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Multi-stage SVM approach for cardiac arrhythmias detection in short single-lead ECG recorded by a wearable device

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    0495091 - ÚPT 2019 RIV GB eng J - Journal Article
    Smíšek, Radovan - Hejč, J. - Ronzhina, M. - Němcová, A. - Maršánová, L. - Kolářová, J. - Smítal, L. - Vítek, M.
    Multi-stage SVM approach for cardiac arrhythmias detection in short single-lead ECG recorded by a wearable device.
    Physiological Measurement. Roč. 39, č. 9 (2018), č. článku 094003. ISSN 0967-3334. E-ISSN 1361-6579
    Institutional support: RVO:68081731
    Keywords : ECG * atrial fibrillation * beat classification * feature selection * SVM * genetic algorithm * SNR estimation
    OECD category: Medical engineering
    Impact factor: 2.246, year: 2018

    Objective: Use of wearable ECG devices for arrhythmia screening is limited due to poor signal quality, small number of leads and short records, leading to incorrect recognition of pathological events. This paper introduces a novel approach to classification (normal/'N', atrial fibrillation/'A', other/'O', and noisy/'P') of short single-lead ECGs recorded by wearable devices. Approach: Various rhythm and morphology features are derived from the separate beats ('local' features) as well as the entire ECGs ('global' features) to represent short-term events and general trends respectively. Various types of atrial and ventricular activity, heart beats and, finally, ECG records are then recognised by a multi-level approach combining a support vector machine (SVM), decision tree and threshold-based rules. Main results: The proposed features are suitable for the recognition of 'A'. The method is robust due to the noise estimation involved. A combination of radial and linear SVMs ensures both high predictive performance and effective generalisation. Cost-sensitive learning, genetic algorithm feature selection and thresholding improve overall performance. The generalisation ability and reliability of this approach are high, as verified by cross-validation on a training set and by blind testing, with only a slight decrease of overall F1-measure, from 0.84 on training to 0.81 on the tested dataset. 'O' recognition seems to be the most difficult (test F1-measures: 0.901'N', 0.81/'A' and 0.721'O') due to high inter-patient variability and similarity with 'N'. Significance: These study results contribute to multidisciplinary areas, focusing on creation of robust and reliable cardiac monitoring systems in order to improve diagnosis, reduce unnecessary time-consuming expert ECG scoring and, consequently, ensure timely and effective treatment.
    Permanent Link: http://hdl.handle.net/11104/0288111

     
     
Number of the records: 1  

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