Institute of Neurobiology, Universidad Nacional Autónoma de México, Campus Juriquilla, Department of Cognitive Neuroscience, Queretaro 76230, México
J Neurosci. 2018 Apr 25;38(17):4186-4199. doi: 10.1523/JNEUROSCI.2651-17.2018. Epub 2018 Apr 3.
Extensive research has described two key features of interval timing. The bias property is associated with accuracy and implies that time is overestimated for short intervals and underestimated for long intervals. The scalar property is linked to precision and states that the variability of interval estimates increases as a function of interval duration. The neural mechanisms behind these properties are not well understood. Here we implemented a recurrent neural network that mimics a cortical ensemble and includes cells that show paired-pulse facilitation and slow inhibitory synaptic currents. The network produces interval selective responses and reproduces both bias and scalar properties when a Bayesian decoder reads its activity. Notably, the interval-selectivity, timing accuracy, and precision of the network showed complex changes as a function of the decay time constants of the modeled synaptic properties and the level of background activity of the cells. These findings suggest that physiological values of the time constants for paired-pulse facilitation and GABAb, as well as the internal state of the network, determine the bias and scalar properties of interval timing. Timing is a fundamental element of complex behavior, including music and language. Temporal processing in a wide variety of contexts shows two primary features: time estimates exhibit a shift toward the mean (the bias property) and are more variable for longer intervals (the scalar property). We implemented a recurrent neural network that includes long-lasting synaptic currents, which cannot only produce interval-selective responses but also follow the bias and scalar properties. Interestingly, only physiological values of the time constants for paired-pulse facilitation and GABAb, as well as intermediate background activity within the network can reproduce the two key features of interval timing.
大量研究描述了区间定时的两个关键特征。偏差特性与准确性相关,意味着短时间间隔被高估,长时间间隔被低估。标度特性与精度相关,表明区间估计的可变性随区间持续时间的增加而增加。这些特性背后的神经机制尚未得到很好的理解。在这里,我们实现了一个模仿皮质集合的递归神经网络,其中包括表现出成对脉冲易化和缓慢抑制性突触电流的细胞。当贝叶斯解码器读取其活动时,网络会产生区间选择性反应,并再现偏差和标度特性。值得注意的是,作为模型化突触特性的衰减时间常数和细胞背景活动水平的函数,网络的区间选择性、定时准确性和精度表现出复杂的变化。这些发现表明,成对脉冲易化和 GABA 的时间常数的生理值以及网络的内部状态决定了区间定时的偏差和标度特性。定时是复杂行为的基本要素,包括音乐和语言。在各种不同的背景下,时间处理表现出两个主要特征:时间估计向平均值(偏差特性)偏移,并且对于较长的间隔(标度特性)更具可变性。我们实现了一个包含长时程突触电流的递归神经网络,它不仅可以产生区间选择性反应,还可以遵循偏差和标度特性。有趣的是,只有成对脉冲易化和 GABA 的时间常数以及网络内的中间背景活动的生理值才能再现区间定时的两个关键特征。