Department of Physics, Hong Kong University of Science and Technology, Hong Kong, China.
Neural Comput. 2012 May;24(5):1147-85. doi: 10.1162/NECO_a_00269. Epub 2012 Feb 1.
Experimental data have revealed that neuronal connection efficacy exhibits two forms of short-term plasticity: short-term depression (STD) and short-term facilitation (STF). They have time constants residing between fast neural signaling and rapid learning and may serve as substrates for neural systems manipulating temporal information on relevant timescales. This study investigates the impact of STD and STF on the dynamics of continuous attractor neural networks and their potential roles in neural information processing. We find that STD endows the network with slow-decaying plateau behaviors: the network that is initially being stimulated to an active state decays to a silent state very slowly on the timescale of STD rather than on that of neuralsignaling. This provides a mechanism for neural systems to hold sensory memory easily and shut off persistent activities gracefully. With STF, we find that the network can hold a memory trace of external inputs in the facilitated neuronal interactions, which provides a way to stabilize the network response to noisy inputs, leading to improved accuracy in population decoding. Furthermore, we find that STD increases the mobility of the network states. The increased mobility enhances the tracking performance of the network in response to time-varying stimuli, leading to anticipative neural responses. In general, we find that STD and STP tend to have opposite effects on network dynamics and complementary computational advantages, suggesting that the brain may employ a strategy of weighting them differentially depending on the computational purpose.
实验数据表明,神经元连接效能表现出两种形式的短期可塑性:短期抑制(short-term depression,STD)和短期易化(short-term facilitation,STF)。它们的时间常数位于快速神经信号和快速学习之间,可能作为神经系统在相关时间尺度上操纵时间信息的基础。本研究探讨了 STD 和 STF 对连续吸引子神经网络动力学的影响及其在神经信息处理中的潜在作用。我们发现,STD 赋予网络缓慢衰减的平台行为:最初被刺激到活跃状态的网络在 STD 的时间尺度上而不是在神经信号的时间尺度上缓慢衰减到沉默状态。这为神经系统提供了一种机制,可以轻松地保持感觉记忆,并优雅地关闭持续活动。有了 STF,我们发现网络可以在促进神经元相互作用中保持外部输入的记忆痕迹,这为稳定网络对噪声输入的响应提供了一种方法,从而提高了群体解码的准确性。此外,我们发现 STD 增加了网络状态的迁移率。增加的迁移率增强了网络对时变刺激的跟踪性能,导致预期的神经反应。总的来说,我们发现 STD 和 STP 往往对网络动力学有相反的影响,并具有互补的计算优势,这表明大脑可能根据计算目的对它们进行差异化加权的策略。