O'Doherty John P, Hampton Alan, Kim Hackjin
Computational and Neural Systems Program, California Institute of Technology, Pasadena, CA 91125, USA.
Ann N Y Acad Sci. 2007 May;1104:35-53. doi: 10.1196/annals.1390.022. Epub 2007 Apr 7.
In model-based functional magnetic resonance imaging (fMRI), signals derived from a computational model for a specific cognitive process are correlated against fMRI data from subjects performing a relevant task to determine brain regions showing a response profile consistent with that model. A key advantage of this technique over more conventional neuroimaging approaches is that model-based fMRI can provide insights into how a particular cognitive process is implemented in a specific brain area as opposed to merely identifying where a particular process is located. This review will briefly summarize the approach of model-based fMRI, with reference to the field of reward learning and decision making, where computational models have been used to probe the neural mechanisms underlying learning of reward associations, modifying action choice to obtain reward, as well as in encoding expected value signals that reflect the abstract structure of a decision problem. Finally, some of the limitations of this approach will be discussed.
在基于模型的功能磁共振成像(fMRI)中,从特定认知过程的计算模型得出的信号与执行相关任务的受试者的fMRI数据相关,以确定显示出与该模型一致的反应特征的脑区。与更传统的神经成像方法相比,该技术的一个关键优势在于,基于模型的fMRI能够深入了解特定认知过程在特定脑区是如何实现的,而不仅仅是确定特定过程位于何处。本综述将简要总结基于模型的fMRI方法,并参考奖励学习和决策领域,在该领域中,计算模型已被用于探究奖励关联学习、修改行动选择以获得奖励以及编码反映决策问题抽象结构的预期价值信号背后的神经机制。最后,将讨论该方法的一些局限性。