Table 1_Robustness of brain state identification in synthetic phase-coupled neurodynamics using Hidden Markov Models.docx
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https://figshare.com/articles/dataset/Table_1_Robustness_of_brain_state_identification_in_synthetic_phase-coupled_neurodynamics_using_Hidden_Markov_Models_docx/28852760
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Hidden Markov Models (HMMs) have emerged as a powerful tool for analyzing time series of neural activity. Gaussian HMMs and their time-resolved extension, Time-Delay Embedded HMMs (TDE-HMMs), have been instrumental in detecting discrete brain states in the form of temporal sequences of large-scale brain networks. To assess the performance of Gaussian HMMs and TDE-HMMs in this context, we conducted simulations that generated synthetic data representing multiple phase-coupled interactions between different cortical regions to mimic real neural data. Our study demonstrates that TDE-HMM performs better than Gaussian HMM in accurately detecting brain states from synthetic phase-coupled interaction data. Finally, for TDE-HMMs, we manipulated key parameters such as phase coupling variability, state duration, and influence of volume conduction effect to evaluate the models’ performance under varying conditions.
创建时间:
2025-04-24



