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Get Free AccessPredictive coding frameworks suggest that neural computations rely on hierarchical error minimization, where sensory signals are evaluated against internal model predictions. However, the neural implementation of this inference process remains unclear. We propose that cross-frequency coupling (CFC) furnishes a fundamental mechanism for this form of inference. We first demonstrate that our previously described laminar neural mass model (LaNMM) supports two key forms of CFC: (i) Signal-Envelope Coupling (SEC), where low-frequency rhythms modulate the amplitude envelope of higher-frequency oscillations, and (ii) Envelope-Envelope Coupling (EEC), where the envelopes of slower oscillations modulate the envelopes of higher-frequency rhythms. Then, we propose that - by encoding information in signals and their envelopes - these processes instantiate a hierarchical ``Comparator'' mechanism at the columnar level. Specifically, SEC generates fast prediction-error signals by subtracting top-down predictions from bottom-up oscillatory envelopes, while EEC operates at slower timescales to instantiate gating - a critical computational mechanism for precision-weighting and selective information routing. To establish the face validity - and clinical implications of - this proposal, we model perturbations of these CFC mechanisms to investigate their roles in pathophysiological and altered neuronal function. We illustrate how, in disorders such as Alzheimer's disease, disruptions in gamma oscillations following dysfunction in fast-spiking inhibitory interneurons impact Comparator function with an aberrant amplification of prediction errors in the early stages and a drastic attenuation in late phases of the disease. In contrast, by increasing excitatory gain, serotonergic psychedelics diminish the modulatory effect of predictions, resulting in a failure to attenuate prediction error signals (c.f., a failure of sensory attenuation). Together, these results establish cross-frequency coupling - across temporal scales - as candidate computational processes underlying hierarchical predictive coding in health and disease.
Giulio Ruffini, Edmundo Lopez-Sola, Raul P. Aristides, Jakub Vohryzek, Francesca Castaldo, Karl Friston (2025). Cross-Frequency Coupling as a Neural Substrate for Prediction Error Evaluation: A Laminar Neural Mass Modeling Approach. , DOI: https://doi.org/10.1101/2025.03.19.644090.
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Type
Preprint
Year
2025
Authors
6
Datasets
0
Total Files
0
Language
en
DOI
https://doi.org/10.1101/2025.03.19.644090
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