학술논문

Similarity network fusion to identify phenotypes of small-for-gestational-age fetuses
Document Type
article
Source
iScience, Vol 26, Iss 9, Pp 107620- (2023)
Subject
Public health
Pregnancy
Machine learning
Science
Language
English
ISSN
2589-0042
Abstract
Summary: Fetal growth restriction (FGR) affects 5–10% of pregnancies, is the largest contributor to fetal death, and can have long-term consequences for the child. Implementation of a standard clinical classification system is hampered by the multiphenotypic spectrum of small fetuses with substantial differences in perinatal risks. Machine learning and multiomics data can potentially revolutionize clinical decision-making in FGR by identifying new phenotypes. Herein, we describe a cluster analysis of FGR based on an unbiased machine-learning method. Our results confirm the existence of two subtypes of human FGR with distinct molecular and clinical features based on multiomic analysis. In addition, we demonstrated that clusters generated by machine learning significantly outperform single data subtype analysis and biologically support the current clinical classification in predicting adverse maternal and neonatal outcomes. Our approach can aid in the refinement of clinical classification systems for FGR supported by molecular and clinical signatures.