Assessing the signal quality of electrocardiograms from varied acquisition sources: A generic machine learning pipeline for model generation

Volume: 130, Pages: 104164 - 104164
Published: Mar 1, 2021
Abstract
Long-term electrocardiogram monitoring comes at the expense of signal quality. During unconstrained movements, the electrocardiogram is often corrupted by motion artefacts, which can lead to inaccurate physiological information. In this situation, automated quality assessment methods are useful to increase the reliability of the measurements. A generic machine learning pipeline that generates classification models for electrocardiogram quality...
Paper Details
Title
Assessing the signal quality of electrocardiograms from varied acquisition sources: A generic machine learning pipeline for model generation
Published Date
Mar 1, 2021
Volume
130
Pages
104164 - 104164
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