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Deep learning approaches for plethysmography signal quality assessment in the presence of atrial fibrillation.

Publication ,  Journal Article
Pereira, T; Ding, C; Gadhoumi, K; Tran, N; Colorado, RA; Meisel, K; Hu, X
Published in: Physiological measurement
December 2019

Photoplethysmography (PPG) monitoring has been implemented in many portable and wearable devices we use daily for health and fitness tracking. Its simplicity and cost-effectiveness has enabled a variety of biomedical applications, such as continuous long-term monitoring of heart arrhythmias, fitness, and sleep tracking, and hydration monitoring. One major issue that can hinder PPG-based applications is movement artifacts, which can lead to false interpretations. In many implementations, noisy PPG signals are discarded. Misinterpreted or discarded PPG signals pose a problem in applications where the goal is to increase the yield of detecting physiological events, such as in the case of paroxysmal atrial fibrillation (AF)-a common episodic heart arrhythmia and a leading risk factor for stroke. In this work, we compared a traditional machine learning and deep learning approaches for PPG quality assessment in the presence of AF, in order to find the most robust method for PPG quality assessment.The training data set was composed of 78 278 30 s long PPG recordings from 3764 patients using bedside patient monitors. Two different representations of PPG signals were employed-a time-series based (1D) one and an image-based (2D) one. Trained models were tested on an independent set of 2683 30 s PPG signals from 13 stroke patients.ResNet18 showed a higher performance (0.985 accuracy, 0.979 specificity, and 0.988 sensitivity) than SVM and other deep learning approaches. 2D-based models were generally more accurate than 1D-based models.2D representation of PPG signal enhances the accuracy of PPG signal quality assessment.

Duke Scholars

Published In

Physiological measurement

DOI

EISSN

1361-6579

ISSN

0967-3334

Publication Date

December 2019

Volume

40

Issue

12

Start / End Page

125002

Related Subject Headings

  • Young Adult
  • Support Vector Machine
  • Signal Processing, Computer-Assisted
  • Plethysmography
  • Middle Aged
  • Male
  • Humans
  • Female
  • Deep Learning
  • Biomedical Engineering
 

Citation

APA
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ICMJE
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Pereira, T., Ding, C., Gadhoumi, K., Tran, N., Colorado, R. A., Meisel, K., & Hu, X. (2019). Deep learning approaches for plethysmography signal quality assessment in the presence of atrial fibrillation. Physiological Measurement, 40(12), 125002. https://doi.org/10.1088/1361-6579/ab5b84
Pereira, Tania, Cheng Ding, Kais Gadhoumi, Nate Tran, Rene A. Colorado, Karl Meisel, and Xiao Hu. “Deep learning approaches for plethysmography signal quality assessment in the presence of atrial fibrillation.Physiological Measurement 40, no. 12 (December 2019): 125002. https://doi.org/10.1088/1361-6579/ab5b84.
Pereira T, Ding C, Gadhoumi K, Tran N, Colorado RA, Meisel K, et al. Deep learning approaches for plethysmography signal quality assessment in the presence of atrial fibrillation. Physiological measurement. 2019 Dec;40(12):125002.
Pereira, Tania, et al. “Deep learning approaches for plethysmography signal quality assessment in the presence of atrial fibrillation.Physiological Measurement, vol. 40, no. 12, Dec. 2019, p. 125002. Epmc, doi:10.1088/1361-6579/ab5b84.
Pereira T, Ding C, Gadhoumi K, Tran N, Colorado RA, Meisel K, Hu X. Deep learning approaches for plethysmography signal quality assessment in the presence of atrial fibrillation. Physiological measurement. 2019 Dec;40(12):125002.
Journal cover image

Published In

Physiological measurement

DOI

EISSN

1361-6579

ISSN

0967-3334

Publication Date

December 2019

Volume

40

Issue

12

Start / End Page

125002

Related Subject Headings

  • Young Adult
  • Support Vector Machine
  • Signal Processing, Computer-Assisted
  • Plethysmography
  • Middle Aged
  • Male
  • Humans
  • Female
  • Deep Learning
  • Biomedical Engineering