6533b829fe1ef96bd1289867
RESEARCH PRODUCT
Predicting Individual Differences from Brain Responses to Music using Functional Network Centrality
Arihant JainElvira BratticoPetri ToiviainenVinoo Allurisubject
toiminnallinen magneettikuvausclassificationfMRIfunctional connectivitynaturalistic paradigmmusiikkipsykologiacentralitykognitiivinen neurotiedeerotyksilöllisyysindividual differenceskuunteleminendescription
Individual differences are known to modulate brain responses to music. Recent neuroscience research suggests that each individual has unique and fundamentally stable functional brain connections irrespective of the task they perform. 77 participants’ functional Magnetic Resonance Imaging (fMRI) responses were measured while continuously listening to music. Using a graph-theory-based approach, we modeled whole-brain functional connectivity. We then calculate voxel-wise eigenvector centrality and subsequently use it to classify gender and musical expertise using binary Support Vector Machine (SVM). We achieved a cross-validated classification accuracy of 97% and 96% for gender and musical expertise, respectively. We also identify regions that contribute most to this classification. Thus, this study demonstrates that individual differences can be decoded from brain responses to music using a graph-based method with near-perfect precision. nonPeerReviewed
year | journal | country | edition | language |
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2022-01-01 | 2022 Conference on Cognitive Computational Neuroscience |