A 10-hour within-participant magnetoencephalography narrative dataset to test models of language comprehension
Publication year
2022Number of pages
18 p.
Source
Scientific Data, 9, (2022), article 278ISSN
Publication type
Article / Letter to editor

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Organization
PI Group Neurobiology of Language
SW OZ DCC AI
PI Group MR Techniques in Brain Function
Journal title
Scientific Data
Volume
vol. 9
Languages used
English (eng)
Subject
110 000 Neurocognition of Language; 150 000 MR Techniques in Brain Function; 340 000 Dynamic Connectivity; Cognitive artificial intelligenceAbstract
Recently, cognitive neuroscientists have increasingly studied the brain responses to narratives. At the same time, we are witnessing exciting developments in natural language processing where large-scale neural network models can be used to instantiate cognitive hypotheses in narrative processing. Yet, they learn from text alone and we lack ways of incorporating biological constraints during training. To mitigate this gap, we provide a narrative comprehension magnetoencephalography (MEG) data resource that can be used to train neural network models directly on brain data. We recorded from 3 participants, 10 separate recording hour-long sessions each, while they listened to audiobooks in English. After story listening, participants answered short questions about their experience. To minimize head movement, the participants wore MEG-compatible head casts, which immobilized their head position during recording. We report a basic evoked-response analysis showing that the responses accurately localize to primary auditory areas. The responses are robust and conserved across 10 sessions for every participant. We also provide usage notes and briefly outline possible future uses of the resource.
This item appears in the following Collection(s)
- Academic publications [204859]
- Donders Centre for Cognitive Neuroimaging [3428]
- Faculty of Social Sciences [27346]
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