Dissecting Mismatch Negativity: Early and Late Subcomponents for Detecting Deviants in Local and Global Sequence Regularities
Mismatch negativity (MMN) is commonly recognized as a neural signal of prediction error evoked by deviants from the expected patterns of sensory input. Studies show that MMN diminishes when sequence patterns become more predictable over a longer timescale. This implies that MMN is comprised of multi...
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Veröffentlicht in: | eNeuro 2024-05, Vol.11 (5), p.ENEURO.0050-24.2024 |
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Zusammenfassung: | Mismatch negativity (MMN) is commonly recognized as a neural signal of prediction error evoked by deviants from the expected patterns of sensory input. Studies show that MMN diminishes when sequence patterns become more predictable over a longer timescale. This implies that MMN is comprised of multiple subcomponents, each responding to different levels of temporal regularities. To probe the hypothesized subcomponents in MMN, we record human electroencephalography during an auditory local-global oddball paradigm where the tone-to-tone transition probability (local regularity) and the overall sequence probability (global regularity) are manipulated to control temporal predictabilities at two hierarchical levels. We find that the size of MMN is correlated with both probabilities and the spatiotemporal structure of MMN can be decomposed into two distinct subcomponents. Both subcomponents appear as negative waveforms, with one peaking early in the central-frontal area and the other late in a more frontal area. With a quantitative predictive coding model, we map the early and late subcomponents to the prediction errors that are tied to local and global regularities, respectively. Our study highlights the hierarchical complexity of MMN and offers an experimental and analytical platform for developing a multi-tiered neural marker applicable in clinical settings.
Our study provides new insights into the intricate architecture of mismatch negativity (MMN), a key neural indicator for deviant detection. Using a refined oddball paradigm with dual-level temporal controls, we identified two unique MMN subcomponents, each linked to prediction errors at different brain hierarchies. This work establishes a practical platform for a multi-tiered neural marker, offering clinical applications for assessing brain function across various hierarchies. |
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ISSN: | 2373-2822 2373-2822 |
DOI: | 10.1523/ENEURO.0050-24.2024 |