Elliott Terry, Lagogiannis Konstantinos
Department of Electronics and Computer Science, University of Southampton, Highfield, Southampton SO17 1BJ, UK.
Neural Comput. 2009 Dec;21(12):3363-407. doi: 10.1162/neco.2009.12-08-916.
A stochastic model of spike-timing-dependent plasticity proposes that single synapses express fixed-amplitude jumps in strength, the amplitudes being independent of the spike time difference. However, the probability that a jump in strength occurs does depend on spike timing. Although the model has a number of desirable features, the stochasticity of response of a synapse introduces potentially large fluctuations into changes in synaptic strength. These can destabilize the segregated patterns of afferent connectivity characteristic of neuronal development. Previously we have taken these jumps to be small relative to overall synaptic strengths to control fluctuations, but doing so increases developmental timescales unacceptably. Here, we explore three alternative ways of taming fluctuations. First, a calculation of the variance for the change in synaptic strength shows that the mean change eventually dominates fluctuations, but on timescales that are too long. Second, it is possible that fluctuations in strength may cancel between synapses, but we show that correlations between synapses emasculate the law of large numbers. Finally, by separating plasticity induction and expression, we introduce a temporal window during which induction signals are low-pass-filtered before expression. In this way, fluctuations in strength are tamed, stabilizing segregated states of afferent connectivity.
一种基于峰电位时间依赖可塑性的随机模型提出,单个突触强度会出现固定幅度的跳跃,其幅度与峰电位时间差无关。然而,强度发生跳跃的概率确实取决于峰电位时间。尽管该模型具有许多理想特性,但突触反应的随机性会给突触强度变化带来潜在的大幅波动。这些波动会破坏神经元发育过程中传入连接的分离模式的稳定性。此前,为了控制波动,我们认为这些跳跃相对于整体突触强度较小,但这样做会使发育时间尺度延长到不可接受的程度。在此,我们探索三种抑制波动的替代方法。首先,对突触强度变化的方差计算表明,平均变化最终会主导波动,但所需时间尺度过长。其次,强度波动可能在突触之间相互抵消,但我们表明突触之间的相关性削弱了大数定律。最后,通过分离可塑性诱导和表达,我们引入了一个时间窗口,在这个窗口内,诱导信号在表达之前会经过低通滤波。通过这种方式,强度波动得到抑制,传入连接的分离状态得以稳定。