McLelland Douglas, Paulsen Ole
Department of Physiology, Anatomy and Genetics, University of Oxford, Oxford, UK.
J Physiol. 2009 Feb 15;587(Pt 4):769-85. doi: 10.1113/jphysiol.2008.164111. Epub 2008 Dec 22.
Theoretical and experimental studies suggest that oscillatory modes of processing play an important role in neuronal computations. One well supported idea is that the net excitatory input during oscillations will be reported in the phase of firing, a 'rate-to-phase transform', and that this transform might enable a temporal code. Here, we investigate the efficiency of this code at the level of fundamental single cell computations. We first develop a general framework for the understanding of the rate-to-phase transform as implemented by single neurons. Using whole cell patch-clamp recordings of rat hippocampal pyramidal neurons in vitro, we investigated the relationship between tonic excitation and phase of firing during simulated theta frequency (5 Hz) and gamma frequency (40 Hz) oscillations, over a range of physiological firing rates. During theta frequency oscillations, the phase of the first spike per cycle was a near-linear function of tonic excitation, advancing through a full 180 deg, from the peak to the trough of the oscillation cycle as excitation increased. In contrast, this relationship was not apparent for gamma oscillations, during which the phase of firing was virtually independent of the level of tonic excitatory input within the range of physiological firing rates. We show that a simple analytical model can substantially capture this behaviour, enabling generalization to other oscillatory states and cell types. The capacity of such a transform to encode information is limited by the temporal precision of neuronal activity. Using the data from our whole cell recordings, we calculated the information about the input available in the rate or phase of firing, and found the phase code to be significantly more efficient. Thus, temporal modes of processing can enable neuronal coding to be inherently more efficient, thereby allowing a reduction in processing time or in the number of neurons required.
理论和实验研究表明,振荡处理模式在神经元计算中发挥着重要作用。一个得到充分支持的观点是,振荡期间的净兴奋性输入将在放电相位中体现,即“速率到相位转换”,并且这种转换可能实现一种时间编码。在这里,我们在基本单细胞计算层面研究这种编码的效率。我们首先开发了一个通用框架,用于理解单个神经元实现的速率到相位转换。利用体外大鼠海马锥体神经元的全细胞膜片钳记录,我们研究了在一系列生理放电速率下,模拟的theta频率(5赫兹)和gamma频率(40赫兹)振荡期间,强直兴奋与放电相位之间的关系。在theta频率振荡期间,每个周期第一个尖峰的相位是强直兴奋的近似线性函数,随着兴奋增加,从振荡周期的峰值到谷值,相位推进整整180度。相比之下,这种关系在gamma振荡中并不明显,在此期间,在生理放电速率范围内,放电相位实际上与强直兴奋性输入水平无关。我们表明,一个简单的分析模型可以充分捕捉这种行为,从而能够推广到其他振荡状态和细胞类型。这种转换编码信息的能力受到神经元活动时间精度的限制。利用我们全细胞记录的数据,我们计算了放电速率或相位中可用的关于输入的信息,发现相位编码明显更有效。因此,时间处理模式可以使神经元编码本质上更高效,从而减少处理时间或所需神经元的数量。