Lüdtke Niklas, Nelson Mark E
Neural Comput. 2006 Dec;18(12):2879-916. doi: 10.1162/neco.2006.18.12.2879.
We study the encoding of weak signals in spike trains with interspike interval (ISI) correlations and the signals' subsequent detection in sensory neurons. Motivated by the observation of negative ISI correlations in auditory and electrosensory afferents, we assess the theoretical performance limits of an individual detector neuron receiving a weak signal distributed across multiple afferent inputs. We assess the functional role of ISI correlations in the detection process using statistical detection theory and derive two sequential likelihood ratio detector models: one for afferents with renewal statistics; the other for afferents with negatively correlated ISIs. We suggest a mechanism that might enable sensory neurons to implicitly compute conditional probabilities of presynaptic spikes by means of short-term synaptic plasticity. We demonstrate how this mechanism can enhance a postsynaptic neuron's sensitivity to weak signals by exploiting the correlation structure of the input spike trains. Our model not only captures fundamental aspects of early electrosensory signal processing in weakly electric fish, but may also bear relevance to the mammalian auditory system and other sensory modalities.
我们研究了具有峰峰间隔(ISI)相关性的脉冲序列中弱信号的编码,以及这些信号随后在感觉神经元中的检测。受听觉和电感觉传入神经中负ISI相关性观察结果的启发,我们评估了单个检测神经元接收分布在多个传入输入上的弱信号时的理论性能极限。我们使用统计检测理论评估ISI相关性在检测过程中的功能作用,并推导了两个顺序似然比检测器模型:一个用于具有更新统计的传入神经;另一个用于具有负相关ISI的传入神经。我们提出了一种机制,该机制可能使感觉神经元能够通过短期突触可塑性隐式计算突触前尖峰的条件概率。我们展示了这种机制如何通过利用输入脉冲序列的相关结构来增强突触后神经元对弱信号的敏感性。我们的模型不仅捕捉了弱电鱼早期电感觉信号处理的基本方面,而且可能也与哺乳动物听觉系统和其他感觉模态相关。