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LabelECG: A Web-based Tool for Distributed Electrocardiogram Annotation

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TLDR
LabelECG as mentioned in this paper is a web-based tool for viewing and annotating ECG data, which is able to distribute large cohorts of ECGs to dozens of technicians and physicians, who can simultaneously make annotations through web-browsers on PCs, tablets and cell phones.
Abstract
Electrocardiography plays an essential role in diagnosing and screening cardiovascular diseases in daily healthcare. Deep neural networks have shown the potentials to improve the accuracies of arrhythmia detection based on electrocardiograms (ECGs). However, more ECG records with ground truth are needed to promote the development and progression of deep learning techniques in automatic ECG analysis. Here we propose a web-based tool for ECG viewing and annotating, LabelECG. With the facilitation of unified data management, LabelECG is able to distribute large cohorts of ECGs to dozens of technicians and physicians, who can simultaneously make annotations through web-browsers on PCs, tablets and cell phones. Along with the doctors from four hospitals in China, we applied LabelECG to support the annotations of about 15,000 12-lead resting ECG records in three months. These annotated ECGs have successfully supported the First China ECG intelligent Competition. La-belECG will be freely accessible on the Internet to support similar researches, and will also be upgraded through future works.

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Proceedings Article

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A systematic review and Meta-data analysis on the applications of Deep Learning in Electrocardiogram

TL;DR: In this article , the authors conducted a systematic literature review on the applications of deep learning in ECG including biometric ECG based systems and presented a new taxonomy of the domains of application of the deep learning on ECG.
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ECG Data Visualization: Combining the power of Grafana and InfluxDB

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PhysioTag: An Open-Source Platform for Collaborative Annotation of Physiological Waveforms

TL;DR: In this paper , a flexible, generalizable, web-based framework was developed to enable multiple users to create and share annotations on multi-channel physiological waveforms, including ventricular tachycardia (VT) alarms from multiple commercial monitors.
References
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Advanced Methods And Tools for ECG Data Analysis

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TL;DR: A deep learning algorithm applied to the electrocardiogram can detect abnormally low contractile function of the heart, opening up the possibility for a simple screening tool for this condition.
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Artificial Intelligence in Precision Cardiovascular Medicine

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