Roddey J C, Girish B, Miller J P
Center for Computational Biology, Montana State University, Bozeman 59717-3505, USA.
J Comput Neurosci. 2000 Mar-Apr;8(2):95-112. doi: 10.1023/a:1008921114108.
An analytical method is introduced for evaluating the performance of neural encoding models. The method addresses a critical question that arises during the course of the development and validation of encoding models: is a given model near optimal in terms of its accuracy in predicting the stimulus-elicited responses of a neural system, or can the predictive accuracy be improved significantly by further model development? The evaluation method is based on a derivation of the minimum mean-square error between actual responses and modeled responses. It is formulated as a comparison between the mean-square error of the candidate model and the theoretical minimum mean-square error attainable through an optimal model for the system. However, no a priori information about the nature of the optimal model is required. The theoretically minimum error is determined solely from the coherence function between pairs of system responses to repeated presentations of the same dynamic stimulus. Thus, the performance of the candidate model is judged against the performance of an optimal model rather than against that of an arbitrarily assumed model. Using this method. we evaluated a linear model for neural encoding by mechanosensory cells in the cricket cercal system. At low stimulus intensities, the best-fit linear model of encoding by single cells was found to be nearly optimal, even though the coherence between stimulus-response pairs (a commonly used measure of system linearity) was low. In this low-stimulus-intensity regime, the mean square error of the linear model was on the order of the power of the cell responses. In contrast, at higher stimulus intensities the linear model was not an accurate representation of neural encoding. even though the stimulus-response coherence was substantially higher than in the low-intensity regime.
介绍了一种用于评估神经编码模型性能的分析方法。该方法解决了编码模型开发和验证过程中出现的一个关键问题:就预测神经系统刺激诱发反应的准确性而言,给定模型是否接近最优,或者通过进一步的模型开发,预测准确性能否得到显著提高?该评估方法基于实际反应与建模反应之间最小均方误差的推导。它被表述为候选模型的均方误差与通过系统最优模型可达到的理论最小均方误差之间的比较。然而,不需要关于最优模型性质的先验信息。理论上的最小误差仅由系统对相同动态刺激重复呈现的反应对之间的相干函数确定。因此,候选模型的性能是与最优模型的性能进行比较,而不是与任意假设的模型进行比较。使用这种方法,我们评估了蟋蟀尾须系统中机械感觉细胞神经编码的线性模型。在低刺激强度下,发现单细胞编码的最佳拟合线性模型接近最优,尽管刺激 - 反应对之间的相干性(系统线性度的常用度量)较低。在这种低刺激强度范围内,线性模型的均方误差与细胞反应的功率量级相当。相比之下,在较高刺激强度下,线性模型不是神经编码的准确表示,尽管刺激 - 反应相干性明显高于低强度范围。