Department of Neurobiology and Anatomy, The University of Texas Medical School at Houston Houston, TX, USA.
Front Comput Neurosci. 2010 Jul 1;4. doi: 10.3389/fncom.2010.00019. eCollection 2010.
Spike timing dependent plasticity (STDP) is a phenomenon in which the precise timing of spikes affects the sign and magnitude of changes in synaptic strength. STDP is often interpreted as the comprehensive learning rule for a synapse - the "first law" of synaptic plasticity. This interpretation is made explicit in theoretical models in which the total plasticity produced by complex spike patterns results from a superposition of the effects of all spike pairs. Although such models are appealing for their simplicity, they can fail dramatically. For example, the measured single-spike learning rule between hippocampal CA3 and CA1 pyramidal neurons does not predict the existence of long-term potentiation one of the best-known forms of synaptic plasticity. Layers of complexity have been added to the basic STDP model to repair predictive failures, but they have been outstripped by experimental data. We propose an alternate first law: neural activity triggers changes in key biochemical intermediates, which act as a more direct trigger of plasticity mechanisms. One particularly successful model uses intracellular calcium as the intermediate and can account for many observed properties of bidirectional plasticity. In this formulation, STDP is not itself the basis for explaining other forms of plasticity, but is instead a consequence of changes in the biochemical intermediate, calcium. Eventually a mechanism-based framework for learning rules should include other messengers, discrete change at individual synapses, spread of plasticity among neighboring synapses, and priming of hidden processes that change a synapse's susceptibility to future change. Mechanism-based models provide a rich framework for the computational representation of synaptic plasticity.
尖峰时间依赖可塑性 (STDP) 是一种现象,其中尖峰的精确时间会影响突触强度变化的符号和幅度。STDP 通常被解释为突触的综合学习规则 - 突触可塑性的“第一法则”。这种解释在理论模型中是明确的,其中复杂尖峰模式产生的总可塑性是所有尖峰对效应的叠加。尽管这些模型因其简单性而引人注目,但它们可能会严重失败。例如,海马 CA3 和 CA1 锥体神经元之间测量的单个尖峰学习规则并不预测长时程增强作用 - 突触可塑性的最佳形式之一。已经向基本 STDP 模型添加了复杂性层,以修复预测失败,但它们已经被实验数据所超越。我们提出了替代的第一法则:神经活动触发关键生化中间产物的变化,这些中间产物作为可塑性机制的更直接触发因素。一个特别成功的模型使用细胞内钙作为中间产物,可以解释双向可塑性的许多观察到的特性。在这种表述中,STDP 本身并不是解释其他形式可塑性的基础,而是生化中间产物钙变化的结果。最终,基于机制的学习规则框架应该包括其他信使、单个突触的离散变化、相邻突触之间可塑性的传播,以及改变突触对未来变化敏感性的隐藏过程的启动。基于机制的模型为突触可塑性的计算表示提供了丰富的框架。