Literature DB >> 35426801

[Heartbeat-aware convolutional neural network for R-peak detection of wearable device ECG data].

H Tan1,2, J Lai1,2, Z Wang1,2, L Ji3, Y Zhang4, J Wang4, Y Song5, W Yang1,2.   

Abstract

OBJECTIVE: To develop a method for R-peak detection of ECG data from wearable devices to allow accurate estimation of the physiological parameters including heart rate and heart rate variability.
METHODS: A fully convolutional neural network was applied to predict the R-peak heatmap of ECG data and locate the R-peak positions. The heartbeat-aware (HA) module was introduced to enable the model to learn to predict the heartbeat number and R-peak heatmap simultaneously, thereby improving the capability of the model for extraction of the global context. The R-R interval estimated by the predicted heartbeat number was adopted to calculate the minimum horizontal distance for peak positioning. To achieve real-time R-peak detection on mobile devices, the deep separable convolution was adopted to reduce the number of parameters and the computational complexity of the model.
RESULTS: The proposed model was trained only with ECG data from wearable devices. At a tolerance window interval of 150 ms, the proposed method achieved R peak detection sensitivities of 100% for both wearable device ECG dataset and a public dataset (i.e. LUDB), and the true positivity rates exceeded 99.9%. As for the ECG signal of a 10 s duration, the CPU time of the proposed method for R-peak detection was about 23.2 ms.
CONCLUSION: The proposed method has good performance for R-peak detection of both wearable device ECG data and routine ECG data and also allows real-time R-peak detection of the ECG data.

Entities:  

Keywords:  R-peak detection; convolutional neural network; heartbeat-aware; wearable device ECG data

Mesh:

Year:  2022        PMID: 35426801      PMCID: PMC9010988          DOI: 10.12122/j.issn.1673-4254.2022.03.09

Source DB:  PubMed          Journal:  Nan Fang Yi Ke Da Xue Xue Bao        ISSN: 1673-4254


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2.  Long short-term memory.

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