Swiercz Waldemar, Cios Krzysztof, Hellier Jennifer, Yee Audrey, Staley Kevin
From the Neurology Department, Massachusetts General Hospital, Boston, MA 02114, USA.
J Clin Neurophysiol. 2007 Apr;24(2):165-74. doi: 10.1097/WNP.0b013e318033756f.
The output of an artificial neural network of spiking neurons linked by glutamatergic synapses subject to use-dependent depression was compared with physiologic data obtained from rat hippocampal area CA3 in vitro. The authors evaluated how network burst initiation and termination was affected by activity-dependent depression and recovery under a variety of experimental conditions including neuronal membrane depolarization, altered glutamate release probability, the strength of synaptic inhibition, and long-term potentiation and long-term depression of recurrent glutamatergic synapses. The results of computational experiments agreed with the in vitro data and support the idea that synaptic properties, including activity-dependent depression and recovery, play important roles in the timing and duration of spontaneous bursts of network activity. This validated network model is useful for experiments that are not feasible in vitro, and makes possible the investigation of two-dimensional aspects of burst propagation and termination.
将由谷氨酸能突触连接且存在使用依赖型抑制的脉冲神经元人工神经网络的输出,与体外实验中从大鼠海马体CA3区获得的生理数据进行了比较。作者评估了在多种实验条件下,包括神经元膜去极化、谷氨酸释放概率改变、突触抑制强度以及反复谷氨酸能突触的长时程增强和长时程抑制,活动依赖型抑制和恢复如何影响网络爆发的起始和终止。计算实验结果与体外数据相符,并支持这样一种观点,即包括活动依赖型抑制和恢复在内的突触特性,在网络活动自发爆发的时间和持续时间方面发挥着重要作用。这个经过验证的网络模型对于体外不可行的实验很有用,并且使得对爆发传播和终止的二维方面进行研究成为可能。