Respiratory Event Detection During Sleep Using Electrocardiogram and Respiratory Related Signals: Using Polysomnogram and Patch-Type Wearable Device Data.

Minsoo Yeo, Hoonsuk Byun, Jiyeon Lee, Jungick Byun, Hak Young Rhee, Wonchul Shin, Heenam Yoon
Author Information

Abstract

This paper presents an automatic algorithm for the detection of respiratory events in patients using electrocardiogram (ECG) and respiratory signals. The proposed method was developed using data of polysomnogram (PSG) and those recorded from a patch-type device. In total, data of 1,285 subjects were used for algorithm development and evaluation. The proposed method involved respiratory event detection and apnea-hypopnea index (AHI) estimation. Handcrafted features from the ECG and respiratory signals were applied to machine learning algorithms including linear discriminant analysis, quadratic discriminant analysis, random forest, multi-layer perceptron, and the support vector machine (SVM). High performance was demonstrated when using SVM, where the overall accuracy achieved was 83% and the Cohen's kappa was 0.53 for the minute-by-minute respiratory event detection. The correlation coefficient between the reference AHI obtained using the PSG and estimated AHI as per the proposed method was 0.87. Furthermore, patient classification based on an AHI cutoff of 15 showed an accuracy of 87% and a Cohen's kappa of 0.72. The proposed method increases performance result, as it records the ECG and respiratory signals simultaneously. Overall, it can be used to lower the development cost of commercial software owing to the use of open datasets.

Grants

  1. R24 HL114473/NHLBI NIH HHS
  2. M01 RR000080/NCRR NIH HHS
  3. T32 HL007567/NHLBI NIH HHS
  4. R01 HL098433/NHLBI NIH HHS
  5. HHSN268201500003I/NHLBI NIH HHS
  6. N01HC95159/NHLBI NIH HHS
  7. N01HC95160/NHLBI NIH HHS
  8. N01HC95161/NHLBI NIH HHS
  9. N01HC95162/NHLBI NIH HHS
  10. N01HC95163/NHLBI NIH HHS
  11. N01HC95164/NHLBI NIH HHS
  12. N01HC95165/NHLBI NIH HHS
  13. N01HC95166/NHLBI NIH HHS
  14. N01HC95167/NHLBI NIH HHS
  15. N01HC95168/NHLBI NIH HHS
  16. N01HC95169/NHLBI NIH HHS
  17. UL1 TR000040/NCATS NIH HHS
  18. UL1 TR000040/NCATS NIH HHS
  19. UL1 TR001420/NCATS NIH HHS

MeSH Term

Algorithms
Electrocardiography
Humans
Polysomnography
Sleep
Sleep Apnea Syndromes
Wearable Electronic Devices

Word Cloud

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