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Hierarchical Organization of Frontotemporal Networks for the Prediction of Stimuli across Multiple Dimensions.


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Authors

Blenkmann, Alejandro 
Hughes, Laura E 
Bekinschtein, Tristan A 
Rowe, James B 

Abstract

Brain function can be conceived as a hierarchy of generative models that optimizes predictions of sensory inputs and minimizes "surprise." Each level of the hierarchy makes predictions of neural events at a lower level in the hierarchy, which returns a prediction error when these expectations are violated. We tested the generalization of this hypothesis to multiple sequential deviations, and we identified the most likely organization of the network that accommodates deviations in temporal structure of stimuli. Magnetoencephalography of healthy human participants during an auditory paradigm identified prediction error responses in bilateral primary auditory cortex, superior temporal gyrus, and lateral prefrontal cortex for deviation by frequency, intensity, location, duration, and silent gap. We examined the connectivity between cortical sources using a set of 21 generative models that embedded alternate hypotheses of frontotemporal network dynamics. Bayesian model selection provided evidence for two new features of functional network organization. First, an expectancy signal provided input to the prefrontal cortex bilaterally, related to the temporal structure of stimuli. Second, there are functionally significant lateral connections between superior temporal and/or prefrontal cortex. The results support a predictive coding hypothesis but go beyond previous work in demonstrating the generalization to multiple concurrent stimulus dimensions and the evidence for a temporal expectancy input at the higher level of the frontotemporal hierarchy. We propose that this framework for studying the brain's response to unexpected events is not limited to simple sensory tasks but may also apply to the neurocognitive mechanisms of higher cognitive functions and their disorders.

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Keywords

dynamic causal modeling, magnetoencephalography, mismatch negativity, prediction and prediction error, Acoustic Stimulation, Adolescent, Adult, Bayes Theorem, Brain, Evoked Potentials, Auditory, Female, Humans, Magnetoencephalography, Male, Models, Neurological, Nerve Net, Signal Processing, Computer-Assisted, Young Adult

Journal Title

J Neurosci

Conference Name

Journal ISSN

0270-6474
1529-2401

Volume Title

35

Publisher

Society for Neuroscience
Sponsorship
Wellcome Trust (103838/Z/14/Z)
Medical Research Council (MC_U105597119)
James S McDonnell Foundation (220020289)
MRC (1233633)
Wellcome Trust (088324/Z/09/Z)
Wellcome Trust (093875/Z/10/Z)
This work was supported by the Medical Research Council (Grant MC-A060-5PQ30 and a doctoral training award to H.N.P.), the Wellcome Trust (Grants 088324 and 103838 to J.B.R. and L.E.H., Biomedical Research Fellowship WT093811MA to T.A.B.), and the James F. McDonnell Foundation 21st Century Science Initiative: Understanding Human Cognition.