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The Relation between Alpha/Beta Oscillations and the Encoding of Sentence induced Contextual Information

René Terporten, Jan-Mathijs Schoffelen, Bohan Dai, Peter Hagoort, Anne Kösem
doi: https://doi.org/10.1101/501437
René Terporten
1Max Planck Institute for Psycholinguistics
2Donders Institute for Cognitive Neuroimaging
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  • For correspondence: rene.terporten@mpi.nl
Jan-Mathijs Schoffelen
1Max Planck Institute for Psycholinguistics
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Bohan Dai
1Max Planck Institute for Psycholinguistics
2Donders Institute for Cognitive Neuroimaging
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Peter Hagoort
1Max Planck Institute for Psycholinguistics
2Donders Institute for Cognitive Neuroimaging
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Anne Kösem
1Max Planck Institute for Psycholinguistics
2Donders Institute for Cognitive Neuroimaging
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ABSTRACT

Within the sensory domain, alpha/beta oscillations have been frequently linked to the prediction of upcoming sensory input. Here, we investigated whether oscillations at these frequency bands serve as a neural marker in the context of linguistic input prediction as well. Specifically, we hypothesized that if alpha/beta oscillations do index language prediction, their power should modulate during sentence processing, indicating stronger engagement of underlying neuronal populations involved in the linguistic prediction process. Importantly, the modulation should monotonically relate to the degrees of predictability of incoming words based on past context. Specifically, we expected that the more predictable the last word of a sentence, the stronger the alpha/beta power modulation. To test this, we measured neural responses with magnetoencephalography of healthy individuals (of either sex) during exposure to a set of linguistically matched sentences featuring three distinct levels of sentence context constraint (high, medium and low constraint). We observed fluctuations in alpha/beta power before last word onset, and also modulations in M400 amplitude after last word onset that are known to gradually relate to semantic predictability. In line with previous findings, the M400 amplitude was monotonically related to the degree of context constraint, with a high constraining context resulting in the strongest amplitude decrease. In contrast, alpha/beta power was non-monotonically related to context constraints. The strongest power decrease was observed for intermediate constraints, followed by high and low constraints. While the monotonous M400 amplitude modulation fits within a framework of prediction, the non-monotonous oscillatory results are not easily reconciled with this idea.

SIGNIFICANCE STATEMENT Neural activity in the alpha (8-10Hz) and beta (16-20) frequency ranges have been related to the prediction of upcoming sensory input. It remains still debated whether these frequency bands relate to language prediction as well. In this magnetoencephalography study, we recorded alpha/beta oscillatory activity while participants listened to sentences whose ending had varying degree of predictability based on past linguistic information. Our results show that alpha/beta power modulations were non-monotonically related to the degree of linguistic predictability: the strongest modulation of alpha/beta power was observed for intermediate levels of linguistic predictability during sentence reading. Together, the results emphasize that alpha/beta oscillations cannot directly be linked to predictability in language, but potentially relate to attention or control operations during language processing.

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The copyright holder for this preprint is the author/funder, who has granted bioRxiv a license to display the preprint in perpetuity. It is made available under a CC-BY-NC-ND 4.0 International license.
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Posted December 19, 2018.
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The Relation between Alpha/Beta Oscillations and the Encoding of Sentence induced Contextual Information
René Terporten, Jan-Mathijs Schoffelen, Bohan Dai, Peter Hagoort, Anne Kösem
bioRxiv 501437; doi: https://doi.org/10.1101/501437
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The Relation between Alpha/Beta Oscillations and the Encoding of Sentence induced Contextual Information
René Terporten, Jan-Mathijs Schoffelen, Bohan Dai, Peter Hagoort, Anne Kösem
bioRxiv 501437; doi: https://doi.org/10.1101/501437

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