Real-time machine learning-based intensive care unit alarm classification without prior knowledge of the underlying rhythm

Author:

Au-Yeung Wan-Tai M1,Sevakula Rahul K1,Sahani Ashish K2,Kassab Mohamad1,Boyer Richard3,Isselbacher Eric M4,Armoundas Antonis A15

Affiliation:

1. Cardiovascular Research Center, Massachusetts General Hospital, 149 13th St, Charlestown, MA 02129, USA

2. Center for Biomedical Engineering, Indian Institute of Technology Ropar, Rupnagar, Punjab 14001, India

3. Anesthesia Department, Massachusetts General Hospital, 55 Fruit Street, Boston, MA 02114, USA

4. Healthcare Transformation Lab, Massachusetts General Hospital, 50 Staniford St, Boston, MA 02114, USA

5. Institute for Medical Engineering and Science, Massachusetts Institute of Technology, 45 Carleton St, Cambridge, MA 02142, USA

Abstract

Abstract Aims This work attempts to develop a standalone heart rhythm alerting system for the intensive care unit (ICU), where life-threatening arrhythmias have to be identified/alerted more precisely and more instantaneously (i.e. with lower latency) than existing bedside monitors. Methods and results We use the dataset from the PhysioNet 2015 Challenge, which contains records that led to true and false arrhythmic alarms in the ICU. These records have been re-annotated as one of eight classes, namely (i) asystole, (ii) extreme bradycardia, (iii) extreme tachycardia, (iv) ventricular fibrillation (VF), (v) ventricular tachycardia (VT), (vi) normal sinus rhythm, (vii) sinus tachycardia, and (viii) noise/artefacts. Arrhythmia-specific features and features that measure the signal quality were extracted from all the records. To improve VF detection, an improved, over an existing, single-lead R-wave detection was developed that takes into account the R-waves detected in all electrocardiographic (ECG) leads. To avoid false R-wave detection due to pacing spikes, ECG signals were filtered with a low pass filter prior to R-wave detection, while the raw signals were used for feature extraction. Random forest was used as the classifier, and 10-time five-fold cross-validation, resulted in a macro-average sensitivity of 81.54%. Conclusions In conclusion, comparing with the bedside monitors used in the PhysioNet 2015 competition, we find that our method achieves higher positive predictive values for asystole, extreme bradycardia, VT, and VF; furthermore, our method is able to alert the presence of arrhythmia instantaneously, i.e. up to 4 s earlier.

Funder

American Heart Association

Institute of Precision Medicine

RICBAC Foundation

National Institutes of Health

Founders Affiliate Post-doctoral Fellowship

AHA

Publisher

Oxford University Press (OUP)

Reference35 articles.

1. Monitor alarm fatigue: an integrative review;Cvach;Biomed Instrum Technol,2012

2. The PhysioNet/Computing in Cardiology Challenge 2015: reducing false arrhythmia alarms in the ICU;Clifford;Comput Cardiol (2010),2015

3. Taming of the monitors: reducing false alarms in intensive care units;Plesinger;Physiol Meas,2016

4. Cardiac arrhythmia classification using multi-modal signal analysis;Kalidas;Physiol Meas,2016

5. Reduction of false arrhythmia alarms using signal selection and machine learning;Eerikainen;Physiol Meas,2016

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