Beggs John M, Plenz Dietmar
Unit of Neural Network Physiology, Laboratory of Systems Neuroscience, National Institute of Mental Health, Bethesda, Maryland 20892-4075, USA.
J Neurosci. 2003 Dec 3;23(35):11167-77. doi: 10.1523/JNEUROSCI.23-35-11167.2003.
Networks of living neurons exhibit diverse patterns of activity, including oscillations, synchrony, and waves. Recent work in physics has shown yet another mode of activity in systems composed of many nonlinear units interacting locally. For example, avalanches, earthquakes, and forest fires all propagate in systems organized into a critical state in which event sizes show no characteristic scale and are described by power laws. We hypothesized that a similar mode of activity with complex emergent properties could exist in networks of cortical neurons. We investigated this issue in mature organotypic cultures and acute slices of rat cortex by recording spontaneous local field potentials continuously using a 60 channel multielectrode array. Here, we show that propagation of spontaneous activity in cortical networks is described by equations that govern avalanches. As predicted by theory for a critical branching process, the propagation obeys a power law with an exponent of -3/2 for event sizes, with a branching parameter close to the critical value of 1. Simulations show that a branching parameter at this value optimizes information transmission in feedforward networks, while preventing runaway network excitation. Our findings suggest that "neuronal avalanches" may be a generic property of cortical networks, and represent a mode of activity that differs profoundly from oscillatory, synchronized, or wave-like network states. In the critical state, the network may satisfy the competing demands of information transmission and network stability.
活神经元网络呈现出多样的活动模式,包括振荡、同步和波动。物理学领域的最新研究表明,在由许多局部相互作用的非线性单元组成的系统中还存在另一种活动模式。例如,雪崩、地震和森林火灾都在组织成临界状态的系统中传播,在这种状态下,事件规模没有特征尺度,而是由幂律描述。我们推测,在皮质神经元网络中可能存在具有复杂涌现特性的类似活动模式。我们通过使用60通道多电极阵列连续记录自发局部场电位,在成熟的器官型培养物和大鼠皮质急性切片中研究了这个问题。在此,我们表明皮质网络中自发活动的传播由控制雪崩的方程描述。正如临界分支过程理论所预测的那样,传播遵循幂律,事件规模的指数为-3/2,分支参数接近临界值1。模拟表明,此值的分支参数可优化前馈网络中的信息传输,同时防止网络失控兴奋。我们的研究结果表明,“神经元雪崩”可能是皮质网络的一种普遍属性,代表一种与振荡、同步或波状网络状态截然不同的活动模式。在临界状态下,网络可能满足信息传输和网络稳定性的相互竞争需求。