4.6 Article

Deep learning identifies cardiac coupling between mother and fetus during gestation

期刊

出版社

FRONTIERS MEDIA SA
DOI: 10.3389/fcvm.2022.926965

关键词

fetal cardiology; maternal-fetal coupling; phase coherence; electrocardiography; deep learning

资金

  1. Healthcare Engineering Innovation Center (HEIC) [8474000132]
  2. Khalifa University [8474000174, CIRA 2019-023]

向作者/读者索取更多资源

This study proposes a novel artificial intelligence approach, deep coherence, which uses non-invasive electrocardiography to explain the relationship between maternal and fetal heartbeats during pregnancy. The performance of this approach was validated using a deep learning tool, achieving high accuracy in identifying coupling scenarios. The interpretability of deep learning was significant in explaining synchronization mechanisms between the maternal and fetal heartbeats.
In the last two decades, stillbirth has caused around 2 million fetal deaths worldwide. Although current ultrasound tools are reliably used for the assessment of fetal growth during pregnancy, it still raises safety issues on the fetus, requires skilled providers, and has economic concerns in less developed countries. Here, we propose deep coherence, a novel artificial intelligence (AI) approach that relies on 1 min non-invasive electrocardiography (ECG) to explain the association between maternal and fetal heartbeats during pregnancy. We validated the performance of this approach using a trained deep learning tool on a total of 941 one minute maternal-fetal R-peaks segments collected from 172 pregnant women (20-40 weeks). The high accuracy achieved by the tool (90%) in identifying coupling scenarios demonstrated the potential of using AI as a monitoring tool for frequent evaluation of fetal development. The interpretability of deep learning was significant in explaining synchronization mechanisms between the maternal and fetal heartbeats. This study could potentially pave the way toward the integration of automated deep learning tools in clinical practice to provide timely and continuous fetal monitoring while reducing triage, side-effects, and costs associated with current clinical devices.

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