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The Review of Model-Based fMRI Approach |
Chen Fuqin, Zhang Junran*, Yang Bing |
(Department of Medical Information Engineering, School of Electrical Engineering and Information, Sichuan University, Chengdu 610065, China) |
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Abstract Model-based fMRI approach has emerged as a promising potential technique in neuroimaging field since the new century. Compared to conventional fMRI approach, model-based fMRI approach can provide insight into how a particular cognitive process is implemented in a specific brain area or brain circuit as opposed to merely identifying where a particular process is located. It can reveal the relationship between internal variable of the model and the neuroimaging data, which provides an important approach to investigate brain functional activity effectively. This article mainly focused on the model-based fMRI approach in terms of the two computational frameworks (modeling single area: including reinforcement learning model and subjective value model; modeling brain areas interaction: psychophysiological interaction), and briefly described the application of model-based fMRI approach as well as its latest progress. Finally, we discussed the existing deficiencies of this approach and a prospect for its future development trend.
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Received: 28 December 2015
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