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52nd Asilomar Conference on Signals, systems and computers, Date: 2018/10/28 - 2018/11/01, Location: Pacific Grove, CA, USA

Publication date: 2018-10-01
Volume: 2018-October Pages: 799 - 805
ISSN: 9781538692189
Publisher: IEEE

Proc. 52nd Asilomar Conference on Signals, systems and computers

Author:

Geirnaert, S
Goovaerts, G ; Padhy, S ; Boussé, M ; De Lathauwer, L ; Van Huffel, Sabine ; Matthews, MB

Keywords:

Science & Technology, Technology, Computer Science, Information Systems, Engineering, Electrical & Electronic, Telecommunications, Computer Science, Engineering, DECOMPOSITIONS, PHYSIONET, STADIUS-18-91, C16/15/059#53326574

Abstract:

© 2018 IEEE. Atrial fibrillation (AF) is the most common cardiac arrhythmia, increasing the risk of a stroke substantially. Hence, early and accurate detection of AF is paramount. We present a matrix-and tensor-based method for AF detection in single-and multi-lead electrocardiogram (ECG) signals. First, the recordings are compressed into one heartbeat via the singular value decomposition (SVD). These representative heartbeats, single-lead, are collected in a matrix with modes time and recordings. In the multi-lead case, we obtain a tensor with modes lead, time and recording. By modeling the matrix (tensor) with a (multilinear) SVD, each recording, as well as new recordings, can be expressed by a coefficient vector. The comparison of a new coefficient vector with those of the model set results in morphological features, which are combined with heart rate variability information in a Support Vector Machine classifier to detect AF. The SVD-based method is tested on the 2017 PhysioNet/CinC Challenge dataset, resulting in an F1-score of 0.77. The multilinear SVD-based method is applied on the MIT-BIH AF IB and AF TDB dataset, resulting in a perfect separation. An advantage of our methods is the interpretability of the features, which is a key element in the application of automatic methods in clinical practice.