| Literature DB >> 33573911 |
Camilo Espinosa1, Martin Becker1, Ivana Marić2, Ronald J Wong2, Gary M Shaw2, Brice Gaudilliere3, Nima Aghaeepour4, David K Stevenson5.
Abstract
A healthy pregnancy depends on complex interrelated biological adaptations involving placentation, maternal immune responses, and hormonal homeostasis. Recent advances in high-throughput technologies have provided access to multiomics biological data that, combined with clinical and social data, can provide a deeper understanding of normal and abnormal pregnancies. Integration of these heterogeneous datasets using state-of-the-art machine-learning methods can enable the prediction of short- and long-term health trajectories for a mother and offspring and the development of treatments to prevent or minimize complications. We review advanced machine-learning methods that could: provide deeper biological insights into a pregnancy not yet unveiled by current methodologies; clarify the etiologies and heterogeneity of pathologies that affect a pregnancy; and suggest the best approaches to address disparities in outcomes affecting vulnerable populations.Entities:
Keywords: machine learning; maternal health; multimodal learning; multiomics; multitask learning; pregnancy; systems biology
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Year: 2021 PMID: 33573911 PMCID: PMC8324504 DOI: 10.1016/j.molmed.2021.01.007
Source DB: PubMed Journal: Trends Mol Med ISSN: 1471-4914 Impact factor: 15.272