Brody Carlos D, Romo Ranulfo, Kepecs Adam
Cold Spring Harbor Laboratory, 1 Bungtown Road, Cold Spring Harbor, NY 11724, USA.
Curr Opin Neurobiol. 2003 Apr;13(2):204-11. doi: 10.1016/s0959-4388(03)00050-3.
Persistent neural activity is observed in many systems, and is thought to be a neural substrate for holding memories over time delays of a few seconds. Recent work has addressed two issues. First, how can networks of neurons robustly hold such an active memory? Computer systems obtain significant robustness to noise by approximating analogue quantities with discrete digital representations. In a similar manner, theoretical models of persistent activity in spiking neurons have shown that the most robust and stable way to store the short-term memory of a continuous parameter is to approximate it with a discrete representation. This general idea applies very broadly to mechanisms that range from biochemical networks to single cells and to large circuits of neurons. Second, why is it commonly observed that persistent activity in the cortex can be strongly time-varying? This observation is almost ubiquitous, and therefore must be taken into account in our models and our understanding of how short-term memories are held in the cortex.
在许多系统中都观察到了持续性神经活动,并且人们认为它是在几秒的时间延迟内保持记忆的神经基础。最近的研究解决了两个问题。第一,神经元网络如何稳健地保持这种活跃的记忆?计算机系统通过用离散的数字表示来近似模拟量,从而获得对噪声的显著鲁棒性。以类似的方式,发放神经元持续性活动的理论模型表明,存储连续参数短期记忆的最稳健和稳定的方法是用离散表示来近似它。这个一般概念非常广泛地适用于从生化网络到单个细胞再到大型神经元回路的各种机制。第二,为什么通常观察到皮层中的持续性活动会随时间强烈变化?这种观察几乎无处不在,因此在我们的模型以及我们对皮层中短期记忆如何保持的理解中必须加以考虑。