Two-stream Network for ECG Signal Classification
- URL: http://arxiv.org/abs/2210.06293v1
- Date: Wed, 5 Oct 2022 08:14:51 GMT
- Title: Two-stream Network for ECG Signal Classification
- Authors: Xinyao Hou, Shengmei Qin, Jianbo Su
- Abstract summary: This paper explores an effective algorithm for automatic classifications of multi-classes of heartbeat types based on ECG.
A two-stream architecture is used in this paper and presents an enhanced version of ECG recognition based on this.
Results on the MIT-BIH Arrhythmia Database demonstrate that the proposed algorithm performs an accuracy of 99.38%.
- Score: 3.222802562733787
- License: http://creativecommons.org/licenses/by/4.0/
- Abstract: Electrocardiogram (ECG), a technique for medical monitoring of cardiac
activity, is an important method for identifying cardiovascular disease.
However, analyzing the increasing quantity of ECG data consumes a lot of
medical resources. This paper explores an effective algorithm for automatic
classifications of multi-classes of heartbeat types based on ECG. Most neural
network based methods target the individual heartbeats, ignoring the secrets
embedded in the temporal sequence. And the ECG signal has temporal variation
and unique individual characteristics, which means that the same type of ECG
signal varies among patients under different physical conditions. A two-stream
architecture is used in this paper and presents an enhanced version of ECG
recognition based on this. The architecture achieves classification of holistic
ECG signal and individual heartbeat and incorporates identified and temporal
stream networks. Identified networks are used to extract features of individual
heartbeats, while temporal networks aim to extract temporal correlations
between heartbeats. Results on the MIT-BIH Arrhythmia Database demonstrate that
the proposed algorithm performs an accuracy of 99.38\%. In addition, the
proposed algorithm reaches an 88.07\% positive accuracy on massive data in real
life, showing that the proposed algorithm can efficiently categorize different
classes of heartbeat with high diagnostic performance.
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