Miura Keiji, Tsubo Yasuhiro, Okada Masato, Fukai Tomoki
University of Tokyo, Kashiwa, 277-8561 Chiba, Japan.
J Neurosci. 2007 Dec 12;27(50):13802-12. doi: 10.1523/JNEUROSCI.2452-07.2007.
In vivo cortical neurons are known to exhibit highly irregular spike patterns. Because the intervals between successive spikes fluctuate greatly, irregular neuronal firing makes it difficult to estimate instantaneous firing rates accurately. If, however, the irregularity of spike timing is decoupled from rate modulations, the estimate of firing rate can be improved. Here, we introduce a novel coding scheme to make the firing irregularity orthogonal to the firing rate in information representation. The scheme is valid if an interspike interval distribution can be well fitted by the gamma distribution and the firing irregularity is constant over time. We investigated in a computational model whether fluctuating external inputs may generate gamma process-like spike outputs, and whether the two quantities are actually decoupled. Whole-cell patch-clamp recordings of cortical neurons were performed to confirm the predictions of the model. The output spikes were well fitted by the gamma distribution. The firing irregularity remained approximately constant regardless of the firing rate when we injected a balanced input, in which excitatory and inhibitory synapses are activated concurrently while keeping their conductance ratio fixed. The degree of irregular firing depended on the effective reversal potential set by the balance between excitation and inhibition. In contrast, when we modulated conductances out of balance, the irregularity varied with the firing rate. These results indicate that the balanced input may improve the efficiency of neural coding by clamping the firing irregularity of cortical neurons. We demonstrate how this novel coding scheme facilitates stimulus decoding.
已知体内皮质神经元表现出高度不规则的放电模式。由于连续放电之间的间隔波动很大,神经元的不规则放电使得准确估计瞬时放电率变得困难。然而,如果放电时间的不规则性与频率调制解耦,则可以提高放电率的估计。在这里,我们引入一种新颖的编码方案,使放电不规则性在信息表示中与放电率正交。如果峰峰间隔分布可以很好地用伽马分布拟合,并且放电不规则性随时间恒定,则该方案有效。我们在一个计算模型中研究了波动的外部输入是否可能产生类似伽马过程的放电输出,以及这两个量是否实际上解耦。进行了皮质神经元的全细胞膜片钳记录以证实模型的预测。输出放电很好地符合伽马分布。当我们注入平衡输入时,即兴奋性和抑制性突触同时被激活,同时保持它们的电导比固定,无论放电率如何,放电不规则性大致保持恒定。不规则放电的程度取决于由兴奋和抑制之间的平衡设定的确切反转电位。相反,当我们调节电导失衡时,不规则性随放电率而变化。这些结果表明,平衡输入可以通过钳制皮质神经元的放电不规则性来提高神经编码的效率。我们展示了这种新颖的编码方案如何促进刺激解码。