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Decoding dynamic affective responses to naturalistic videos with shared neural patterns
Journal article   Open access   Peer reviewed

Decoding dynamic affective responses to naturalistic videos with shared neural patterns

Hang-Yee Chan, Ale Smidts, Vincent C. Schoots, Alan G. Sanfey and Maarten A. S. Boksem
NeuroImage
01/08/2020

Abstract

cognitive neuroscience
This study explored the feasibility of using shared neural patterns from brief affective episodes (viewing affective pictures) to decode extended, dynamic affective sequences in a naturalistic experience (watching movie-trailers). Twenty-eight participants viewed pictures from the International Affective Picture System (IAPS) and, in a separate session, watched various movie-trailers. We first located voxels at bilateral occipital cortex (LOC) responsive to affective picture categories by GLM analysis, then performed between-subject hyperalignment on the LOC voxels based on their responses during movie-trailer watching. After hyperalignment, we trained between-subject machine learning classifiers on the affective pictures, and used the classifiers to decode affective states of an out-of-sample participant both during picture viewing and during movie-trailer watching. Within participants, neural classifiers identified valence and arousal categories of pictures, and tracked self-reported valence and arousal during video watching. In aggregate, neural classifiers produced valence and arousal time series that tracked the dynamic ratings of the movie-trailers obtained from a separate sample. Our findings provide further support for the possibility of using pre-trained neural representations to decode dynamic affective responses during a naturalistic experience.
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Open Access CC BY-NC-ND V4.0
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https://doi.org/10.1016/j.neuroimage.2020.116618View
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Collaboration types
Domestic collaboration
Citation topics
1 Clinical & Life Sciences
1.7 Neuroscanning
1.7.354 Emotion Perception
Web of Science research areas
Neuroimaging
Neurosciences
Radiology, Nuclear Medicine & Medical Imaging
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