| Literature DB >> 26772751 |
Taegyun Jeon1, Jongmin Yu2, Witold Pedrycz3,4,5, Moongu Jeon6, Boreom Lee7, Byeongcheol Lee8.
Abstract
BACKGROUNDS: The heartbeat is fundamental cardiac activity which is straightforwardly detected with a variety of measurement techniques for analyzing physiological signals. Unfortunately, unexpected noise or contaminated signals can distort or cut out electrocardiogram (ECG) signals in practice, misleading the heartbeat detectors to report a false heart rate or suspend itself for a considerable length of time in the worst case. To deal with the problem of unreliable heartbeat detection, PhysioNet/CinC suggests a challenge in 2014 for developing robust heart beat detectors using multimodal signals.Entities:
Mesh:
Year: 2016 PMID: 26772751 PMCID: PMC4714443 DOI: 10.1186/s12938-016-0122-0
Source DB: PubMed Journal: Biomed Eng Online ISSN: 1475-925X Impact factor: 2.819
Fig. 1Example of records. Two examples of records in data sets: (upper) physiologic signals in a normal condition, (below) physiologic signals in a noisy condition
Fig. 2Workflow diagram of the proposed method for multimodal physiological signals
Performance of QRS detection methods used for training and the hidden data of the PhysioNet challenge dataset
| QRS Detector | Se (%) | PPV (%) | Overall (%) | ||
|---|---|---|---|---|---|
| Gross | Average | Gross | Average | ||
|
| 20.42 | 21.19 |
|
| 60.39 |
|
| 99.85 | 99.86 | 92.00 | 95.37 | 96.77 |
|
|
|
| 99.25 | 99.33 |
|
|
| 62.24 | 62.98 | 63.44 | 68.11 | 64.19 |
|
|
|
| 73.08 | 76.26 | 82.01 |
|
| 88.49 | 88.22 |
|
|
|
Fig. 3Interval between ECG and BP signals Intervals between the R-peak of ECG signal and characteristic points of the BP signals
Fig. 4Consecutive intervals between ECG and BP signal etected heartbeats from regular interval between the ECG signal and BP signals
Fig. 5Association model between ECG and EEG signals linear filter H(z) remove cardiac artifacts from EEG signals
Fig. 6EEG signal with ECG artifact physiological signals in data set. (upper) ECG signal (below) EEG signal corrupted with ECG artifact
Fig. 7Case of quality levels. Respective quality levels of signals as measured in a comparison with the general shapes from the training data
Fig. 8Experimental results. Experimental results of the proposed method: a normal condition, b unstable condition, c missing condition, and d noisy ECG and missing BP condition
Official rankings
| Phase I | Phase II | Phase III | |||
|---|---|---|---|---|---|
| Vollmer | 93.2 | De Cooman | 86.2 | Johnson | 87.9 |
| Pangerc | 89.2 | Vollmer | 86.0 | Soo-Kng | 86.7 |
| Johannesen | 88.9 | Pangerc | 85.9 | De Cooman | 86.6 |
| Ding | 88.9 | Plesinger | 85.0 | Gieraltowski | 86.4 |
| Soo-Kng | 88.7 | Johnson | 84.6 | Vollmer | 86.2 |
| gqrs | 89.8 | gqrs | 85.7 | gqrs | 84.5 |
The overall scores for the sample entry (gqrs) are shown for comparison
Systematic comparison of the accuracy with three different conditions: ECG alone, ECG + BP, and ECG + EEG
| Signals | Overall scores (%) | |
|---|---|---|
| Training data | Hidden test data | |
| ECG alone | 99.61 | 84.50 |
| ECG + BP | 99.82 | 85.98 |
| ECG + EEG | 99.77 | 84.78 |
| ECG + BP + EEG | 99.97 | 86.26 |