School of Computer and Communication Sciences, Brain-Mind Institute, Ecole Polytechnique Fédérale de Lausanne Lausanne, Switzerland.
Front Comput Neurosci. 2010 Dec 3;4:143. doi: 10.3389/fncom.2010.00143. eCollection 2010.
Spike-frequency adaptation is known to enhance the transmission of information in sensory spiking neurons by rescaling the dynamic range for input processing, matching it to the temporal statistics of the sensory stimulus. Achieving maximal information transmission has also been recently postulated as a role for spike-timing-dependent plasticity (STDP). However, the link between optimal plasticity and STDP in cortex remains loose, as does the relationship between STDP and adaptation processes. We investigate how STDP, as described by recent minimal models derived from experimental data, influences the quality of information transmission in an adapting neuron. We show that a phenomenological model based on triplets of spikes yields almost the same information rate as an optimal model specially designed to this end. In contrast, the standard pair-based model of STDP does not improve information transmission as much. This result holds not only for additive STDP with hard weight bounds, known to produce bimodal distributions of synaptic weights, but also for weight-dependent STDP in the context of unimodal but skewed weight distributions. We analyze the similarities between the triplet model and the optimal learning rule, and find that the triplet effect is an important feature of the optimal model when the neuron is adaptive. If STDP is optimized for information transmission, it must take into account the dynamical properties of the postsynaptic cell, which might explain the target-cell specificity of STDP. In particular, it accounts for the differences found in vitro between STDP at excitatory synapses onto principal cells and those onto fast-spiking interneurons.
尖峰频率适应通过重新调整输入处理的动态范围,使其与感觉刺激的时间统计相匹配,从而增强感觉尖峰神经元中信息的传输。最近有人假设,实现最大信息传输也是尖峰时间依赖可塑性 (STDP) 的作用。然而,皮质中最优可塑性和 STDP 之间的联系仍然很松散,STDP 和适应过程之间的关系也是如此。我们研究了最近从实验数据中得出的最小模型描述的 STDP 如何影响适应神经元中信息传输的质量。我们表明,基于尖峰三元组的现象模型产生的信息率几乎与专门为此目的设计的最优模型相同。相比之下,标准的基于双脉冲的 STDP 模型并不能像硬权重约束的添加性 STDP 那样改善信息传输,后者已知会产生突触权重的双峰分布,也不能改善单峰但偏斜的权重分布情况下的权重依赖性 STDP。我们分析了三元组模型和最优学习规则之间的相似性,并发现当神经元具有适应性时,三元组效应是最优模型的一个重要特征。如果 STDP 是为信息传输而优化的,那么它必须考虑到突触后细胞的动态特性,这可能解释了 STDP 的靶细胞特异性。特别是,它解释了在体外发现的兴奋性突触后到主细胞和快速放电中间神经元的 STDP 之间的差异。