| Literature DB >> 35091363 |
Henrique De Melo Ribeiro1, Ahran Arnold2, James P Howard2, Matthew J Shun-Shin2, Ying Zhang3, Darrel P Francis2, Phang B Lim2, Zachary Whinnett2, Massoud Zolgharni4.
Abstract
Continuous ambulatory cardiac monitoring plays a critical role in early detection of abnormality in at-risk patients, thereby increasing the chance of early intervention. In this study, we present an automated ECG classification approach for distinguishing between healthy heartbeats and pathological rhythms. The proposed lightweight solution uses quantized one-dimensional deep convolutional neural networks and is ideal for real-time continuous monitoring of cardiac rhythm, capable of providing one output prediction per second. Raw ECG data is used as the input to the classifier, eliminating the need for complex data preprocessing on low-powered wearable devices. In contrast to many compute-intensive approaches, the data analysis can be carried out locally on edge devices, providing privacy and portability. The proposed lightweight solution is accurate (sensitivity of 98.5% and specificity of 99.8%), and implemented on a smartphone, it is energy-efficient and fast, requiring 5.85 mJ and 7.65 ms per prediction, respectively.Entities:
Keywords: Arrhythmia; Continuous monitoring; Deep learning; ECG; Heart disease
Year: 2022 PMID: 35091363 DOI: 10.1016/j.compbiomed.2022.105249
Source DB: PubMed Journal: Comput Biol Med ISSN: 0010-4825 Impact factor: 4.589