Abstract
The electrocardiogram (ECG) is a widespread diagnostic tool in healthcare and supports the diagnosis of cardiovascular disorders. Deep learning methods are a successful and popular technique to detect indications of disorders from an ECG signal. However, there are open questions around the robustness of these methods to various factors, including physiological ECG noise. In this study, we generate clean and noisy versions of an ECG dataset before applying symmetric projection attractor reconstruction (SPAR) and scalogram image transformations. A convolutional neural network is used to classify these image transforms. For the clean ECG dataset, F1 scores for SPAR attractor and scalogram transforms were 0.70 and 0.79, respectively. Scores decreased by less than 0.05 for the noisy ECG datasets. Notably, when the network trained on clean data was used to classify the noisy datasets, performance decreases of up to 0.18 in F1 scores were seen. However, when the network trained on the noisy data was used to classify the clean dataset, the decrease was less than 0.05. We conclude that physiological ECG noise impacts classification using deep learning methods and careful consideration should be given to the inclusion of noisy ECG signals in the training data when developing supervised networks for ECG classification.This article is part of the theme issue ‘Advanced computation in cardiovascular physiology: new challenges and opportunities’.
Highlights
The electrocardiogram (ECG) is a widespread diagnostic tool in healthcare and supports the diagnosis of cardiovascular disorders
We focus on the impact of ECG signal noise, to gain an understanding of how physiological ECG noise impacts the robustness of deep learning methods
The focus of this study is to evaluate the robustness of deep learning to physiological ECG noise, rather than to optimize ECG classification performance of a custom architecture
Summary
The electrocardiogram (ECG) is a widespread diagnostic tool in healthcare and supports the diagnosis of cardiovascular disorders. Deep learning methods are a successful and popular technique to detect indications of disorders from an ECG signal. When the network trained on clean data was used to classify the noisy datasets, performance decreases of up to 0.18 in F1 scores were seen. When the network trained on the noisy data was used to classify the clean dataset, the decrease was less than 0.05. We conclude that physiological ECG noise impacts classification using deep learning methods and careful. Electrocardiogram (ECG) signals have long been used to support the diagnosis of cardiovascular disorders. Network robustness to ECG noise of deep learning methods used to detect cardiovascular disorders is not well understood and there have been no studies directly addressing the issue. We focus on the impact of ECG signal noise, to gain an understanding of how physiological ECG noise impacts the robustness of deep learning methods
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More From: Philosophical Transactions of the Royal Society A: Mathematical, Physical and Engineering Sciences
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