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. [Figure not available: see fulltext.].
CITATION STYLE
Ding, Z., Wang, G., Yang, H., Zhang, P., Fu, D., Yang, Z., … He, R. (2022). A community effort to assess and improve computerized interpretation of 12-lead resting electrocardiogram. Medical and Biological Engineering and Computing, 60(1), 33–45. https://doi.org/10.1007/s11517-021-02420-z
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