English

Multitaper Spectral Estimation HDP-HMMs for EEG Sleep Inference

Machine Learning 2018-05-21 v1 Machine Learning Signal Processing Applications

Abstract

Electroencephalographic (EEG) monitoring of neural activity is widely used for sleep disorder diagnostics and research. The standard of care is to manually classify 30-second epochs of EEG time-domain traces into 5 discrete sleep stages. Unfortunately, this scoring process is subjective and time-consuming, and the defined stages do not capture the heterogeneous landscape of healthy and clinical neural dynamics. This motivates the search for a data-driven and principled way to identify the number and composition of salient, reoccurring brain states present during sleep. To this end, we propose a Hierarchical Dirichlet Process Hidden Markov Model (HDP-HMM), combined with wide-sense stationary (WSS) time series spectral estimation to construct a generative model for personalized subject sleep states. In addition, we employ multitaper spectral estimation to further reduce the large variance of the spectral estimates inherent to finite-length EEG measurements. By applying our method to both simulated and human sleep data, we arrive at three main results: 1) a Bayesian nonparametric automated algorithm that recovers general temporal dynamics of sleep, 2) identification of subject-specific "microstates" within canonical sleep stages, and 3) discovery of stage-dependent sub-oscillations with shared spectral signatures across subjects.

Keywords

Cite

@article{arxiv.1805.07300,
  title  = {Multitaper Spectral Estimation HDP-HMMs for EEG Sleep Inference},
  author = {Leon Chlon and Andrew Song and Sandya Subramanian and Hugo Soulat and John Tauber and Demba Ba and Michael Prerau},
  journal= {arXiv preprint arXiv:1805.07300},
  year   = {2018}
}
R2 v1 2026-06-23T02:00:15.203Z