Interpretable Tsetlin Machine-based Premature Ventricular Contraction
Identification
- URL: http://arxiv.org/abs/2301.10181v1
- Date: Fri, 20 Jan 2023 09:28:14 GMT
- Title: Interpretable Tsetlin Machine-based Premature Ventricular Contraction
Identification
- Authors: Jinbao Zhang, Xuan Zhang, Lei Jiao, Ole-Christoffer Granmo, Yongjun
Qian, Fan Pan
- Abstract summary: We develop a Tsetlin machine (TM) based architecture for premature ventricular contraction (PVC) identification by analysing long-term ECG signals.
Our numerical results demonstrate that TM provides comparable performance with convolutional neural networks (CNNs) on the MIT-BIH database.
This study paves the way for machine learning (ML) for ECG analysis in clinical practice.
- Score: 10.929778688942825
- License: http://creativecommons.org/licenses/by-nc-sa/4.0/
- Abstract: Neural network-based models have found wide use in automatic long-term
electrocardiogram (ECG) analysis. However, such black box models are inadequate
for analysing physiological signals where credibility and interpretability are
crucial. Indeed, how to make ECG analysis transparent is still an open problem.
In this study, we develop a Tsetlin machine (TM) based architecture for
premature ventricular contraction (PVC) identification by analysing long-term
ECG signals. The architecture is transparent by describing patterns directly
with logical AND rules. To validate the accuracy of our approach, we compare
the TM performance with those of convolutional neural networks (CNNs). Our
numerical results demonstrate that TM provides comparable performance with CNNs
on the MIT-BIH database. To validate interpretability, we provide explanatory
diagrams that show how TM makes the PVC identification from confirming and
invalidating patterns. We argue that these are compatible with medical
knowledge so that they can be readily understood and verified by a medical
doctor. Accordingly, we believe this study paves the way for machine learning
(ML) for ECG analysis in clinical practice.
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