Spatiotemporal Target Selection for Intracranial Neural Decoding of Abstract and Concrete Semantics
Overview
Affiliations
Decoding the inner representation of a word meaning from human cortical activity is a substantial challenge in the development of speech brain-machine interfaces (BMIs). The semantic aspect of speech is a novel target of speech decoding that may enable versatile communication platforms for individuals with impaired speech ability; however, there is a paucity of electrocorticography studies in this field. We decoded the semantic representation of a word from single-trial cortical activity during an imageability-based property identification task that required participants to discriminate between the abstract and concrete words. Using high gamma activity in the language-dominant hemisphere, a support vector machine classifier could discriminate the 2-word categories with significantly high accuracy (73.1 ± 7.5%). Activities in specific time components from two brain regions were identified as significant predictors of abstract and concrete dichotomy. Classification using these feature components revealed that comparable prediction accuracy could be obtained based on a spatiotemporally targeted decoding approach. Our study demonstrated that mental representations of abstract and concrete word processing could be decoded from cortical high gamma activities, and the coverage of implanted electrodes and time window of analysis could be successfully minimized. Our findings lay the foundation for the future development of semantic-based speech BMIs.
Nagata K, Kunii N, Fujitani S, Shimada S, Saito N Front Neurosci. 2024; 18:1424401.
PMID: 39381684 PMC: 11458560. DOI: 10.3389/fnins.2024.1424401.
Intracranial EEG signals disentangle multi-areal neural dynamics of vicarious pain perception.
Tan H, Zeng X, Ni J, Liang K, Xu C, Zhang Y Nat Commun. 2024; 15(1):5203.
PMID: 38890380 PMC: 11189531. DOI: 10.1038/s41467-024-49541-1.