Publication | Closed Access
ECGLens
26
Citations
29
References
2018
Year
Unknown Venue
Single Ecg ObservationLarge-scale Ecg DataEngineeringMachine LearningData ScienceData MiningPattern RecognitionElectrophysiological EvaluationBiosignal ProcessingBiomedical ComputingKnowledge DiscoveryWearable TechnologyPatient MonitoringRaw Ecg DataHealth MonitoringComputer ScienceDeep LearningHealth Informatics
The Electrocardiogram (ECG) is commonly used to detect arrhythmias. Traditionally, a single ECG observation is used for diagnosis, making it difficult to detect irregular arrhythmias. Recent technology developments, however, have made it cost-effective to collect large amounts of raw ECG data over time. This promises to improve diagnosis accuracy, but the large data volume presents new challenges for cardiologists. This paper introduces ECGLens, an interactive system for arrhythmia detection and analysis using large-scale ECG data. Our system integrates an automatic heartbeat classification algorithm based on convolutional neural network, an outlier detection algorithm, and a set of rich interaction techniques. We also introduce A-glyph, a novel glyph designed to improve the readability and comparison of ECG signals. We report results from a comprehensive user study showing that A-glyph improves the efficiency in arrhythmia detection, and demonstrate the effectiveness of ECGLens in arrhythmia detection through two expert interviews.
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