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Personalized Monitoring Model for Electrocardiogram Signals: Diagnostic Accuracy Study
- Source :
- Jmir Biomedical Engineering
- Publication Year :
- 2022
- Publisher :
- La Trobe, 2022.
-
Abstract
- Background Due to the COVID-19 pandemic, the demand for remote electrocardiogram (ECG) monitoring has increased drastically in an attempt to prevent the spread of the virus and keep vulnerable individuals with less severe cases out of hospitals. Enabling clinicians to set up remote patient ECG monitoring easily and determining how to classify the ECG signals accurately so relevant alerts are sent in a timely fashion is an urgent problem to be addressed for remote patient monitoring (RPM) to be adopted widely. Hence, a new technique is required to enable routine and widespread use of RPM, as is needed due to COVID-19. Objective The primary aim of this research is to create a robust and easy-to-use solution for personalized ECG monitoring in real-world settings that is precise, easily configurable, and understandable by clinicians. Methods In this paper, we propose a Personalized Monitoring Model (PMM) for ECG data based on motif discovery. Motif discovery finds meaningful or frequently recurring patterns in patient ECG readings. The main strategy is to use motif discovery to extract a small sample of personalized motifs for each individual patient and then use these motifs to predict abnormalities in real-time readings of that patient using an artificial logical network configured by a physician. Results Our approach was tested on 30 minutes of ECG readings from 32 patients. The average diagnostic accuracy of the PMM was always above 90% and reached 100% for some parameters, compared to 80% accuracy for the Generalized Monitoring Models (GMM). Regardless of parameter settings, PMM training models were generated within 3-4 minutes, compared to 1 hour (or longer, with increasing amounts of training data) for the GMM. Conclusions Our proposed PMM almost eliminates many of the training and small sample issues associated with GMMs. It also addresses accuracy and computational cost issues of the GMM, caused by the uniqueness of heartbeats and training issues. In addition, it addresses the fact that doctors and nurses typically do not have data science training and the skills needed to configure, understand, and even trust existing black box machine learning models.
- Subjects :
- motif discovery
Coronavirus disease 2019 (COVID-19)
Remote patient monitoring
Computer science
As is
Diagnostic accuracy
heart disease
02 engineering and technology
electrocardiogram
Machine learning
computer.software_genre
020204 information systems
0202 electrical engineering, electronic engineering, information engineering
In patient
Set (psychology)
Uncategorized
Black box (phreaking)
Original Paper
ECG
business.industry
COVID-19
personalized monitoring model
Ecg monitoring
monitoring
020201 artificial intelligence & image processing
Artificial intelligence
time series
business
computer
Subjects
Details
- Database :
- OpenAIRE
- Journal :
- Jmir Biomedical Engineering
- Accession number :
- edsair.doi.dedup.....e57d1e509426337abed411f8add8ec75
- Full Text :
- https://doi.org/10.26181/16929289