利用心电周期段识别儿童先天性心脏病

Yunmei Du, Canhui Huang, Shuai Huang, Huiying Liang
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引用次数: 0

摘要

既往研究结果显示,心电图对儿童冠心病的检出率为76.43%。虽然该结果优于传统的冠心病筛查方法,但若要在临床上推广,其敏感性仍有待提高。本研究在以往心电图记录数据的基础上,选择较有代表性的心周期段来识别冠心病,以达到更好的筛查效果。首先,从每位患者的心电记录中提取较好的心动周期段数据;最终的数据集包含72626例患者,每个患者有9导联心电图段,持续时间约为1秒。然后,我们使用数据集中的62626个样本训练RoR网络来识别潜在的冠心病患者。当对10000名患者进行独立测试时,该网络模型的敏感性、特异性和准确性分别为0.93、86.3%、85.7%和85.7%。由此可见,在保证更好特异性的基础上,提取更多有效的心周期片段可以显著提高冠心病筛查的敏感性,从而发现更多潜在的先天性心脏病患者。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Recognition of Child Congenital Heart Disease Using Cardiac Cycle Segment of Electrocardiogram
The results of previous studies showed that ECG could detect CHD in children with a detection rate of 76.43%. Although this result is better than the traditional CHD screening method, the sensitivity still needs to be improved if it is to be popularized clinically. Based on the previous ECG recording data, this study selects the more representative cardiac cycle segments to identify CHD, in order to achieve better screening effect. Firstly, better cardiac cycle segment data were extracted from ECG records of each patient. The final data set contains 72626 patients and each patient has a 9-lead ECG segment with duration of about one second. Then we trained a RoR network to identify the underlying patients with CHD using 62626 samples in the dataset. When tested on an independent set of 10000 patients, the network model yielded values for the sensitivity, specificity, and accuracy of 0.93, 86.3%, 85.7%, and 85.7% respectively. It can be seen that extracting more effective cardiac cycle fragments can significantly improve the sensitivity of CHD screening on the basis of ensuring better specificity, so as to find more potential patients with congenital heart disease.
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