计。然而,它的原始定义导致了对事件驱动的发射模式的瞬时值过高的估计。在这里,我们提出了对这个度量的实质性改进,消除了这个缺点。所获得的可靠性使我们能够跟踪瞬时聚类的变化,即多个尖峰序列之间(相似性和不相似性的)局部时间模式。其他新功能包括选择性和触发的时间平均以及尖峰序列组的即时比较。在第二步中,定义了因果 SPIKE-distance,使得不相似性的瞬时值仅依赖于过去的信息,以便实时估计时间分辨的尖峰序列同步。我们通过监测癫痫发作期间神经元尖峰序列之间的同步性,证明了这些方法能够从现场数据中提取有价值的信息。最后,展示了常规和实时 SPIKE-distance 对连续数据的适用性,包括模型脑电图 (EEG) 记录。