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Papers/A Personalized Zero-Shot ECG Arrhythmia Monitoring System:...

A Personalized Zero-Shot ECG Arrhythmia Monitoring System: From Sparse Representation Based Domain Adaption to Energy Efficient Abnormal Beat Detection for Practical ECG Surveillance

Mehmet Yamaç, Mert Duman, İlke Adalıoğlu, Serkan Kiranyaz, Moncef Gabbouj

2022-07-14Sparse Representation-based ClassificationECG ClassificationArrhythmia DetectionZero-Shot LearningDictionary LearningDomain Adaptation
PaperPDFCode(official)

Abstract

This paper proposes a low-cost and highly accurate ECG-monitoring system intended for personalized early arrhythmia detection for wearable mobile sensors. Earlier supervised approaches for personalized ECG monitoring require both abnormal and normal heartbeats for the training of the dedicated classifier. However, in a real-world scenario where the personalized algorithm is embedded in a wearable device, such training data is not available for healthy people with no cardiac disorder history. In this study, (i) we propose a null space analysis on the healthy signal space obtained via sparse dictionary learning, and investigate how a simple null space projection or alternatively regularized least squares-based classification methods can reduce the computational complexity, without sacrificing the detection accuracy, when compared to sparse representation-based classification. (ii) Then we introduce a sparse representation-based domain adaptation technique in order to project other existing users' abnormal and normal signals onto the new user's signal space, enabling us to train the dedicated classifier without having any abnormal heartbeat of the new user. Therefore, zero-shot learning can be achieved without the need for synthetic abnormal heartbeat generation. An extensive set of experiments performed on the benchmark MIT-BIH ECG dataset shows that when this domain adaptation-based training data generator is used with a simple 1-D CNN classifier, the method outperforms the prior work by a significant margin. (iii) Then, by combining (i) and (ii), we propose an ensemble classifier that further improves the performance. This approach for zero-shot arrhythmia detection achieves an average accuracy level of 98.2% and an F1-Score of 92.8%. Finally, a personalized energy-efficient ECG monitoring scheme is proposed using the above-mentioned innovations.

Results

TaskDatasetMetricValueModel
Electrocardiography (ECG)MIT-BIH Arrhythmia DatabaseAccuracy98.2Ensemble CNN Classifier with Domain Adaptation
Electrocardiography (ECG)MIT-BIH Arrhythmia DatabaseF192.8Ensemble CNN Classifier with Domain Adaptation
Electrocardiography (ECG)MIT-BIH Arrhythmia DatabasePrecision91.9Ensemble CNN Classifier with Domain Adaptation
Electrocardiography (ECG)MIT-BIH Arrhythmia DatabaseRecall93.7Ensemble CNN Classifier with Domain Adaptation
Electrocardiography (ECG)MIT-BIH Arrhythmia Databasespecificity98.8Ensemble CNN Classifier with Domain Adaptation
Medical waveform analysisMIT-BIH Arrhythmia DatabaseAccuracy98.2Ensemble CNN Classifier with Domain Adaptation
Medical waveform analysisMIT-BIH Arrhythmia DatabaseF192.8Ensemble CNN Classifier with Domain Adaptation
Medical waveform analysisMIT-BIH Arrhythmia DatabasePrecision91.9Ensemble CNN Classifier with Domain Adaptation
Medical waveform analysisMIT-BIH Arrhythmia DatabaseRecall93.7Ensemble CNN Classifier with Domain Adaptation
Medical waveform analysisMIT-BIH Arrhythmia Databasespecificity98.8Ensemble CNN Classifier with Domain Adaptation

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