Pospischil Martin, Piwkowska Zuzanna, Bal Thierry, Destexhe Alain
Unité de Neurosciences, Information et Complexité (UNIC), CNRS, Gif-sur-Yvette, France.
Biol Cybern. 2011 Aug;105(2):167-80. doi: 10.1007/s00422-011-0458-2. Epub 2011 Oct 5.
A wide diversity of models have been proposed to account for the spiking response of central neurons, from the integrate-and-fire (IF) model and its quadratic and exponential variants, to multiple-variable models such as the Izhikevich (IZ) model and the well-known Hodgkin-Huxley (HH) type models. Such models can capture different aspects of the spiking response of neurons, but there is few objective comparison of their performance. In this article, we provide such a comparison in the context of well-defined stimulation protocols, including, for each cell, DC stimulation, and a series of excitatory conductance injections, arising in the presence of synaptic background activity. We use the dynamic-clamp technique to characterize the response of regular-spiking neurons from guinea-pig visual cortex by computing families of post-stimulus time histograms (PSTH), for different stimulus intensities, and for two different background activities (low- and high-conductance states). The data obtained are then used to fit different classes of models such as the IF, IZ, or HH types, which are constrained by the whole data set. This analysis shows that HH models are generally more accurate to fit the series of experimental PSTH, but their performance is almost equaled by much simpler models, such as the exponential or pulse-based IF models. Similar conclusions were also reached by performing partial fitting of the data, and examining the ability of different models to predict responses that were not used for the fitting. Although such results must be qualified by using more sophisticated stimulation protocols, they suggest that nonlinear IF models can capture surprisingly well the response of cortical regular-spiking neurons and appear as useful candidates for network simulations with conductance-based synaptic interactions.
为了解释中枢神经元的脉冲发放反应,人们提出了各种各样的模型,从积分发放(IF)模型及其二次和指数变体,到多变量模型,如艾兹海默(IZ)模型和著名的霍奇金-赫胥黎(HH)类型模型。这些模型可以捕捉神经元脉冲发放反应的不同方面,但它们的性能很少有客观的比较。在本文中,我们在明确的刺激方案背景下进行了这样的比较,包括对每个细胞进行直流刺激,以及在存在突触背景活动的情况下进行一系列兴奋性电导注入。我们使用动态钳技术,通过计算不同刺激强度和两种不同背景活动(低电导状态和高电导状态)下的刺激后时间直方图(PSTH)家族,来表征豚鼠视觉皮层规则发放神经元的反应。然后,将获得的数据用于拟合不同类别的模型,如IF、IZ或HH类型,这些模型受整个数据集的约束。该分析表明,HH模型通常在拟合一系列实验PSTH方面更准确,但其性能几乎与更简单的模型相当,如指数或基于脉冲的IF模型。通过对数据进行部分拟合,并检查不同模型预测未用于拟合的反应的能力,也得出了类似的结论。尽管这些结果必须通过使用更复杂的刺激方案来加以限定,但它们表明非线性IF模型可以非常好地捕捉皮层规则发放神经元的反应,并且似乎是基于电导的突触相互作用的网络模拟的有用候选模型。