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一种预测任意形式的尖峰时间依赖性可塑性后果的随机方法。

A stochastic method to predict the consequence of arbitrary forms of spike-timing-dependent plasticity.

作者信息

Câteau Hideyuki, Fukai Tomoki

机构信息

Core Research for the Evolutional Science and Technology Program, JST, Tokyo 1948610, Japan.

出版信息

Neural Comput. 2003 Mar;15(3):597-620. doi: 10.1162/089976603321192095.

DOI:10.1162/089976603321192095
PMID:12620159
Abstract

Synapses in various neural preparations exhibit spike-timing-dependent plasticity (STDP) with a variety of learning window functions. The window functions determine the magnitude and the polarity of synaptic change according to the time difference of pre- and postsynaptic spikes. Numerical experiments revealed that STDP learning with a single-exponential window function resulted in a bimodal distribution of synaptic conductances as a consequence of competition between synapses. A slightly modified window function, however, resulted in a unimodal distribution rather than a bimodal distribution. Since various window functions have been observed in neural preparations, we develop a rigorous mathematical method to calculate the conductance distribution for any given window function. Our method is based on the Fokker-Planck equation to determine the conductance distribution and on the Ornstein-Uhlenbeck process to characterize the membrane potential fluctuations. Demonstrating that our method reproduces the known quantitative results of STDP learning, we apply the method to the type of STDP learning found recently in the CA1 region of the rat hippocampus. We find that this learning can result in nearly optimized competition between synapses. Meanwhile, we find that the type of STDP learning found in the cerebellum-like structure of electric fish can result in all-or-none synapses: either all the synaptic conductances are maximized, or none of them becomes significantly large. Our method also determines the window function that optimizes synaptic competition.

摘要

在各种神经制剂中,突触表现出具有多种学习窗口函数的尖峰时间依赖性可塑性(STDP)。这些窗口函数根据突触前和突触后尖峰的时间差来确定突触变化的幅度和极性。数值实验表明,使用单指数窗口函数的STDP学习会由于突触之间的竞争而导致突触电导的双峰分布。然而,一个稍微修改过的窗口函数会导致单峰分布而不是双峰分布。由于在神经制剂中观察到了各种窗口函数,我们开发了一种严格的数学方法来计算任何给定窗口函数的电导分布。我们的方法基于福克 - 普朗克方程来确定电导分布,并基于奥恩斯坦 - 乌伦贝克过程来表征膜电位波动。在证明我们的方法能够重现STDP学习的已知定量结果后,我们将该方法应用于最近在大鼠海马体CA1区域发现的STDP学习类型。我们发现这种学习可以导致突触之间几乎达到最优竞争。同时,我们发现电鱼类似小脑结构中发现的STDP学习类型会导致全或无突触:要么所有突触电导都最大化,要么它们都不会变得显著大。我们的方法还能确定优化突触竞争的窗口函数。

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