Department of Physics, Kyoto University, Kyoto, Japan.
Neural Comput. 2011 Dec;23(12):3125-44. doi: 10.1162/NECO_a_00213. Epub 2011 Sep 15.
The time histogram is a fundamental tool for representing the inhomogeneous density of event occurrences such as neuronal firings. The shape of a histogram critically depends on the size of the bins that partition the time axis. In most neurophysiological studies, however, researchers have arbitrarily selected the bin size when analyzing fluctuations in neuronal activity. A rigorous method for selecting the appropriate bin size was recently derived so that the mean integrated squared error between the time histogram and the unknown underlying rate is minimized (Shimazaki & Shinomoto, 2007 ). This derivation assumes that spikes are independently drawn from a given rate. However, in practice, biological neurons express non-Poissonian features in their firing patterns, such that the spike occurrence depends on the preceding spikes, which inevitably deteriorate the optimization. In this letter, we revise the method for selecting the bin size by considering the possible non-Poissonian features. Improvement in the goodness of fit of the time histogram is assessed and confirmed by numerically simulated non-Poissonian spike trains derived from the given fluctuating rate. For some experimental data, the revised algorithm transforms the shape of the time histogram from the Poissonian optimization method.
时间直方图是表示事件发生(如神经元放电)的不均匀密度的基本工具。直方图的形状主要取决于将时间轴划分成的箱的大小。然而,在大多数神经生理学研究中,研究人员在分析神经元活动的波动时,会任意选择箱的大小。最近,有人推导出一种严格的选择适当箱大小的方法,以便最小化时间直方图与未知基础率之间的平均积分平方误差(Shimazaki 和 Shinomoto,2007)。这种推导假设,在给定的速率下,尖峰是独立抽取的。然而,在实际中,生物神经元在其放电模式中表现出非泊松特征,使得尖峰的发生取决于前面的尖峰,这不可避免地会恶化优化。在这封信中,我们通过考虑可能的非泊松特征,对选择箱大小的方法进行了修订。通过数值模拟从给定的波动率中得出的非泊松尖峰序列,评估并证实了时间直方图拟合优度的改善。对于一些实验数据,修订后的算法改变了时间直方图的形状,使其偏离泊松优化方法。