Department of Basic Neuroscience, University of Geneva, Centre Médical Universitaire, Genève 1211, Switzerland;
Precursory Research for Embryonic Science and Technology (PRESTO), Japan Science and Technology Agency, Kawaguchi, Saitama 332-0012, Japan.
Proc Natl Acad Sci U S A. 2017 Sep 5;114(36):9517-9522. doi: 10.1073/pnas.1705981114. Epub 2017 Aug 21.
Spontaneous, synchronous bursting of neural population is a widely observed phenomenon in nervous networks, which is considered important for functions and dysfunctions of the brain. However, how the global synchrony across a large number of neurons emerges from an initially nonbursting network state is not fully understood. In this study, we develop a state-space reconstruction method combined with high-resolution recordings of cultured neurons. This method extracts deterministic signatures of upcoming global bursts in "local" dynamics of individual neurons during nonbursting periods. We find that local information within a single-cell time series can compare with or even outperform the global mean-field activity for predicting future global bursts. Moreover, the intercell variability in the burst predictability is found to reflect the network structure realized in the nonbursting periods. These findings suggest that deterministic local dynamics can predict seemingly stochastic global events in self-organized networks, implying the potential applications of the present methodology to detecting locally concentrated early warnings of spontaneous seizure occurrence in the brain.
神经元群体的自发同步爆发是神经网络中广泛观察到的现象,被认为对大脑的功能和功能障碍很重要。然而,大量神经元的整体同步性如何从最初的非爆发网络状态中出现还不完全清楚。在这项研究中,我们开发了一种状态空间重建方法,结合培养神经元的高分辨率记录。该方法在非爆发期间从单个神经元的“局部”动力学中提取即将发生的全局爆发的确定性特征。我们发现,单个细胞时间序列中的局部信息可以与甚至优于全局平均场活动来预测未来的全局爆发。此外,还发现爆发可预测性的细胞间变异性反映了非爆发期间实现的网络结构。这些发现表明,确定性的局部动力学可以预测自组织网络中看似随机的全局事件,这意味着本方法具有检测大脑中自发性癫痫发作局部集中预警的潜在应用。