Schneidman Elad, Berry Michael J, Segev Ronen, Bialek William
Joseph Henry Laboratories of Physics, Princeton University, Princeton, New Jersey 08544, USA.
Nature. 2006 Apr 20;440(7087):1007-12. doi: 10.1038/nature04701. Epub 2006 Apr 9.
Biological networks have so many possible states that exhaustive sampling is impossible. Successful analysis thus depends on simplifying hypotheses, but experiments on many systems hint that complicated, higher-order interactions among large groups of elements have an important role. Here we show, in the vertebrate retina, that weak correlations between pairs of neurons coexist with strongly collective behaviour in the responses of ten or more neurons. We find that this collective behaviour is described quantitatively by models that capture the observed pairwise correlations but assume no higher-order interactions. These maximum entropy models are equivalent to Ising models, and predict that larger networks are completely dominated by correlation effects. This suggests that the neural code has associative or error-correcting properties, and we provide preliminary evidence for such behaviour. As a first test for the generality of these ideas, we show that similar results are obtained from networks of cultured cortical neurons.
生物网络具有如此多的可能状态,以至于穷举采样是不可能的。因此,成功的分析依赖于简化假设,但对许多系统的实验表明,大量元素之间复杂的高阶相互作用起着重要作用。在这里,我们在脊椎动物视网膜中表明,神经元对之间的弱相关性与十个或更多神经元反应中的强集体行为共存。我们发现,这种集体行为可以通过捕获观察到的成对相关性但不假设高阶相互作用的模型进行定量描述。这些最大熵模型等同于伊辛模型,并预测更大的网络完全由相关效应主导。这表明神经编码具有关联或纠错特性,并且我们提供了这种行为的初步证据。作为对这些观点普遍性的首次检验,我们表明从培养的皮质神经元网络中也能获得类似的结果。