Department of Neurobiology, Weizmann Institute of Science, Rehovot, Israel.
Curr Opin Neurobiol. 2016 Apr;37:133-140. doi: 10.1016/j.conb.2016.03.001. Epub 2016 Mar 24.
The ability to record the joint activity of large groups of neurons would allow for direct study of information representation and computation at the level of whole circuits in the brain. The combinatorial space of potential population activity patterns and neural noise imply that it would be impossible to directly map the relations between stimuli and population responses. Understanding of large neural population codes therefore depends on identifying simplifying design principles. We review recent results showing that strongly correlated population codes can be explained using minimal models that rely on low order relations among cells. We discuss the implications for large populations, and how such models allow for mapping the semantic organization of the neural codebook and stimulus space, and decoding.
记录大群神经元活动的能力将允许在大脑整个回路的水平上直接研究信息表示和计算。潜在群体活动模式和神经噪声的组合空间意味着不可能直接映射刺激和群体反应之间的关系。因此,对大型神经元群体编码的理解取决于识别简化的设计原则。我们回顾了最近的结果,这些结果表明,强烈相关的群体编码可以用依赖于细胞之间低阶关系的最小模型来解释。我们讨论了这些结果对大群体的影响,以及这些模型如何允许映射神经代码本和刺激空间的语义组织,并进行解码。