A community effort to assess and improve computerized interpretation of 12-lead resting electrocardiogram

Med Biol Eng Comput. 2022 Jan;60(1):33-45. doi: 10.1007/s11517-021-02420-z. Epub 2021 Oct 22.

Abstract

Computerized interpretation of electrocardiogram plays an important role in daily cardiovascular healthcare. However, inaccurate interpretations lead to misdiagnoses and delay proper treatments. In this work, we built a high-quality Chinese 12-lead resting electrocardiogram dataset with 15,357 records, and called for a community effort to improve the performances of CIE through the China ECG AI Contest 2019. This dataset covers most types of ECG interpretations, including the normal type, 8 common abnormal types, and the other type which includes both uncommon abnormal and noise signals. Based on the Contest, we systematically assessed and analyzed a set of top-performing methods, most of which are deep neural networks, with both their commonalities and characteristics. This study establishes the benchmarks for computerized interpretation of 12-lead resting electrocardiogram and provides insights for the development of new methods. Graphical Abstract A community effort to assess and improve computerized interpretation of 12-lead resting electrocardiogram.

Keywords: Computersized interpretation of electrocardiogram; Deep neural networks; Electrocardiogram; Model assessment.

MeSH terms

  • Diagnostic Errors
  • Electrocardiography*
  • Humans
  • Neural Networks, Computer*
  • Rest