4.5 Review

Changing Perspectives of Electronic Fetal Monitoring

Journal

REPRODUCTIVE SCIENCES
Volume 29, Issue 6, Pages 1874-1894

Publisher

SPRINGER HEIDELBERG
DOI: 10.1007/s43032-021-00749-2

Keywords

Electronic fetal monitoring; Screening tests; Artificial intelligence; Computerized electronic fetal monitoring; Fetal Reserve Index

Ask authors/readers for more resources

Traditional electronic fetal monitoring (EFM) technology has failed to effectively prevent neonatal encephalopathy and cerebral palsy due to misunderstanding of screening and diagnostic tests, subjectivity and variability in interpretation, failure to address the pathophysiology of fetal compromise, and a narrow focus. New approaches such as the Fetal Reserve Index (FRI) are being developed to improve accuracy and early detection, while future artificial intelligence and machine learning advancements may further enhance clinical decision making during labor.
The delivery of healthy babies is the primary goal of obstetric care. Many technologies have been developed to reduce both maternal and fetal risks for poor outcomes. For 50 years, electronic fetal monitoring (EFM) has been used extensively in labor attempting to prevent a large proportion of neonatal encephalopathy and cerebral palsy. However, even key opinion leaders admit that EFM has mostly failed to achieve this goal. We believe this situation emanates from a fundamental misunderstanding of differences between screening and diagnostic tests, considerable subjectivity and inter-observer variability in EFM interpretation, failure to address the pathophysiology of fetal compromise, and a tunnel vision focus. To address these suboptimal results, several iterations of increasingly sophisticated analyses have intended to improve the situation. We believe that part of the continuing problem is that the focus of EFM has been too narrow ignoring important contextual issues such as maternal, fetal, and obstetrical risk factors, and increased uterine contraction frequency. All of these can significantly impact the application of EFM to intrapartum care. We have recently developed a new clinical approach, the Fetal Reserve Index (FRI), contextualizing EFM interpretation. Our data suggest the FRI is capable of providing higher accuracy and earlier detection of emerging fetal compromise. Over time, artificial intelligence/machine learning approaches will likely improve measurements and interpretation of FHR characteristics and other relevant variables. Such future developments will allow us to develop more comprehensive models that increase the interpretability and utility of interfaces for clinical decision making during the intrapartum period.

Authors

I am an author on this paper
Click your name to claim this paper and add it to your profile.

Reviews

Primary Rating

4.5
Not enough ratings

Secondary Ratings

Novelty
-
Significance
-
Scientific rigor
-
Rate this paper

Recommended

No Data Available
No Data Available