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Stochastic Transitions between Neural States in Taste Processing and Decision-Making

机译:味觉处理和决策过程中神经状态之间的随机转变

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摘要

Noise, which is ubiquitous in the nervous system, causes trial-to-trial variability in the neural responses to stimuli. This neural variability is in turn a likely source of behavioral variability. Using Hidden Markov modeling, a method of analysis that can make use of such trial-to-trial response variability, we have uncovered sequences of discrete states of neural activity in gustatory cortex during taste processing. Here, we advance our understanding of these patterns in two ways. First, we reproduce the experimental findings in a formal model, describing a network that evinces sharp transitions between discrete states that are deterministically stable given sufficient noise in the network; as in the empirical data, the transitions occur at variable times across trials, but the stimulus-specific sequence is itself reliable. Second, we demonstrate that such noise-induced transitions between discrete states can be computationally advantageous in a reduced, decision-making network. The reduced network produces binary outputs, which represent classification of ingested substances as palatable or nonpalatable, and the corresponding behavioral responses of “spit” or “swallow”. We evaluate the performance of the network by measuring how reliably its outputs follow small biases in the strengths of its inputs. We compare two modes of operation: deterministic integration (“ramping”) versus stochastic decision-making (“jumping”), the latter of which relies on state-to-state transitions. We find that the stochastic mode of operation can be optimal under typical levels of internal noise and that, within this mode, addition of random noise to each input can improve optimal performance when decisions must be made in limited time.
机译:神经系统中普遍存在的噪声会导致神经对刺激的反应发生从试验到试验的变化。这种神经变异性又可能是行为变异性的来源。使用隐马尔可夫模型(一种可以利用这种试验到试验的响应变异性的分析方法),我们发现了味觉加工过程中味觉皮质中神经活动离散状态的序列。在这里,我们以两种方式增进对这些模式的理解。首先,我们在形式化模型中再现实验结果,描述了一个网络,该网络在给定网络中足够的噪声的情况下,在确定性稳定的离散状态之间表现出尖锐的过渡;与经验数据一样,试验之间的转换发生在不同的时间,但是特定刺激序列本身是可靠的。第二,我们证明了这种离散状态之间的噪声诱导转换在减少的决策网络中在计算上可能是有利的。简化的网络会产生二进制输出,表示将摄入的物质分类为可口或不可口,以及相应的行为“吐”或“吞咽”。我们通过测量网络输出跟随输入强度的小偏差的可靠性来评估网络的性能。我们比较两种操作模式:确定性集成(“斜坡”)与随机决策(“跳跃”),后者依赖于状态到状态的转换。我们发现,在典型的内部噪声水平下,随机操作模式可能是最佳的;在这种模式下,当必须在有限的时间内做出决定时,向每个输入端添加随机噪声可以提高最佳性能。

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