Quiroga Maria Del Mar, Morris Adam P, Krekelberg Bart
Center for Molecular and Behavioral Neuroscience, Rutgers University, Newark, NJ, United States.
Behavioral and Neural Sciences Graduate Program, Rutgers University, Newark, NJ, United States.
Front Syst Neurosci. 2019 Nov 8;13:67. doi: 10.3389/fnsys.2019.00067. eCollection 2019.
Adaptation is a multi-faceted phenomenon that is of interest in terms of both its function and its potential to reveal underlying neural processing. Many behavioral studies have shown that after exposure to an oriented adapter the perceived orientation of a subsequent test is repulsed away from the orientation of the adapter. This is the well-known Tilt Aftereffect (TAE). Recently, we showed that the dynamics of recurrently connected networks may contribute substantially to the neural changes induced by adaptation, especially on short time scales. Here we extended the network model and made the novel behavioral prediction that the TAE should be attractive, not repulsive, on a time scale of a few 100 ms. Our experiments, using a novel adaptation protocol that specifically targeted adaptation on a short time scale, confirmed this prediction. These results support our hypothesis that recurrent network dynamics may contribute to short-term adaptation. More broadly, they show that understanding the neural processing of visual inputs that change on the time scale of a typical fixation requires a detailed analysis of not only the intrinsic properties of neurons, but also the slow and complex dynamics that emerge from their recurrent connectivity. We argue that this is but one example of how even simple recurrent networks can underlie surprisingly complex information processing, and are involved in rudimentary forms of memory, spatio-temporal integration, and signal amplification.
适应是一种多方面的现象,无论从其功能还是从揭示潜在神经处理过程的潜力来看,都备受关注。许多行为学研究表明,在暴露于一个定向适应刺激后,随后测试刺激的感知方向会被排斥到远离适应刺激的方向。这就是著名的倾斜后效(TAE)。最近,我们发现循环连接网络的动力学可能在很大程度上促成了适应引起的神经变化,尤其是在短时间尺度上。在此,我们扩展了网络模型,并做出了新的行为学预测,即在几百毫秒的时间尺度上,TAE应该是吸引性的,而非排斥性的。我们的实验采用了一种专门针对短时间尺度适应的新型适应方案,证实了这一预测。这些结果支持了我们的假设,即循环网络动力学可能促成短期适应。更广泛地说,它们表明,要理解在典型注视时间尺度上变化的视觉输入的神经处理过程,不仅需要详细分析神经元的内在特性,还需要分析由其循环连接产生的缓慢而复杂的动力学。我们认为,这只是一个例子,说明即使是简单的循环网络也能成为惊人复杂信息处理的基础,并参与到记忆、时空整合和信号放大这些基本形式中。