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Journal of Artificial Intelligence and Metaheuristics

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Online: 2833-5597
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Open access journal. All articles are freely available online with no APC.

Journal of Artificial Intelligence and Metaheuristics
Full Length Article

Volume 7Issue 1PP: 08-18 • 2024

Cardiac Bioengineering Analysis of Electrophysiological Signals Driven by Deep Learning

Ashutosh Kumar Singh 1* ,
R. Karthikeyan 2 ,
P. Joel Josephson 3 ,
Pallavi Singh 4
1Department of ECE, I.E.T., Dr. Rammanohar Lohia Avadh University, Ayodhya, UP, India
2Department of CSE-AI & ML, St. Martin's Engineering College, Secunderabad, Telangana, India
3Department of ECE, Malla Reddy Engineering College, Secunderabad, Telangana, India
4Department of ECE, Hindustan Institute of Technology and Science, Chennai, TN, India
* Corresponding Author.
Received: April 27, 2023 Revised: August 11, 2023 Accepted: January 01, 2024

Abstract

Advanced methods are needed for fast and reliable detection of cardiovascular illnesses, which continue to be a primary source of morbidity and death globally. Using deep learning, this research presents a new method, dubbed "DeepLearnCardia," for analyzing electrophysiological data in cardiac bioengineering. To improve the analysis of cardiac electrophysiological data and provide a complete solution for arrhythmia prediction, the proposed technique combines wavelet transformations, attention processes, and multimodal fusion. Data preprocessing, feature extraction using wavelets, temporal encoding using Long Short-Term Memory (LSTM) networks, an attention mechanism, multimodal fusion, and spatial analysis with Convolutional Neural Networks (CNNs) are all components of this technique. In order to train the model, we use an adaptive optimizer and binary cross entropy as the loss function. Key performance metrics such as accuracy, sensitivity, specificity, precision, F1 score, and area under the ROC curve (AUC-ROC) are used to compare the proposed method's performance to that of six established methods: Signal Pro Analyzer, Electro Cardio Suite, Bio Signal Master, Cardio Wave Analyzer, EKG Precision Pro, and Heart Stat Analyzer. The results suggest that the proposed technique is superior to the state-of-the-art in cardiac signal analysis across all criteria. The suggested technique not only requires less resources, but also trains and infers more quickly and uses less of them.

Keywords

Arrhythmia Bioengineering Cardiac Signals Deep Learning Electrophysiology Multimodal Fusion Signal Analysis Temporal Encoding Wavelet Transform Attention Mechanism.

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Singh, Ashutosh Kumar, Karthikeyan, R., Josephson, P. Joel, Singh, Pallavi. "Cardiac Bioengineering Analysis of Electrophysiological Signals Driven by Deep Learning." Journal of Artificial Intelligence and Metaheuristics, vol. Volume 7, no. Issue 1, 2024, pp. 08-18. DOI: https://doi.org/10.54216/JAIM.070101
Singh, A., Karthikeyan, R., Josephson, P., Singh, P. (2024). Cardiac Bioengineering Analysis of Electrophysiological Signals Driven by Deep Learning. Journal of Artificial Intelligence and Metaheuristics, Volume 7(Issue 1), 08-18. DOI: https://doi.org/10.54216/JAIM.070101
Singh, Ashutosh Kumar, Karthikeyan, R., Josephson, P. Joel, Singh, Pallavi. "Cardiac Bioengineering Analysis of Electrophysiological Signals Driven by Deep Learning." Journal of Artificial Intelligence and Metaheuristics Volume 7, no. Issue 1 (2024): 08-18. DOI: https://doi.org/10.54216/JAIM.070101
Singh, A., Karthikeyan, R., Josephson, P., Singh, P. (2024) 'Cardiac Bioengineering Analysis of Electrophysiological Signals Driven by Deep Learning', Journal of Artificial Intelligence and Metaheuristics, Volume 7(Issue 1), pp. 08-18. DOI: https://doi.org/10.54216/JAIM.070101
Singh A, Karthikeyan R, Josephson P, Singh P. Cardiac Bioengineering Analysis of Electrophysiological Signals Driven by Deep Learning. Journal of Artificial Intelligence and Metaheuristics. 2024;Volume 7(Issue 1):08-18. DOI: https://doi.org/10.54216/JAIM.070101
A. Singh, R. Karthikeyan, P. Josephson, P. Singh, "Cardiac Bioengineering Analysis of Electrophysiological Signals Driven by Deep Learning," Journal of Artificial Intelligence and Metaheuristics, vol. Volume 7, no. Issue 1, pp. 08-18, 2024. DOI: https://doi.org/10.54216/JAIM.070101
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