NeuroEngineering Laboratory, Department of Electrical and Electronic Engineering, University of Melbourne, VIC 3010, Australia.
Neural Comput. 2012 Sep;24(9):2251-79. doi: 10.1162/NECO_a_00331. Epub 2012 Jun 26.
Periodic neuronal activity has been observed in various areas of the brain, from lower sensory to higher cortical levels. Specific frequency components contained in this periodic activity can be identified by a neuronal circuit that behaves as a bandpass filter with given preferred frequency, or best modulation frequency (BMF). For BMFs typically ranging from 10 to 200 Hz, a plausible and minimal configuration consists of a single neuron with adjusted excitatory and inhibitory synaptic connections. The emergence, however, of such a neuronal circuitry is still unclear. In this letter, we demonstrate how spike-timing-dependent plasticity (STDP) can give rise to frequency-dependent learning, thus leading to an input selectivity that enables frequency identification. We use an in-depth mathematical analysis of the learning dynamics in a population of plastic inhibitory connections. These provide inhomogeneous postsynaptic responses that depend on their dendritic location. We find that synaptic delays play a crucial role in organizing the weight specialization induced by STDP. Under suitable conditions on the synaptic delays and postsynaptic potentials (PSPs), the BMF of a neuron after learning can match the training frequency. In particular, proximal (distal) synapses with shorter (longer) dendritic delay and somatically measured PSP time constants respond better to higher (lower) frequencies. As a result, the neuron will respond maximally to any stimulating frequency (in a given range) with which it has been trained in an unsupervised manner. The model predicts that synapses responding to a given BMF form clusters on dendritic branches.
周期性神经元活动在大脑的各个区域都有观察到,从较低的感觉区域到较高的皮质水平。在这个周期性活动中包含的特定频率成分可以通过一个神经元电路来识别,这个电路表现为一个具有给定的最佳调制频率(BMF)的带通滤波器。对于 BMF 通常在 10 到 200 Hz 之间,一个合理的最小配置是一个具有调整兴奋性和抑制性突触连接的单个神经元。然而,这种神经元电路的出现仍然不清楚。在这封信中,我们展示了尖峰时间依赖性可塑性(STDP)如何产生频率依赖性学习,从而导致能够进行频率识别的输入选择性。我们使用对具有可塑性抑制性连接的群体的学习动力学进行深入的数学分析。这些连接提供了依赖于树突位置的非均匀的突触后响应。我们发现,突触延迟在由 STDP 诱导的权重专业化中起着至关重要的作用。在突触延迟和突触后电位(PSP)的适当条件下,学习后的神经元的 BMF 可以与训练频率匹配。特别是,具有较短(较长)树突延迟和躯体测量 PSP 时间常数的近端(远端)突触对较高(较低)频率的响应更好。因此,神经元将对其以非监督方式进行训练的任何刺激频率(在给定范围内)做出最大响应。该模型预测,响应给定 BMF 的突触在树突分支上形成簇。