Brain Mind Institute and School of Computer and Communication Sciences, Ecole Polytechnique Fédérale de Lausanne, 1015 Lausanne EPFL, Switzerland.
Neural Comput. 2011 Dec;23(12):3016-69. doi: 10.1162/NECO_a_00208. Epub 2011 Sep 15.
Multiple measures have been developed to quantify the similarity between two spike trains. These measures have been used for the quantification of the mismatch between neuron models and experiments as well as for the classification of neuronal responses in neuroprosthetic devices and electrophysiological experiments. Frequently only a few spike trains are available in each class. We derive analytical expressions for the small-sample bias present when comparing estimators of the time-dependent firing intensity. We then exploit analogies between the comparison of firing intensities and previously used spike train metrics and show that improved spike train measures can be successfully used for fitting neuron models to experimental data, for comparisons of spike trains, and classification of spike train data. In classification tasks, the improved similarity measures can increase the recovered information. We demonstrate that when similarity measures are used for fitting mathematical models, all previous methods systematically underestimate the noise. Finally, we show a striking implication of this deterministic bias by reevaluating the results of the single-neuron prediction challenge.
已经开发出多种方法来量化两个尖峰序列之间的相似性。这些方法被用于量化神经元模型与实验之间的不匹配,以及用于神经假体设备和电生理实验中的神经元响应的分类。通常在每个类别中只有少数几个尖峰序列可用。我们推导出了在比较时存在的时间依赖性放电强度估计器的小样本偏差的解析表达式。然后,我们利用放电强度比较与以前使用的尖峰序列度量之间的类比,并表明改进的尖峰序列度量可以成功地用于将神经元模型拟合到实验数据,用于尖峰序列比较和尖峰序列数据分类。在分类任务中,改进的相似性度量可以增加恢复的信息。我们证明了当相似性度量用于拟合数学模型时,所有先前的方法都会系统地低估噪声。最后,我们通过重新评估单神经元预测挑战的结果,展示了这种确定性偏差的显著影响。