Hazy Thomas E, Frank Michael J, O'reilly Randall C
Department of Psychology, University of Colorado Boulder, 345 UCB, Boulder, CO 80309, USA.
Philos Trans R Soc Lond B Biol Sci. 2007 Sep 29;362(1485):1601-13. doi: 10.1098/rstb.2007.2055.
The prefrontal cortex (PFC) has long been thought to serve as an 'executive' that controls the selection of actions and cognitive functions more generally. However, the mechanistic basis of this executive function has not been clearly specified often amounting to a homunculus. This paper reviews recent attempts to deconstruct this homunculus by elucidating the precise computational and neural mechanisms underlying the executive functions of the PFC. The overall approach builds upon existing mechanistic models of the basal ganglia (BG) and frontal systems known to play a critical role in motor control and action selection, where the BG provide a 'Go' versus 'NoGo' modulation of frontal action representations. In our model, the BG modulate working memory representations in prefrontal areas to support more abstract executive functions. We have developed a computational model of this system that is capable of developing human-like performance on working memory and executive control tasks through trial-and-error learning. This learning is based on reinforcement learning mechanisms associated with the midbrain dopaminergic system and its activation via the BG and amygdala. Finally, we briefly describe various empirical tests of this framework.
长期以来,前额叶皮层(PFC)一直被认为是一种“执行者”,更广泛地控制着动作选择和认知功能。然而,这种执行功能的机制基础尚未明确,常常归结为一个小人儿模型。本文回顾了最近通过阐明PFC执行功能背后精确的计算和神经机制来解构这个小人儿模型的尝试。整体方法建立在已知在运动控制和动作选择中起关键作用的基底神经节(BG)和额叶系统的现有机制模型之上,其中BG对额叶动作表征提供“执行”与“不执行”的调制。在我们的模型中,BG调节前额叶区域的工作记忆表征,以支持更抽象的执行功能。我们已经开发了一个该系统的计算模型,它能够通过试错学习在工作记忆和执行控制任务上展现出类似人类的表现。这种学习基于与中脑多巴胺能系统相关的强化学习机制,以及通过BG和杏仁核的激活。最后,我们简要描述了这个框架的各种实证测试。