Adibi Mehdi, McDonald James S, Clifford Colin W G, Arabzadeh Ehsan
School of Psychology, University of New South Wales, Sydney, New South Wales, Australia ; Eccles Institute of Neuroscience, John Curtin School of Medical Research, The Australian National University, Canberra, Australian Capital Territory, Australia.
School of Psychology, University of New South Wales, Sydney, New South Wales, Australia.
PLoS Comput Biol. 2014 Jan;10(1):e1003415. doi: 10.1371/journal.pcbi.1003415. Epub 2014 Jan 2.
Sensory information is encoded in the response of neuronal populations. How might this information be decoded by downstream neurons? Here we analyzed the responses of simultaneously recorded barrel cortex neurons to sinusoidal vibrations of varying amplitudes preceded by three adapting stimuli of 0, 6 and 12 µm in amplitude. Using the framework of signal detection theory, we quantified the performance of a linear decoder which sums the responses of neurons after applying an optimum set of weights. Optimum weights were found by the analytical solution that maximized the average signal-to-noise ratio based on Fisher linear discriminant analysis. This provided a biologically plausible decoder that took into account the neuronal variability, covariability, and signal correlations. The optimal decoder achieved consistent improvement in discrimination performance over simple pooling. Decorrelating neuronal responses by trial shuffling revealed that, unlike pooling, the performance of the optimal decoder was minimally affected by noise correlation. In the non-adapted state, noise correlation enhanced the performance of the optimal decoder for some populations. Under adaptation, however, noise correlation always degraded the performance of the optimal decoder. Nonetheless, sensory adaptation improved the performance of the optimal decoder mainly by increasing signal correlation more than noise correlation. Adaptation induced little systematic change in the relative direction of signal and noise. Thus, a decoder which was optimized under the non-adapted state generalized well across states of adaptation.
感觉信息编码于神经元群体的反应之中。下游神经元如何解码这些信息呢?在此,我们分析了同时记录的桶状皮层神经元对不同振幅的正弦振动的反应,这些振动之前施加了振幅为0、6和12微米的三种适应性刺激。使用信号检测理论框架,我们量化了一个线性解码器的性能,该解码器在应用一组最优权重后对神经元的反应进行求和。通过基于Fisher线性判别分析最大化平均信噪比的解析解找到了最优权重。这提供了一个考虑了神经元变异性、协变性和信号相关性的生物学上合理的解码器。与简单合并相比,最优解码器在辨别性能上实现了持续提升。通过试验重排使神经元反应去相关表明,与合并不同,最优解码器的性能受噪声相关性的影响最小。在非适应状态下,噪声相关性增强了某些群体的最优解码器的性能。然而,在适应情况下,噪声相关性总是会降低最优解码器的性能。尽管如此,感觉适应主要通过增加信号相关性而非噪声相关性来提高最优解码器的性能。适应在信号和噪声的相对方向上几乎没有引起系统性变化。因此,在非适应状态下优化的解码器在不同的适应状态下具有良好的通用性。