Maternal Serum Metabolomics in Mid-Pregnancy Identifies Lipid Pathways as a Key Link to Offspring Obesity in Early Childhood.
Ellen C FrancisKaterina J KechrisRandi K JohnsonShristi RawalWimal PathmasiriSusan J SumnerXiuxia DuThomas JanssonDana DabeleaSusan J SumnerWei PerngPublished in: International journal of molecular sciences (2024)
Maternal metabolism during pregnancy shapes offspring health via in utero programming. In the Healthy Start study, we identified five subgroups of pregnant women based on conventional metabolic biomarkers: Reference ( n = 360); High HDL-C ( n = 289); Dyslipidemic-High TG ( n = 149); Dyslipidemic-High FFA ( n = 180); Insulin Resistant (IR)-Hyperglycemic ( n = 87). These subgroups not only captured metabolic heterogeneity among pregnant participants but were also associated with offspring obesity in early childhood, even among women without obesity or diabetes. Here, we utilize metabolomics data to enrich characterization of the metabolic subgroups and identify key compounds driving between-group differences. We analyzed fasting blood samples from 1065 pregnant women at 18 gestational weeks using untargeted metabolomics. We used weighted gene correlation network analysis (WGCNA) to derive a global network based on the Reference subgroup and characterized distinct metabolite modules representative of the different metabolomic profiles. We used the mummichog algorithm for pathway enrichment and identified key compounds that differed across the subgroups. Eight metabolite modules representing pathways such as the carnitine-acylcarnitine translocase system, fatty acid biosynthesis and activation, and glycerophospholipid metabolism were identified. A module that included 189 compounds related to DHA peroxidation, oxidative stress, and sex hormone biosynthesis was elevated in the Insulin Resistant-Hyperglycemic vs. the Reference subgroup. This module was positively correlated with total cholesterol (R:0.10; p -value < 0.0001) and free fatty acids (R:0.07; p -value < 0.05). Oxidative stress and inflammatory pathways may underlie insulin resistance during pregnancy, even below clinical diabetes thresholds. These findings highlight potential therapeutic targets and strategies for pregnancy risk stratification and reveal mechanisms underlying the developmental origins of metabolic disease risk.
Keyphrases
- insulin resistance
- pregnancy outcomes
- pregnant women
- type diabetes
- network analysis
- fatty acid
- high fat diet
- glycemic control
- oxidative stress
- mass spectrometry
- polycystic ovary syndrome
- high fat diet induced
- metabolic syndrome
- adipose tissue
- weight loss
- weight gain
- genome wide
- cardiovascular disease
- skeletal muscle
- blood glucose
- birth weight
- public health
- machine learning
- single cell
- healthcare
- mental health
- cross sectional
- preterm birth
- body mass index
- ischemia reperfusion injury
- climate change
- big data
- induced apoptosis
- electronic health record
- dna damage
- risk assessment
- deep learning
- magnetic resonance imaging
- diabetic rats
- computed tomography
- endoplasmic reticulum stress
- human health
- gas chromatography
- gestational age
- blood pressure
- randomized controlled trial
- heat shock