2024
DOI: 10.3390/a17080360
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Detection of Subtle ECG Changes Despite Superimposed Artifacts by Different Machine Learning Algorithms

Matthias Noitz,
Christoph Mörtl,
Carl Böck
et al.

Abstract: Analyzing electrocardiographic (ECG) signals is crucial for evaluating heart function and diagnosing cardiac pathology. Traditional methods for detecting ECG changes often rely on offline analysis or subjective visual inspection, which may overlook subtle variations, particularly in the case of artifacts. In this theoretical, proof-of-concept study, we investigated the potential of five different machine learning algorithms [random forests (RFs), gradient boosting methods (GBMs), deep neural networks (DNNs), a… Show more

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