Does a decision support system using TVAMs and HMMs accurately classify sleep stages from HRV signals in healthy sleepers?
A novel decision support system using Heart Rate Variability signals and Hidden Markov Models achieved nearly 80% accuracy in sleep staging among healthy sleepers.
An alternative DSS which models the behaviour of the Heart Rate Variability (HRV) signal linked to stable (NREM) and instable (REM) cerebral waves during sleep and a probabilistic model of the sleep stages transitions for decision was developed. Time-Varying Autoregressive Models (TVAMs) were used as feature extractor while Hidden Markov Models (HMM) was used as time series classifier. 24 full polysomnography recordings from healthy sleepers were used for the analysis and those were separated in two sets of 12 each: training and test set. The classification performance for the test set was specificity = 0.851, accuracy = 0.793 and sensitivity = 0.702.
Méndez et al. (Fri,) studied this question.
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