Chacron Maurice J, Longtin André, Maler Leonard
Department of Physics, University of Ottawa, 451 Smyth Road, Ottawa, ON K1H-8M5, Canada.
Network. 2003 Nov;14(4):803-24.
Information theory is playing an increasingly important role in the analysis of neural data as it can precisely quantify the reliability of stimulus-response functions. Estimating the mutual information between a neural spike train and a time varying stimulus is, however, not trivial in practice and requires assumptions about the specific computations being performed by the neuron under study. Consequently, estimates of the mutual information depend on these assumptions and their validity must be ascertained in the particular physiological context in which experiments are carried out. Here we compare results obtained using different information measures that make different assumptions about the neural code (i.e. the way information is being encoded and decoded) and the stimulus ensemble (i.e. the set of stimuli that the animal can encounter in nature). Our comparisons are carried out in the context of spontaneously active neurons. However, some of our results are also applicable to neurons that are not spontaneously active. We first show conditions under which a single stimulus provides a good sample of the entire stimulus ensemble. Furthermore, we use a recently introduced information measure that is based on the spontaneous activity of the neuron rather than on the stimulus ensemble. This measure is compared to the Shannon information and it is shown that the two differ only by a constant. This constant is shown to represent the information that the neuron's spontaneous activity transmits about the fact that no stimulus is present in the animal's environment. As a consequence, the mutual information measure based on spontaneous activity is easily applied to stimuli that mimic those seen in nature, as it does not require a priori knowledge of the stimulus ensemble. Finally, we consider the effect of noise in the animal's environment on information transmission about sensory stimuli. Our results show that, as expected, such 'background' noise will increase the trial-to-trial variability of the neural response to repeated presentations of a stimulus. However, the same background noise can also increase the variability of the spike train and hence can lead to increased information transfer in the presence of background noise. Our study emphasizes how different assumptions can lead to different predictions for the information transmission of a neuron. Assumptions about the computations being performed by the system under study as well as the stimulus ensemble and background noise should therefore be carefully considered when applying information theory.
信息论在神经数据分析中发挥着越来越重要的作用,因为它可以精确量化刺激 - 反应函数的可靠性。然而,在实践中估计神经脉冲序列与随时间变化的刺激之间的互信息并非易事,需要对所研究神经元执行的特定计算做出假设。因此,互信息的估计取决于这些假设,其有效性必须在进行实验的特定生理背景中确定。在这里,我们比较了使用不同信息度量获得的结果,这些度量对神经编码(即信息编码和解码的方式)和刺激集合(即动物在自然环境中可能遇到的刺激集)做出了不同假设。我们的比较是在自发活动神经元的背景下进行的。然而,我们的一些结果也适用于非自发活动的神经元。我们首先展示了单个刺激能够很好地代表整个刺激集合的条件。此外,我们使用了一种最近引入的基于神经元自发活动而非刺激集合的信息度量。将这种度量与香农信息进行比较,结果表明两者仅相差一个常数。这个常数代表了神经元自发活动传递的关于动物环境中不存在刺激这一事实的信息。因此,基于自发活动的互信息度量很容易应用于模拟自然中所见刺激的情况,因为它不需要关于刺激集合的先验知识。最后,我们考虑动物环境中的噪声对感觉刺激信息传递的影响。我们的结果表明,正如预期的那样,这种“背景”噪声会增加对重复呈现刺激的神经反应在不同试验间的变异性。然而,相同的背景噪声也会增加脉冲序列的变异性,因此在存在背景噪声的情况下可能导致信息传递增加。我们的研究强调了不同假设如何导致对神经元信息传递的不同预测。因此,在应用信息论时,应仔细考虑关于所研究系统执行的计算以及刺激集合和背景噪声的假设。