Department of Biomedical Engineering, Center for Investigations of Membrane Excitability Disorders, Washington University School of Medicine, St. Louis, Missouri 63110, USA.
J Neurosci. 2011 Oct 12;31(41):14800-9. doi: 10.1523/JNEUROSCI.3231-11.2011.
Short-term synaptic plasticity (STP) is widely thought to play an important role in information processing. This major function of STP has recently been challenged, however, by several computational studies indicating that transmission of information by dynamic synapses is broadband, i.e., frequency independent. Here we developed an analytical approach to quantify time- and rate-dependent synaptic information transfer during arbitrary spike trains using a realistic model of synaptic dynamics in excitatory hippocampal synapses. We found that STP indeed increases information transfer in a wide range of input rates, which corresponds well to the naturally occurring spike frequencies at these synapses. This increased information transfer is observed both during Poisson-distributed spike trains with a constant rate and during naturalistic spike trains recorded in hippocampal place cells in exploring rodents. Interestingly, we found that the presence of STP in low release probability excitatory synapses leads to optimization of information transfer specifically for short high-frequency bursts, which are indeed commonly observed in many excitatory hippocampal neurons. In contrast, more reliable high release probability synapses that express dominant short-term depression are predicted to have optimal information transmission for single spikes rather than bursts. This prediction is verified in analyses of experimental recordings from high release probability inhibitory synapses in mouse hippocampal slices and fits well with the observation that inhibitory hippocampal interneurons do not commonly fire spike bursts. We conclude that STP indeed contributes significantly to synaptic information transfer and may serve to maximize information transfer for specific firing patterns of the corresponding neurons.
短期突触可塑性 (STP) 被广泛认为在信息处理中起着重要作用。然而,最近的几项计算研究对 STP 的这一主要功能提出了挑战,这些研究表明动态突触的信息传递是宽带的,即与频率无关。在这里,我们开发了一种分析方法,使用兴奋性海马突触的现实模型来量化任意尖峰序列期间时变和率依赖的突触信息传递。我们发现,STP 确实在广泛的输入速率范围内增加了信息传递,这与这些突触中自然发生的尖峰频率非常吻合。这种增加的信息传递在具有恒定速率的泊松分布尖峰序列和在探索性啮齿动物中记录的海马位置细胞中的自然尖峰序列中都观察到了。有趣的是,我们发现低释放概率兴奋性突触中 STP 的存在导致信息传递的优化,特别是针对短而高频的爆发,这在许多兴奋性海马神经元中确实很常见。相比之下,具有主导短期抑郁的更可靠的高释放概率突触被预测对于单个尖峰而不是爆发具有最佳的信息传输。这一预测在对来自小鼠海马切片中高释放概率抑制性突触的实验记录的分析中得到了验证,并且与抑制性海马中间神经元不常见发射尖峰爆发的观察结果非常吻合。我们的结论是,STP 确实对突触信息传递有重大贡献,并可能有助于针对相应神经元的特定发射模式最大化信息传递。