Application of the Hidden Markov Model for determining PQRST complexes in electrocardiograms

05/10/2020
by   N. S. Shlyankin, et al.
0

The application of the hidden Markov model with various parameters in the segmentation task of QRS, ST, T, P, PQ, ISO complexes of electrocardiograms is considered. Models were trained using the Viterbi algorithm using the QT Database. For comparison, the Pan-Tompkins algorithm for searching for the duration of QRS complexes was modified.

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