Publication | Open Access
Deep Representation Learning With Sample Generation and Augmented Attention Module for Imbalanced ECG Classification
36
Citations
51
References
2023
Year
Artificial IntelligenceMultiple Instance LearningEngineeringMachine LearningEfficient DetectionAutoencodersNovel Deep RepresentationBalanced Deep RepresentationData ScienceClass ImbalancePattern RecognitionBiostatisticsPublic HealthAugmented Attention ModuleData AugmentationFeature LearningImbalanced Ecg ClassificationDeep LearningDeep Representation LearningHealth Informatics
Developing an efficient heartbeat monitoring system has become a focal point in numerous healthcare applications. Specifically, in the last few years, heartbeat classification for arrhythmia detection has gained considerable interest from researchers. This paper presents a novel deep representation learning method for the efficient detection of arrhythmic beats. To mitigate the issues associated with the imbalanced data distribution, a novel re-sampling strategy is introduced. Unlike the existing oversampling methods, the proposed technique transforms majority-class samples into minority-class samples with a novel translation loss function. This approach assists the model in learning a more generalized representation of crucially important minority class samples. Moreover, by exploiting an auxiliary feature, an augmented attention module is designed that focuses on the most relevant and target-specific information. We adopted an inter-patient classification paradigm to evaluate the proposed method. The experimental results of this study on the MIT-BIH arrhythmia database clearly indicate that the proposed model with augmented attention mechanism and over-sampling strategy significantly learns a balanced deep representation and improves the classification performance of vital heartbeats.
| Year | Citations | |
|---|---|---|
Page 1
Page 1