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首页> 外文期刊>Biological Cybernetics >Predicting the synaptic information efficacy in cortical layer 5 pyramidal neurons using a minimal integrate-and-fire model
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Predicting the synaptic information efficacy in cortical layer 5 pyramidal neurons using a minimal integrate-and-fire model

机译:使用最小积分并发射模型预测皮质第5层锥体神经元的突触信息效能

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Synaptic information efficacy (SIE) is a statistical measure to quantify the efficacy of a synapse. It measures how much information is gained, on the average, about the output spike train of a postsynaptic neuron if the input spike train is known. It is a particularly appropriate measure for assessing the input–output relationship of neurons receiving dynamic stimuli. Here, we compare the SIE of simulated synaptic inputs measured experimentally in layer 5 cortical pyramidal neurons in vitro with the SIE computed from a minimal model constructed to fit the recorded data. We show that even with a simple model that is far from perfect in predicting the precise timing of the output spikes of the real neuron, the SIE can still be accurately predicted. This arises from the ability of the model to predict output spikes influenced by the input more accurately than those driven by the background current. This indicates that in this context, some spikes may be more important than others. Lastly we demonstrate another aspect where using mutual information could be beneficial in evaluating the quality of a model, by measuring the mutual information between the model’s output and the neuron’s output. The SIE, thus, could be a useful tool for assessing the quality of models of single neurons in preserving input–output relationship, a property that becomes crucial when we start connecting these reduced models to construct complex realistic neuronal networks.
机译:突触信息效能(SIE)是一种量化突触功效的统计方法。如果知道输入尖峰序列,则它平均测量获得多少有关突触后神经元输出尖峰序列的信息。这是评估接受动态刺激的神经元的输入输出关系的一种特别合适的措施。在这里,我们比较了在体外第5层皮质锥体神经元中实验测量的模拟突触输入的SIE与从为适应记录数据而构建的最小模型计算出的SIE。我们显示,即使使用简单的模型预测真实神经元输出尖峰的精确时序远非完美,但仍可以准确预测SIE。这是由于模型能够比背景电流驱动的输出尖峰更准确地预测受输入影响的输出尖峰的能力。这表明在这种情况下,某些峰值可能比其他峰值更重要。最后,我们演示了另一个方面,即通过测量模型输出与神经元输出之间的互信息,使用互信息可能有助于评估模型的质量。因此,SIE可能是评估单个神经元模型质量以保持输入输出关系的有用工具,当我们开始将这些简化的模型连接起来以构建复杂的现实神经元网络时,这一特性就变得至关重要。

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