3.8 Article

Artificial intelligence to detect abnormal heart rhythm from scanned electrocardiogram tracings

Journal

JOURNAL OF ARRHYTHMIA
Volume 38, Issue 3, Pages 425-431

Publisher

WILEY
DOI: 10.1002/joa3.12707

Keywords

deep learning; ECG; screening

Funding

  1. Engineering and Physical Sciences Research Council Studentship, UK [2110275, EP/R513271/1]
  2. National Key Research and Development Program of China, China [2018YFC1312500, 2018YFC1312502]
  3. National Natural Science Foundation, China [81870254]

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A rapid, inexpensive, and accurate means to detect abnormal ECGs using artificial intelligence (AI) has been developed. The use of AI enables mass automated review of ECGs in community settings, flagging abnormal ones for detailed clinical review by healthcare professionals.
Background: Electrocardiogram (ECG) interpretation is an integral part of the clinical ECG workflow; however, this process is often time-consuming and labor-intensive. We aim to develop a rapid, inexpensive means to detect abnormal ECGs using artificial intelligence (AI) from scanned ECG printouts. Methods: The study included 1172 12-lead ECG scans performed in 1172 individuals from a community in Guangzhou, China; 878 (74.9%) were diagnosed with sinus rhythm, and the remaining 294 (25.1%) with abnormal rhythms. A deep learning model consisting of a convolutional neural network based on InceptionV3 and a fully connected layer followed by a GEV activation was trained to classify scanned tracings as either normal or abnormal. Results: In a hold-out testing set, the model achieved a area under curve (AUC), sensitivity, specificity, PPV, and NPV of 0.932 (95% confidence interval [CI]: 0.890, 0.976), 0.816 (95% CI: 0.657, 0.923), 0.993 (95% CI: 0.959, 1.0), 0.969 (95% CI: 0.838, 0.999), and 0.950 (95% CI: 0.90, 0.980) respectively, when using a probability threshold of 0.5. When compared with a physiological expert, these results show comparable performance with a statistically significant increase in specificity and a non-significant decrease in sensitivity at the 95% level. Conclusions: We have developed a rapid, inexpensive, accurate means to detect abnormal ECGs using AI. Easy and accurate identification of such abnormal ECGs could allow the mass automated review of ECGs in community settings where abnormal ones could be flagged using AI for detailed clinical review by healthcare professionals.

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