| Literature DB >> 34174944 |
Tianyuan Lu1,2, Andres Cardenas3, Patrice Perron4,5, Marie-France Hivert4,6,7, Luigi Bouchard5,8,9, Celia M T Greenwood10,11,12,13.
Abstract
BACKGROUND: Epigenome-wide association studies (EWAS) have provided opportunities to understand the role of epigenetic mechanisms in development and pathophysiology of many chronic diseases. However, an important limitation of conventional EWAS is that profiles of epigenetic variability are often obtained in samples of mixed cell types. Here, we aim to assess whether changes in cord blood DNA methylation (DNAm) associated with gestational diabetes mellitus (GDM) exposure and early childhood growth markers occur in a cell type-specific manner.Entities:
Keywords: Cell type specificity; DNA methylation; Early childhood growth; Epigenome-wide association study; Gestational diabetes mellitus
Mesh:
Substances:
Year: 2021 PMID: 34174944 PMCID: PMC8236204 DOI: 10.1186/s13148-021-01114-5
Source DB: PubMed Journal: Clin Epigenetics ISSN: 1868-7075 Impact factor: 6.551
Demographic and clinical characteristics of 275 Gen3G mother–child pairs included in this study
| Mean (SD)/ | |
|---|---|
| Mother | |
| Age (year) | 28.5 (4.2) |
| Height (cm) | 164.8 (6.4) |
| Weight (kg) | 69.3 (15.6) |
| Body mass index (BMI; kg/m2) | 25.5 (5.7) |
| Parity | |
| Being primiparous | 132 (48.0) |
| Gestational diabetes mellitus† | 23 (8.4) |
| Insulin therapy | 9 (3.3) |
| Dietary intervention | 14 (5.1) |
| Smoking (at 1st trimester) | |
| Currently smoking | 21 (7.6) |
| Child | |
| Gestational age at birth (week) | 39.5 (1.0) |
| Male | 150 (54.5) |
| Birthweight (kg) | 3.4 (0.4) |
| Height (cm) at age 3* | 96.9 (4.4) |
| Weight (kg) at age 3 | 15.2 (1.9) |
| BMI (kg/m2) at age 3* | 16.2 (1.6) |
| Estimated cord blood cell type proportions (%) | |
| B-cell | 9.5 (3.0) |
| CD4+ T-cell | 15.8 (5.3) |
| CD8+ T-cell | 12.6 (3.4) |
| Granulocyte | 39.9 (9.2) |
| Monocyte | 9.0 (2.6) |
| Natural killer cell | 2.0 (2.6) |
| Nucleated red blood cell | 11.2 (5.9) |
*Three (1.1%) children had missing data and were not included in DNAm-age 3 BMI z-score association tests
†Demographic and clinical characteristics with respect to maternal gestational diabetes mellitus are presented in Additional file 1: Supplementary Tables S1 and S2
Fig. 1Manhattan plots summarizing epigenome-wide CpG methylation associated with gestational diabetes mellitus. (a–g) Cell type-specific differentially methylated CpG loci are indicated for seven cell types. Results obtained from standard EWAS adjusting for estimated cell type proportions are summarized in (h). CpG loci are aligned on the x-axis according to genomic coordinate and are colored by chromosome. The y-axis represents − log10 (p value). Red dashed lines denote Bonferroni-corrected genome-wide significance threshold (p value < 6.3 10–8)
Fig. 2Manhattan plots summarizing epigenome-wide CpG methylation associated with 3-year-old BMI z-score. (a–g) Cell type-specific differentially methylated CpG loci are indicated for seven cell types. Results obtained from standard EWAS adjusting for estimated cell type proportions are summarized in (h). CpG loci are aligned on the x-axis according to genomic coordinate and are colored by chromosome. The y-axis represents − log10 (p value). Red dashed lines denote Bonferroni-corrected genome-wide significance threshold (p value < 6.3 10–8)
Fig. 3Quantile–Quantile plots of p values in epigenome-wide permutation tests. Ten permutations for association tests for (a) gestational diabetes mellitus and (b) 3-year-old BMI z-score were performed respectively. Distributions of p values obtained in these permutations are compared to those (red dots) obtained in the original analysis of cell type-specific differential methylation. All significant CpG loci associated with gestational diabetes mellitus (FDR < 0.05) reside on the right side of the curve after inflexion. (c) Association between 3-year-old BMI z-score and methylation level at cg12586150 in SERPINB1. Solid lines indicate predicted effects; Dotted lines delineate 95% confidence intervals. For visualization, predictions were based on median maternal age, non-smoker, no parity, median gestational age, and child being female. Cell type proportions of other six cell types were set to