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刺激依赖的峰值阈值是一种最优神经编码方式。

A stimulus-dependent spike threshold is an optimal neural coder.

作者信息

Jones Douglas L, Johnson Erik C, Ratnam Rama

机构信息

Department of Electrical and Computer Engineering, University of Illinois at Urbana-Champaign Urbana, IL, USA ; Beckman Institute for Advanced Science and Technology, University of Illinois at Urbana-Champaign Urbana, IL, USA ; Coordinated Science Laboratory, University of Illinois at Urbana-Champaign Urbana, IL, USA ; Advanced Digital Sciences Center, Illinois at Singapore Pte. Ltd., Singapore Singapore.

Department of Electrical and Computer Engineering, University of Illinois at Urbana-Champaign Urbana, IL, USA ; Beckman Institute for Advanced Science and Technology, University of Illinois at Urbana-Champaign Urbana, IL, USA ; Coordinated Science Laboratory, University of Illinois at Urbana-Champaign Urbana, IL, USA.

出版信息

Front Comput Neurosci. 2015 Jun 2;9:61. doi: 10.3389/fncom.2015.00061. eCollection 2015.

Abstract

A neural code based on sequences of spikes can consume a significant portion of the brain's energy budget. Thus, energy considerations would dictate that spiking activity be kept as low as possible. However, a high spike-rate improves the coding and representation of signals in spike trains, particularly in sensory systems. These are competing demands, and selective pressure has presumably worked to optimize coding by apportioning a minimum number of spikes so as to maximize coding fidelity. The mechanisms by which a neuron generates spikes while maintaining a fidelity criterion are not known. Here, we show that a signal-dependent neural threshold, similar to a dynamic or adapting threshold, optimizes the trade-off between spike generation (encoding) and fidelity (decoding). The threshold mimics a post-synaptic membrane (a low-pass filter) and serves as an internal decoder. Further, it sets the average firing rate (the energy constraint). The decoding process provides an internal copy of the coding error to the spike-generator which emits a spike when the error equals or exceeds a spike threshold. When optimized, the trade-off leads to a deterministic spike firing-rule that generates optimally timed spikes so as to maximize fidelity. The optimal coder is derived in closed-form in the limit of high spike-rates, when the signal can be approximated as a piece-wise constant signal. The predicted spike-times are close to those obtained experimentally in the primary electrosensory afferent neurons of weakly electric fish (Apteronotus leptorhynchus) and pyramidal neurons from the somatosensory cortex of the rat. We suggest that KCNQ/Kv7 channels (underlying the M-current) are good candidates for the decoder. They are widely coupled to metabolic processes and do not inactivate. We conclude that the neural threshold is optimized to generate an energy-efficient and high-fidelity neural code.

摘要

基于脉冲序列的神经编码会消耗大脑能量预算的很大一部分。因此,从能量角度考虑,脉冲活动应尽可能保持在低水平。然而,高脉冲频率能改善脉冲序列中信号的编码和表示,尤其是在感觉系统中。这两种需求相互矛盾,推测选择性压力通过分配最少数量的脉冲来优化编码,以实现编码保真度的最大化。神经元在维持保真度标准的同时产生脉冲的机制尚不清楚。在这里,我们表明,类似于动态或适应性阈值的信号依赖型神经阈值,优化了脉冲产生(编码)和保真度(解码)之间的权衡。该阈值模拟突触后膜(一个低通滤波器)并充当内部解码器。此外,它设定了平均放电率(能量约束)。解码过程将编码误差的内部副本提供给脉冲发生器,当误差等于或超过脉冲阈值时,脉冲发生器就会发出一个脉冲。当优化后,这种权衡会导致一个确定性的脉冲发放规则,该规则产生最佳定时的脉冲,以实现保真度的最大化。在高脉冲频率的极限情况下,当信号可近似为分段恒定信号时,最优编码器以封闭形式推导得出。预测的脉冲时间与在弱电鱼(细吻线翎电鳗)的初级电感觉传入神经元和大鼠体感皮层的锥体神经元中实验获得的时间相近。我们认为,KCNQ/Kv7通道(构成M电流的基础)是解码器的良好候选者。它们广泛地与代谢过程耦合且不会失活。我们得出结论,神经阈值经过优化,以产生一种节能且高保真的神经编码。

https://cdn.ncbi.nlm.nih.gov/pmc/blobs/581f/4451370/e501cd96b47f/fncom-09-00061-g0001.jpg

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