Masquelier Timothée, Hugues Etienne, Deco Gustavo, Thorpe Simon J
Center for Brain and Cognition, Universitat Pompeu Fabra, Barcelona, Spain.
J Neurosci. 2009 Oct 28;29(43):13484-93. doi: 10.1523/JNEUROSCI.2207-09.2009.
Recent experiments have established that information can be encoded in the spike times of neurons relative to the phase of a background oscillation in the local field potential-a phenomenon referred to as "phase-of-firing coding" (PoFC). These firing phase preferences could result from combining an oscillation in the input current with a stimulus-dependent static component that would produce the variations in preferred phase, but it remains unclear whether these phases are an epiphenomenon or really affect neuronal interactions-only then could they have a functional role. Here we show that PoFC has a major impact on downstream learning and decoding with the now well established spike timing-dependent plasticity (STDP). To be precise, we demonstrate with simulations how a single neuron equipped with STDP robustly detects a pattern of input currents automatically encoded in the phases of a subset of its afferents, and repeating at random intervals. Remarkably, learning is possible even when only a small fraction of the afferents ( approximately 10%) exhibits PoFC. The ability of STDP to detect repeating patterns had been noted before in continuous activity, but it turns out that oscillations greatly facilitate learning. A benchmark with more conventional rate-based codes demonstrates the superiority of oscillations and PoFC for both STDP-based learning and the speed of decoding: the oscillation partially formats the input spike times, so that they mainly depend on the current input currents, and can be efficiently learned by STDP and then recognized in just one oscillation cycle. This suggests a major functional role for oscillatory brain activity that has been widely reported experimentally.
最近的实验已经证实,信息可以编码在神经元的放电时间中,相对于局部场电位中的背景振荡相位——这一现象被称为“放电相位编码”(PoFC)。这些放电相位偏好可能是由输入电流的振荡与依赖于刺激的静态成分相结合产生的,该静态成分会导致偏好相位的变化,但目前尚不清楚这些相位是一种附带现象还是真的会影响神经元间的相互作用——只有这样它们才可能具有功能作用。在这里,我们表明PoFC对下游的学习和解码有着重大影响,而现在已经充分确立的放电时间依赖可塑性(STDP)起了作用。确切地说,我们通过模拟展示了一个配备STDP的单个神经元如何能够稳健地检测自动编码在其一部分传入神经相位中的输入电流模式,并以随机间隔重复出现。值得注意的是即便只有一小部分传入神经(约10%)表现出PoFC,学习也是可能的。之前在连续活动中就已经注意到STDP检测重复模式的能力,但事实证明振荡极大地促进了学习。与更传统的基于速率的编码进行的基准测试表明,对于基于STDP的学习和解码速度而言,振荡和PoFC具有优越性:振荡部分地对输入放电时间进行了格式化,使得它们主要取决于当前的输入电流,并且可以通过STDP有效地学习,然后在仅仅一个振荡周期内就被识别出来。这表明振荡性脑活动具有一种主要的功能作用,这一点已在实验中得到广泛报道。