Deep learning techniques, including CNNs and RNNs, significantly enhance the automation, accuracy, and personalization of ECG analysis for cardiovascular disease detection and authentication.
Deep learning techniques offer significant advancements in automating and improving the accuracy of ECG analysis for cardiovascular disease detection and patient authentication.
Effective cardiovascular health monitoring relies on precise electrocardiogram (ECG) analysis for early diagnosis and treatment of heart conditions. Recent advancements in deep learning, particularly through Convolutional Neural Networks (CNNs), have significantly enhanced the automation, accuracy, and personalization of ECG analysis. This review targets both medical professionals and a broader audience interested in deep learning applications. Our work explores the evolution of deep learning techniques in ECG analysis, from early CNN applications to current innovations in real-time processing and privacy-preserving methods. The paper discusses various deep learning models, including hybrid models, Recurrent Neural Networks (RNNs), and attention mechanisms, and their impact on diagnostic accuracy for diseases like myocardial infarction. Additionally, our paper examines ECG-based authentication systems, addressing challenges related to security and privacy, and highlighting recent technological advancements. By providing a detailed overview of these developments, the review offers valuable insights into future directions for deep learning in cardiovascular health monitoring and ECG-based authentication.
Sumalatha et al. (Mon,) conducted a review in Cardiovascular conditions. Deep learning techniques (CNNs, RNNs, attention mechanisms) was evaluated. Deep learning techniques, including CNNs and RNNs, significantly enhance the automation, accuracy, and personalization of ECG analysis for cardiovascular disease detection and authentication.
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