胎儿心电图和深度学习在先天性心脏病产前检测中的应用

R. Vullings
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引用次数: 8

摘要

先天性心脏病(CHD)是怀孕期间可能发生的主要问题之一。每年有30万婴儿死于妊娠期或婴儿期冠心病。早期发现冠心病可以降低死亡率和发病率,但目前冠心病筛查技术的检出率相对较低(<60%),阻碍了早期发现冠心病的发展。这种检出率可以通过补充超声心动图筛查与评估胎儿心电图(ECG)来提高。在这项研究中,近400名胎儿的胎儿心电图是无创测量的,电极放在母体腹部,其中30%已知有冠心病。胎儿心电图测量经过处理得到三维胎儿矢量心动图。训练深度神经网络将胎儿矢量图分类为健康胎儿或冠心病。该网络在大约100名患者的测试集上进行了评估,显示出76%的冠心病检测准确率。因此,无创胎儿心电图在诊断冠心病方面显示出明确的潜力,应考虑作为超声心动图的补充技术。
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Fetal Electrocardiography and Deep Learning for Prenatal Detection of Congenital Heart Disease
Congenital heart disease (CHD) is one of the main problems that can occur during pregnancy. Annually, 300.000 babies die during pregnancy or infancy because of CHD. Early detection of CHD leads to reduced mortality and morbidity, but is hampered by the relatively low detection rates (i.e. <60%) of current CHD screening technology. This detection rate could be improved by complementing echocardiographic screening with assessment of the fetal electrocardiogram (ECG).In this study, the fetal ECG was measured non-invasively, with electrodes on the maternal abdomen, in almost 400 fetuses, 30% of which had known CHD. The fetal ECG measurements were processed to yield a 3-dimensional fetal vectorcardiogram. A deep neural network was trained to classify this fetal vectorcardiogram as either originating from a healthy fetus or CHD. The network was evaluated on a test set of about 100 patients, showing a CHD detection accuracy of 76%. Non-invasive fetal electrocardiography therefore shows clear potential in diagnosis of CHD and should be considered as supplementary technology next to echocardiography.
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