UNet-BiLSTM: A Deep Learning Method for Reconstructing Electrocardiography from Photoplethysmography

Yanke Guo, Qunfeng Tang, Zhencheng Chen, Shiyong Li

ELECTRONICS(2024)

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摘要
Electrocardiography (ECG) is generally used in clinical practice for cardiovascular diagnosis and for monitoring cardiovascular status. It is considered to be the gold standard for diagnosing cardiovascular diseases and assessing cardiovascular status. However, it is not always easy to obtain. Unlike ECG devices, photoplethysmography (PPG) devices can be placed on body parts such as the earlobes, fingertips, and wrists, making them more comfortable and easier to obtain. Several methods for reconstructing ECG signals using PPG signals have been proposed, but some of these methods are subject-specific models. These models cannot be applied to multiple subjects and have limitations. This study proposes a neural network model based on UNet and bidirectional long short-term memory (BiLSTM) networks as a group model for reconstructing ECG from PPG. The model was verified using 125 records from the MIMIC III matched subset. The experimental results demonstrated that the proposed model was, on average, able to achieve a Pearson's correlation coefficient, root mean square error, percentage root mean square difference, and Fr & eacute;chet distance of 0.861, 0.077, 5.302, and 0.278, respectively. This research can use the correlation between PPG and ECG to reconstruct a better ECG signal from PPG, which is crucial for diagnosing cardiovascular diseases.
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关键词
ECG reconstruction,electrocardiography (ECG),photoplethysmography (PPG),bidirectional long short-term memory network (BiLSTM),UNet
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