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Recognition of Child Congenital Heart Disease using Electrocardiogram based on Residual of Residual Network

机译:基于残余网络残余的心电图识别儿童先天性心脏病

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Congenital heart disease seriously affects children's physical and mental health. Early screening is of great significance. Inexpensive, noninvasive and painless ECG combined with artificial intelligence technology can show new information about heart disease and help CHD screening. Using child ECG from 68969 patients at the GZFEZX, we trained a deep neural network model with two-level residual to identify CHD patients based on ECG. Experiments show that the two-level residual structure has better performance than the traditional ResNet. In the independent test set, the accuracy of the model is 92.30%, the sensitivity is 74.73%, and the specificity is 94.07%. The performance exceeds other individual CHD screening indicators, which shows that ECG is of great value for CHD identification and can be considered to be included in the screening process.
机译:先天性心脏病严重影响儿童的身心健康。早期筛查具有重要意义。廉价,非侵入性和无痛的心电图与人工智能技术相结合,可以显示有关心脏病的新信息,并帮助CHD筛选。从Gzfezx的68969名患者使用Child ECG,我们培训了一个深神经网络模型,具有两级残留,以确定基于ECG的CHD患者。实验表明,两级残余结构的性能比传统的reset更好。在独立的测试组中,模型的准确性为92.30%,灵敏度为74.73%,特异性为94.07%。性能超过其他单独的CHD筛选指标,表明ECG对于CHD识别具有很大的价值,并且可以被认为包括在筛选过程中。

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