Doi Eizaburo, Lewicki Michael S
Electrical Engineering and Computer Science Department, Case Western Reserve University, Cleveland, Ohio, United States of America.
PLoS Comput Biol. 2014 Aug 14;10(8):e1003761. doi: 10.1371/journal.pcbi.1003761. eCollection 2014 Aug.
A fundamental task of a sensory system is to infer information about the environment. It has long been suggested that an important goal of the first stage of this process is to encode the raw sensory signal efficiently by reducing its redundancy in the neural representation. Some redundancy, however, would be expected because it can provide robustness to noise inherent in the system. Encoding the raw sensory signal itself is also problematic, because it contains distortion and noise. The optimal solution would be constrained further by limited biological resources. Here, we analyze a simple theoretical model that incorporates these key aspects of sensory coding, and apply it to conditions in the retina. The model specifies the optimal way to incorporate redundancy in a population of noisy neurons, while also optimally compensating for sensory distortion and noise. Importantly, it allows an arbitrary input-to-output cell ratio between sensory units (photoreceptors) and encoding units (retinal ganglion cells), providing predictions of retinal codes at different eccentricities. Compared to earlier models based on redundancy reduction, the proposed model conveys more information about the original signal. Interestingly, redundancy reduction can be near-optimal when the number of encoding units is limited, such as in the peripheral retina. We show that there exist multiple, equally-optimal solutions whose receptive field structure and organization vary significantly. Among these, the one which maximizes the spatial locality of the computation, but not the sparsity of either synaptic weights or neural responses, is consistent with known basic properties of retinal receptive fields. The model further predicts that receptive field structure changes less with light adaptation at higher input-to-output cell ratios, such as in the periphery.
感觉系统的一项基本任务是推断有关环境的信息。长期以来一直有人认为,这一过程第一阶段的一个重要目标是通过减少神经表征中的冗余来有效地编码原始感觉信号。然而,可以预期会存在一些冗余,因为它可以为系统固有的噪声提供鲁棒性。对原始感觉信号本身进行编码也存在问题,因为它包含失真和噪声。最优解决方案还会受到有限生物资源的进一步限制。在这里,我们分析了一个包含感觉编码这些关键方面的简单理论模型,并将其应用于视网膜的情况。该模型指定了在一群有噪声的神经元中纳入冗余的最优方式,同时还能最优地补偿感觉失真和噪声。重要的是,它允许感觉单元(光感受器)和编码单元(视网膜神经节细胞)之间有任意的输入 - 输出细胞比率,从而提供不同离心率下视网膜编码的预测。与早期基于冗余减少的模型相比,所提出的模型传达了更多关于原始信号的信息。有趣的是,当编码单元数量有限时,比如在周边视网膜中,冗余减少可以接近最优。我们表明存在多种同样最优的解决方案,其感受野结构和组织有显著差异。其中,使计算的空间局部性最大化但不使突触权重或神经反应的稀疏性最大化的那个解决方案与视网膜感受野的已知基本特性一致。该模型进一步预测,在较高的输入 - 输出细胞比率下,比如在周边,感受野结构随光适应的变化较小。