Deep neural networks and transfer learning on a multivariate physiological signal dataset
While Deep Neural Networks (DNNs) and Transfer Learning (TL) have greatly contributed to several medical and clinical disciplines, the application to multivariate physiological datasets is still limited. Current examples mainly focus on one physiological signal and can only utilise applications that...
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sg-ntu-dr.10356-1468262023-03-05T15:34:03Z Deep neural networks and transfer learning on a multivariate physiological signal dataset Bizzego, Andrea Gabrieli, Giulio Esposito, Gianluca School of Social Sciences Lee Kong Chian School of Medicine (LKCMedicine) Division of Psychology Engineering::Computer science and engineering::Computing methodologies::Artificial intelligence Science::Biological sciences::Human anatomy and physiology Machine Learning Neural Networks While Deep Neural Networks (DNNs) and Transfer Learning (TL) have greatly contributed to several medical and clinical disciplines, the application to multivariate physiological datasets is still limited. Current examples mainly focus on one physiological signal and can only utilise applications that are customised for that specific measure, thus it limits the possibility of transferring the trained DNN to other domains. In this study, we composed a dataset (n=813) of six different types of physiological signals (Electrocardiogram, Electrodermal activity, Electromyogram, Photoplethysmogram, Respiration and Acceleration). Signals were collected from 232 subjects using four different acquisition devices. We used a DNN to classify the type of physiological signal and to demonstrate how the TL approach allows the exploitation of the efficiency of DNNs in other domains. After the DNN was trained to optimally classify the type of signal, the features that were automatically extracted by the DNN were used to classify the type of device used for the acquisition using a Support Vector Machine. The dataset, the code and the trained parameters of the DNN are made publicly available to encourage the adoption of DNN and TL in applications with multivariate physiological signals. Nanyang Technological University Published version 2021-03-11T08:27:05Z 2021-03-11T08:27:05Z 2021 Journal Article Bizzego, A., Gabrieli, G. & Esposito, G. (2021). Deep neural networks and transfer learning on a multivariate physiological signal dataset. Bioengineering, 8(3), 35-. https://dx.doi.org/10.3390/bioengineering8030035 2306-5354 https://hdl.handle.net/10356/146826 10.3390/bioengineering8030035 3 8 35 en NAP Start-up Grant M4081597 Bioengineering https://doi.org/10.21979/N9/42BBFA https://doi.org/10.21979/N9/O9ADTR https://doi.org/10.21979/N9/YCDXNE © 2021 by the authors. Licensee MDPI, Basel, Switzerland. This article is an open-access article distributed under the terms and conditions of the Creative CommonsAttribution (CC BY) license (https://creativecommons.org/licenses/by/4.0/). application/pdf |
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Engineering::Computer science and engineering::Computing methodologies::Artificial intelligence Science::Biological sciences::Human anatomy and physiology Machine Learning Neural Networks Bizzego, Andrea Gabrieli, Giulio Esposito, Gianluca Deep neural networks and transfer learning on a multivariate physiological signal dataset |
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While Deep Neural Networks (DNNs) and Transfer Learning (TL) have greatly contributed to several medical and clinical disciplines, the application to multivariate physiological datasets is still limited. Current examples mainly focus on one physiological signal and can only utilise applications that are customised for that specific measure, thus it limits the possibility of transferring the trained DNN to other domains. In this study, we composed a dataset (n=813) of six different types of physiological signals (Electrocardiogram, Electrodermal activity, Electromyogram, Photoplethysmogram, Respiration and Acceleration). Signals were collected from 232 subjects using four different acquisition devices. We used a DNN to classify the type of physiological signal and to demonstrate how the TL approach allows the exploitation of the efficiency of DNNs in other domains. After the DNN was trained to optimally classify the type of signal, the features that were automatically extracted by the DNN were used to classify the type of device used for the acquisition using a Support Vector Machine. The dataset, the code and the trained parameters of the DNN are made publicly available to encourage the adoption of DNN and TL in applications with multivariate physiological signals. |
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School of Social Sciences |
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School of Social Sciences Bizzego, Andrea Gabrieli, Giulio Esposito, Gianluca |
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Article |
author |
Bizzego, Andrea Gabrieli, Giulio Esposito, Gianluca |
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Bizzego, Andrea |
title |
Deep neural networks and transfer learning on a multivariate physiological signal dataset |
title_short |
Deep neural networks and transfer learning on a multivariate physiological signal dataset |
title_full |
Deep neural networks and transfer learning on a multivariate physiological signal dataset |
title_fullStr |
Deep neural networks and transfer learning on a multivariate physiological signal dataset |
title_full_unstemmed |
Deep neural networks and transfer learning on a multivariate physiological signal dataset |
title_sort |
deep neural networks and transfer learning on a multivariate physiological signal dataset |
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2021 |
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https://hdl.handle.net/10356/146826 https://doi.org/10.21979/N9/42BBFA https://doi.org/10.21979/N9/O9ADTR https://doi.org/10.21979/N9/YCDXNE |
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