Stoianov Ivilin, Genovesio Aldo, Pezzulo Giovanni
National Research Council, Rome, Italy.
CNRS and Aix-Marseille University, France.
J Cogn Neurosci. 2016 Jan;28(1):140-57. doi: 10.1162/jocn_a_00886. Epub 2015 Oct 6.
The prefrontal cortex (PFC) supports goal-directed actions and exerts cognitive control over behavior, but the underlying coding and mechanism are heavily debated. We present evidence for the role of goal coding in PFC from two converging perspectives: computational modeling and neuronal-level analysis of monkey data. We show that neural representations of prospective goals emerge by combining a categorization process that extracts relevant behavioral abstractions from the input data and a reward-driven process that selects candidate categories depending on their adaptive value; both forms of learning have a plausible neural implementation in PFC. Our analyses demonstrate a fundamental principle: goal coding represents an efficient solution to cognitive control problems, analogous to efficient coding principles in other (e.g., visual) brain areas. The novel analytical-computational approach is of general interest because it applies to a variety of neurophysiological studies.
前额叶皮层(PFC)支持目标导向行为并对行为施加认知控制,但其潜在的编码方式和机制存在激烈争论。我们从两个相互印证的角度提供了PFC中目标编码作用的证据:计算建模和对猴子数据的神经元水平分析。我们表明,前瞻性目标的神经表征是通过将从输入数据中提取相关行为抽象的分类过程与根据候选类别的适应性价值选择它们的奖励驱动过程相结合而出现的;这两种学习形式在PFC中都有合理的神经实现方式。我们的分析证明了一个基本原则:目标编码代表了一种解决认知控制问题的有效方案,类似于其他(如视觉)脑区的有效编码原则。这种新颖的分析-计算方法具有普遍意义,因为它适用于各种神经生理学研究。