Steimer Andreas, Schindler Kaspar
Department of Neurology, Inselspital\Bern University Hospital\University Bern, Bern, Switzerland.
PLoS One. 2015 Jul 23;10(7):e0132906. doi: 10.1371/journal.pone.0132906. eCollection 2015.
Oscillations between high and low values of the membrane potential (UP and DOWN states respectively) are an ubiquitous feature of cortical neurons during slow wave sleep and anesthesia. Nevertheless, a surprisingly small number of quantitative studies have been conducted only that deal with this phenomenon's implications for computation. Here we present a novel theory that explains on a detailed mathematical level the computational benefits of UP states. The theory is based on random sampling by means of interspike intervals (ISIs) of the exponential integrate and fire (EIF) model neuron, such that each spike is considered a sample, whose analog value corresponds to the spike's preceding ISI. As we show, the EIF's exponential sodium current, that kicks in when balancing a noisy membrane potential around values close to the firing threshold, leads to a particularly simple, approximative relationship between the neuron's ISI distribution and input current. Approximation quality depends on the frequency spectrum of the current and is improved upon increasing the voltage baseline towards threshold. Thus, the conceptually simpler leaky integrate and fire neuron that is missing such an additional current boost performs consistently worse than the EIF and does not improve when voltage baseline is increased. For the EIF in contrast, the presented mechanism is particularly effective in the high-conductance regime, which is a hallmark feature of UP-states. Our theoretical results are confirmed by accompanying simulations, which were conducted for input currents of varying spectral composition. Moreover, we provide analytical estimations of the range of ISI distributions the EIF neuron can sample from at a given approximation level. Such samples may be considered by any algorithmic procedure that is based on random sampling, such as Markov Chain Monte Carlo or message-passing methods. Finally, we explain how spike-based random sampling relates to existing computational theories about UP states during slow wave sleep and present possible extensions of the model in the context of spike-frequency adaptation.
膜电位的高值和低值之间的振荡(分别为UP和DOWN状态)是慢波睡眠和麻醉期间皮质神经元普遍存在的特征。然而,仅进行了数量惊人少的定量研究来探讨这种现象对计算的影响。在此,我们提出一种新颖的理论,该理论在详细的数学层面上解释了UP状态的计算优势。该理论基于指数积分发放(EIF)模型神经元的峰间期(ISI)进行随机采样,使得每个尖峰都被视为一个样本,其模拟值对应于该尖峰之前的ISI。正如我们所展示的,EIF的指数钠电流在平衡接近发放阈值的噪声膜电位时起作用,导致神经元的ISI分布与输入电流之间存在特别简单的近似关系。近似质量取决于电流的频谱,并且随着电压基线向阈值增加而提高。因此,缺少这种额外电流增强的概念上更简单的漏电积分发放神经元的表现始终比EIF差,并且在增加电压基线时也不会改善。相比之下,对于EIF,所提出的机制在高电导状态下特别有效,这是UP状态的一个标志性特征。我们的理论结果通过伴随的模拟得到证实,这些模拟针对不同频谱组成的输入电流进行。此外,我们提供了在给定近似水平下EIF神经元可以采样的ISI分布范围的分析估计。任何基于随机采样的算法程序,如马尔可夫链蒙特卡罗或消息传递方法,都可以考虑这些样本。最后,我们解释了基于尖峰的随机采样与慢波睡眠期间关于UP状态的现有计算理论之间的关系,并在尖峰频率适应的背景下提出了模型可能的扩展。