Drew Patrick J, Abbott L F
Neurobiology Section 0357, Division of Biology, University of California at San Diego, La Jolla, CA 92093, USA.
J Neurophysiol. 2006 Aug;96(2):826-33. doi: 10.1152/jn.00134.2006. Epub 2006 Apr 26.
Many biological systems exhibit complex temporal behavior that cannot be adequately characterized by a single time constant. This dynamics, observed from single channels up to the level of human psychophysics, is often better described by power-law rather than exponential dependences on time. We develop and study the properties of neural models with scale-invariant, power-law adaptation and contrast them with the more commonly studied exponential case. Responses of an adapting firing-rate model to constant, pulsed, and oscillating inputs in both the power-law and exponential cases are considered. We construct a spiking model with power-law adaptation based on a nested cascade of processes and show that it can be "programmed" to produce a wide range of time delays. Finally, within a network model, we use power-law adaptation to reproduce long-term features of the tilt aftereffect.
许多生物系统呈现出复杂的时间行为,这种行为无法用单一的时间常数进行充分描述。从单通道到人类心理物理学层面所观察到的这种动力学,通常用幂律而非时间的指数依赖关系来更好地描述。我们开发并研究了具有尺度不变、幂律适应性的神经模型,并将其与更常研究的指数情况进行对比。考虑了幂律和指数情况下适应发放率模型对恒定、脉冲和振荡输入的响应。我们基于嵌套的过程级联构建了一个具有幂律适应性的脉冲发放模型,并表明它可以被“编程”以产生广泛的时间延迟。最后,在一个网络模型中,我们使用幂律适应性来重现倾斜后效的长期特征。