Please use this identifier to cite or link to this item: http://hdl.handle.net/1942/31194
Title: Real Time Electrocardiogram Annotation with a Long Short Term Memory Neural Network
Authors: Corradi, Federico
Buil, Jeroen
DE CANNIERE, Helene 
Groenendaal, Willemijn
VANDERVOORT, Pieter 
Issue Date: 2019
Publisher: IEEE
Source: 2019 IEEE BIOMEDICAL CIRCUITS AND SYSTEMS CONFERENCE (BIOCAS 2019), IEEE,
Series/Report: Biomedical Circuits and Systems Conference
Abstract: Continuous monitoring of electrocardiogram from wearable devices can enable early detection of heart diseases. Ubiquitous monitoring on wearable electronics requires a novel class of algorithms that are low-power and have low-memory requirements. This work proposes a wearable compatible, and automatic solution for annotating Electrocardiogram (ECG) recordings while maintaining high accuracy of detection when users are carrying daily activities such as sitting, walking, and resting. We validate our solution with two Physionet datasets: the MITDB [1] (Boston's Beth Israel Hospital and MIT Arrhythmia Database), and the EDB [2] (European ST-T Database). In addition, we validate our method on a newly recorded dataset in collaboration with the 'Ziekenhuis Oost-Limburg' Hospital(1) that has been collected using a prototype wearable device [3]. Our solution exploits a recurrent neural network that achieves an average F1 score of 94.8% over all three datasets. Our solution achieves better generalization performance than the gold standard method Pan Tompkins which achieves an average F1 score of 93%. In addition, our method can be extended to full ECG annotation. We used the QTDB dataset [4] and we report an accuracy of 91.6% while annotating all 5 waves (P-Q-R-S-T) of the ECG complex.
Notes: Corradi, F (reprint author), Stichting IMEC Nederland, Ultra Low Power Syst IoT, Eindhoven, Netherlands.
federico.corradi@imec.nl
Other: Corradi, F (reprint author), Stichting IMEC Nederland, Ultra Low Power Syst IoT, Eindhoven, Netherlands. federico.corradi@imec.nl
Keywords: recurrent neural network;ECG;annotation;wearable;machine learning
Document URI: http://hdl.handle.net/1942/31194
ISBN: 978-1-5090-0617-5
ISSN: 2163-4025
ISI #: WOS:000521751500017
Rights: Copyright 2020 IEEE.
Category: C1
Type: Proceedings Paper
Validations: ecoom 2021
Appears in Collections:Research publications

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