Improving the efficacy of deep-learning models for heart beat detection on heterogeneous datasets
Deep learning (DL) has greatly contributed to bioelectric signal processing, in particular to extract physiological markers. However, the efficacy and applicability of the results proposed in the literature is often constrained to the population represented by the data used to train the models. In t...
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sg-ntu-dr.10356-1534142023-03-05T15:32:07Z Improving the efficacy of deep-learning models for heart beat detection on heterogeneous datasets Bizzego, Andrea Gabrieli, Giulio Neoh, Michelle Jin-Yee Esposito, Gianluca School of Social Sciences Lee Kong Chian School of Medicine (LKCMedicine) Psychology Social and Affective Neuroscience Lab Science::Biological sciences::Human anatomy and physiology Engineering::Computer science and engineering::Computing methodologies::Artificial intelligence Electrocardiogram Signals Deep Neural Networks Deep learning (DL) has greatly contributed to bioelectric signal processing, in particular to extract physiological markers. However, the efficacy and applicability of the results proposed in the literature is often constrained to the population represented by the data used to train the models. In this study, we investigate the issues related to applying a DL model on heterogeneous datasets. In particular, by focusing on heart beat detection from electrocardiogram signals (ECG), we show that the performance of a model trained on data from healthy subjects decreases when applied to patients with cardiac conditions and to signals collected with different devices. We then evaluate the use of transfer learning (TL) to adapt the model to the different datasets. In particular, we show that the classification performance is improved, even with datasets with a small sample size. These results suggest that a greater effort should be made towards the generalizability of DL models applied on bioelectric signals, in particular, by retrieving more representative datasets. Published version A.B. was supported by a Post-doctoral Fellowship within MIUR programme framework “Dipartimenti di Eccellenza” (DiPSCO, University of Trento). 2021-12-02T03:03:50Z 2021-12-02T03:03:50Z 2021 Journal Article Bizzego, A., Gabrieli, G., Neoh, M. J. & Esposito, G. (2021). Improving the efficacy of deep-learning models for heart beat detection on heterogeneous datasets. Bioengineering, 8(12), 193-. https://dx.doi.org/10.3390/bioengineering8120193 2306-5354 https://hdl.handle.net/10356/153414 10.3390/bioengineering8120193 12 8 193 en Bioengineering © 2021 by the authors. Licensee MDPI, Basel, Switzerland. This article is an open access article distributed under the terms and conditions of the Creative Commons Attribution (CC BY) license (https://creativecommons.org/licenses/by/4.0/). application/pdf |
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Science::Biological sciences::Human anatomy and physiology Engineering::Computer science and engineering::Computing methodologies::Artificial intelligence Electrocardiogram Signals Deep Neural Networks Bizzego, Andrea Gabrieli, Giulio Neoh, Michelle Jin-Yee Esposito, Gianluca Improving the efficacy of deep-learning models for heart beat detection on heterogeneous datasets |
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Deep learning (DL) has greatly contributed to bioelectric signal processing, in particular to extract physiological markers. However, the efficacy and applicability of the results proposed in the literature is often constrained to the population represented by the data used to train the models. In this study, we investigate the issues related to applying a DL model on heterogeneous datasets. In particular, by focusing on heart beat detection from electrocardiogram signals (ECG), we show that the performance of a model trained on data from healthy subjects decreases when applied to patients with cardiac conditions and to signals collected with different devices. We then evaluate the use of transfer learning (TL) to adapt the model to the different datasets. In particular, we show that the classification performance is improved, even with datasets with a small sample size. These results suggest that a greater effort should be made towards the generalizability of DL models applied on bioelectric signals, in particular, by retrieving more representative datasets. |
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School of Social Sciences |
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School of Social Sciences Bizzego, Andrea Gabrieli, Giulio Neoh, Michelle Jin-Yee Esposito, Gianluca |
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Article |
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Bizzego, Andrea Gabrieli, Giulio Neoh, Michelle Jin-Yee Esposito, Gianluca |
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Bizzego, Andrea |
title |
Improving the efficacy of deep-learning models for heart beat detection on heterogeneous datasets |
title_short |
Improving the efficacy of deep-learning models for heart beat detection on heterogeneous datasets |
title_full |
Improving the efficacy of deep-learning models for heart beat detection on heterogeneous datasets |
title_fullStr |
Improving the efficacy of deep-learning models for heart beat detection on heterogeneous datasets |
title_full_unstemmed |
Improving the efficacy of deep-learning models for heart beat detection on heterogeneous datasets |
title_sort |
improving the efficacy of deep-learning models for heart beat detection on heterogeneous datasets |
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2021 |
url |
https://hdl.handle.net/10356/153414 |
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