School of Psychology, University of Plymouth, UK.
Brain Res. 2012 Jan 24;1434:178-88. doi: 10.1016/j.brainres.2011.08.063. Epub 2011 Sep 1.
The response of an auditory neuron to a tone is often affected by the context in which the tone appears. For example, when measuring the response to a random sequence of tones, frequencies that appear rarely elicit a greater number of spikes than those that appear often. This phenomenon is called stimulus-specific adaptation (SSA). This article presents a neural field model in which SSA arises through selective adaptation to the frequently-occurring inputs. Formulating the network as a field model allows one to obtain an analytical expression for the expected response of a simple two-layer model to tones in a random sequence. The sequences of stimuli used in SSA experiments contain hundreds-and sometimes thousands-of tones, and these experiments routinely measure the response to many such sequences. A conventional neural network model (e.g., integrate-and-fire) would require numerical integration over long time periods to obtain results. Consequently, a field model that offers an immediate, analytical solution for a given input sequence is helpful. Two routes to obtaining this solution are discussed. The first involves the convolution of two closed-form expressions; the second relies on a series of approximations involving Gaussian curves. The purpose of the paper is to describe the model, to develop the approximations that allow an analytical solution, and finally, to comment on the output of the model in light of the SSA results published in the physiology literature. This article is part of a Special Issue entitled "Neural Coding".
听觉神经元对音调的反应通常受到音调出现的上下文的影响。例如,在测量随机音调序列的反应时,出现频率较低的音调会比出现频率较高的音调引发更多的尖峰。这种现象称为刺激特异性适应(SSA)。本文提出了一种神经场模型,其中 SSA 通过对经常出现的输入进行选择性适应而产生。将网络表述为场模型,可以获得简单两层模型对随机序列中音调的预期响应的解析表达式。在 SSA 实验中使用的刺激序列包含数百个,有时甚至数千个音调,这些实验通常会测量对许多这样的序列的反应。传统的神经网络模型(例如,积分和点火)将需要在很长时间内进行数值积分才能得到结果。因此,提供给定输入序列的即时解析解决方案的场模型是有帮助的。讨论了两种获得此解决方案的方法。第一种方法涉及两个闭式表达式的卷积;第二种方法依赖于涉及高斯曲线的一系列近似。本文的目的是描述该模型,开发允许解析解的近似方法,最后根据生理学文献中发表的 SSA 结果来评论模型的输出。本文是题为“神经编码”的特刊的一部分。