Category: Doppler Assessment
Poster Session II
Umbilical artery doppler (UAD) is an important tool in deciding appropriate delivery timing in fetal growth restriction (FGR) cases. UAD flow demonstrating absent or reversed end diastolic flow is associated with stillbirth, but early abnormal UAD are not clearly predictive of poor outcomes. Machine learning (ML) is a useful tool in detecting nuances in blood flow data that may more accurately predict outcomes. The purpose of this study is to determine if UAD ML improves FGR prognostication.
Study Design:
UAD and clinical data were obtained from FGR affected pregnancies from the Iowa Intergenerational Health Knowledgebase containing data for pregnancies receiving prenatal care at a major midwestern academic medical center since 2009 (N >63000). UAD severity groups were determined (Normal, Elevated S/D [ > 95% percentile], Absent End Diastolic Flow [AEDF], and Reversed EDF [REDF]). The UAD images were optimized for ML analyses. Xception (Google) machine learning framework was used. Regression analyses were performed to identify important clinical covariates.
Results:
Birth weight decreased with severity of UAD category (p < 0.001). Gestational age at delivery was shown to decrease with increasing severity of IUGR as well (p < 0.001). In line with clinical practices, diagnosis to delivery time (DDT) increased from Normal to Absent End Diastolic Flow, and then decreased for Reversed End Diastolic Flow (P = 0.03). Preeclampsia was associated with the higher categories of UAD severity (P = 0.0007). Poor neonatal outcomes were not more severe for one group, but high in all categories, ranging from 64-82 percent (p = 0.4). Machine learning of the UAD alone (R2 = 0.84) was more associated with DDT than clinical variables alone (R2 = 0.24) and clinical variables with UAD categorization (R2 = 0.75)
Conclusion:
ML of UAD alone was more associated with the diagnosis to delivery time then other traditional prediction factors in FGR pregnancies. We conclude that ML of UAD images will add additional predictive power to FGR prognostication.
Olivia Peters, BS
Research Intern
University of Iowa
Iowa City, Iowa, United States
Donna A. Santillan, PhD
Associate Professor
University of Iowa
Iowa City, Iowa, United States
William Ray, PhD
Associate Professor
Nationwide Children's Hospital and Ohio State University
Columbus, Ohio, United States
Christopher Bartlett, PhD
Associate Professor
Nationwide Children's Hospital and Ohio State University
Columbus, Ohio, United States
Aaron Trask, PhD
Assistant Professor
Nationwide Children's Hospital and Ohio State University
Columbus, Ohio, United States
Mark K. Santillan, MD, PhD (he/him/his)
Associate Professor
University of Iowa
Iowa City, Iowa, United States