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An effective machine learning approach for classifying artefact-free and distorted capnogram segments using simple time-domain features
2022
IEEE Access
Capnogram signal analysis has received considerable attention owing to its important applications in assessing cardiopulmonary functions. However, the automatic elimination of deformed parts of a capnogram waveform remains an open research problem. Herein, we introduce an automatic classification approach for discriminating artefact-free (regular) and distorted (irregular) segments of capnogram signals. The proposed features include Hjorth parameters and mean absolute deviation (MAD). The main
doi:10.1109/access.2022.3143617
fatcat:6muoqnfsnrbszdolo2gu35f5se