2020
DOI: 10.1093/ehjci/ehz872.074
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P203 Unsupervised one-class classification and anomaly detection of stress echocardiograms with deep denoising spatio-temporal autoencoders

Abstract: Introduction The combination of medical knowledge, experience and AI algorithms have supported the advancement of patient care and the lowering of healthcare costs. Machine and deep learning methods enable the extraction of meaningful patterns that remain beyond human perception. Numerous computer-aided diagnosis and detection systems have been developed to assist in the assessment of stress echocardiograms. However, issues are encountered when facing imbalanced, limited, and unannotated data… Show more

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“…Contrary to class-specific algorithms, one-class classification (OCC) models require only the positive class during training with much fewer samples [14,15]. However, despite their feasibility, only the studies [16,17] have used OCC models for echocardiographic data.…”
Section: Introductionmentioning
confidence: 99%
“…Contrary to class-specific algorithms, one-class classification (OCC) models require only the positive class during training with much fewer samples [14,15]. However, despite their feasibility, only the studies [16,17] have used OCC models for echocardiographic data.…”
Section: Introductionmentioning
confidence: 99%