2020
DOI: 10.1016/s2589-7500(20)30107-2
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Automatic multilabel electrocardiogram diagnosis of heart rhythm or conduction abnormalities with deep learning: a cohort study

Abstract: Background Market-applicable concurrent electrocardiogram (ECG) diagnosis for multiple heart abnormalities that covers a wide range of arrhythmias, with better-than-human accuracy, has not yet been developed. We therefore aimed to engineer a deep learning approach for the automated multilabel diagnosis of heart rhythm or conduction abnormalities by real-time ECG analysis. MethodsWe used a dataset of ECGs (standard 10 s, 12-channel format) from adult patients (aged ≥18 years), with 21 distinct rhythm classes, i… Show more

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Cited by 129 publications
(70 citation statements)
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“…In an evaluation published in 2020, a CNN was developed for the multilabel diagnosis of 21 distinct heart rhythms based on the 12-lead ECG using a training and validation dataset of >80,000 ECGs from >70,000 patients 11 . The reference standard consisted of consensus labels by a committee of cardiologists.…”
Section: Fully Automated Interpretation Of Ecgsmentioning
confidence: 99%
“…In an evaluation published in 2020, a CNN was developed for the multilabel diagnosis of 21 distinct heart rhythms based on the 12-lead ECG using a training and validation dataset of >80,000 ECGs from >70,000 patients 11 . The reference standard consisted of consensus labels by a committee of cardiologists.…”
Section: Fully Automated Interpretation Of Ecgsmentioning
confidence: 99%
“…Recently, deep learning models have been applied to ECG data for various tasks including disease detection, annotation or localization, sleep staging, biometric human identification, denoising, and so on ( Hong et al., 2020 ). Deep neural networks have shown initial success in cardiac diagnosis from single-lead or multi-lead ECGs ( Chen et al, 2020 , Datta et al, 2017 , Hannun et al., 2019 , He et al., 2019 , Strodthoff et al., 2020 , Zhu et al., 2020 ). A deep learning model trained on a large single-lead ECG dataset with 91,232 ECG recordings shows superior performance than cardiologists for diagnosing 12 rhythm classes ( Hannun et al., 2019 ).…”
Section: Introductionmentioning
confidence: 99%
“…As for algorithms for multi-label classification (36), they can fall into problem transformation and algorithm adaption. With the development of neural networks, more studies (12,31,35,37) designed an adaptive algorithm for multi-label classification. However, algorithm adaption has a high demand for sufficient training data and effective parameter adjustment to reduce misdiagnosis for multi-labeled ECG.…”
Section: Discussionmentioning
confidence: 99%
“…However, the algorithms discussed earlier are mainly focused on processing single-lead ECG rather than the 12-lead ECG, which is commonly used in the clinical setting for providing more diagnostic information than a single-lead ECG on cardiac excitations (11). Also, it is still a challenge to auto-detect multitypes of cardiac diseases based on 12-lead ECG due to (i) similar morphological features of ECG among different types of diseases, such as between atrial fibrillation (AF) and premature atrial contraction (12); (ii) imbalanced ECG data for various heart diseases in some training datasets, which may result in excessive bias or over-fitting of the neural network for diagnosis; (iii) unequal recording length of clinical ECG recordings, which may result in loss of some essential signals in the process of preprocessing for training the neural network.…”
Section: Introductionmentioning
confidence: 99%