Sleep onset detection based on time-varying autoregressive models with particle filter estimation
conference contribution
posted on 2024-10-31, 18:27authored byRamiro Alberto Chaparro Vargas, Piyakamal Dissanayaka Manamperi, Thomas Penzel, Beena Ahmed, Dean Cvetkovic
In this paper, we introduce a computer-assisted approach for the characterisation of sleep onset periods. The processing of polysomnograms(PSG) recordings involves the modelling of Time- Varying Autoregressive Moving Average (TVARMA) processes with recursive particle filtering. Thereupon, the computation of electroencephalogram (EEG) frequency bands δ, θ, α, ς, β, and mean amplitude of electrooculogram (EOG) and electromyogram (EMG) signals, conforms the features set. This is subsequently transferred to an ensemble classifier to detect Wake (W), non- REM1 (N1) and non-REM2 (N2) sleep stages. As a result, novel contributions in terms of non-Gaussian modelling of biosignal processes, approximation to PSG distributions with particle filtering and time-frequency analysis by Gabor transform within sleep staging, are discussed. The findings revealed performance metrics achieving in the best cases 93.18% accuracy, 6.82% error and 100% sensitivity/specificity rates.