Publication | Closed Access
A convolutional neural network based approach to QRS detection
54
Citations
26
References
2017
Year
Unknown Venue
Convolutional Neural NetworkEngineeringMachine LearningWearable TechnologyDetection TechniqueElectrophysiological EvaluationPattern RecognitionQrs Detection AlgorithmBiosignal ProcessingPatient MonitoringSignal NormalizationCardiologyQrs CandidateMachine VisionDeep LearningSignal ProcessingCellular Neural NetworkHealth MonitoringElectrophysiology
In this paper we present a QRS detection algorithm based on pattern recognition as well as a new approach to ECG baseline wander removal and signal normalization. Each point of the zero-centred and normalized ECG signal is a QRS candidate, while a 1-D CNN classifier serves as a decision rule. Positive outputs from the CNN are clustered to form final QRS detections. The data is obtained from the 44 non-pacemaker recordings of the MIT-BIH arrhythmia database. Classifier was trained on 22 recordings and the remaining ones are used for performance evaluation. Our method achieves a sensitivity of 99.81% and 99.93% positive predictive value, which is comparable with most state-of-the-art solutions. This approach opens new possibilities for improvements in heartbeat classification as well as P and T wave detection problems.
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