| Literature DB >> 36253871 |
Jonathan Higham1, Lyndsay Kerr1, Qian Zhang2,3, Rosie M Walker4,5, Sarah E Harris6, David M Howard7,8, Emma L Hawkins8, Anca-Larisa Sandu9, J Douglas Steele10, Gordon D Waiter9, Alison D Murray9, Kathryn L Evans4, Andrew M McIntosh8, Peter M Visscher2, Ian J Deary6, Simon R Cox6, Duncan Sproul11,12.
Abstract
BACKGROUND: DNA methylation is an epigenetic mark associated with the repression of gene promoters. Its pattern in the genome is disrupted with age and these changes can be used to statistically predict age with epigenetic clocks. Altered rates of aging inferred from these clocks are observed in human disease. However, the molecular mechanisms underpinning age-associated DNA methylation changes remain unknown. Local DNA sequence can program steady-state DNA methylation levels, but how it influences age-associated methylation changes is unknown.Entities:
Mesh:
Year: 2022 PMID: 36253871 PMCID: PMC9575273 DOI: 10.1186/s13059-022-02787-8
Source DB: PubMed Journal: Genome Biol ISSN: 1474-7596 Impact factor: 17.906
Demographics of LBC participants used in this study. The mean age in years at each measurement are indicated along with the range. The number of observations at each measurement is also indicated. In total, 351 individuals had data for all 4 measurements and 249 for three of the measurements
| 1st measurement | 2nd measurement | 3rd measurement | 4th measurement | |
|---|---|---|---|---|
| Mean age (min/max) | 69.6 (67.7, 71,3) | 72.6 (71.0, 74.2) | 76.3 (74.7, 77.7) | 79.3 (78.0, 80.9) |
| No. females | 265 | 271 | 259 | 224 |
| No. males | 295 | 307 | 292 | 238 |
Fig. 1Longitudinal methylation trajectories reveal changes at individual epigenetic clock loci. a ELOLV2 shows increases in methylation across individuals. Plots of methylation levels at ELOVL2 CpG cg16867657 showing data from one individual in the cohort and their methylation trajectory (left and middle panel, red points and line), and methylation trajectories for all individuals (right panel, gray lines). In the right panel, the bold line indicates the mean methylation trajectory, and the dashed lines are the 95% confidence intervals. b Examples of methylation trajectories observed for epigenetic clock CpGs. Individual methylation trajectories are indicated by gray lines. The mean methylation trajectory is indicated by the bold line and the dashed lines are the 95% confidence intervals. c Methylation trajectories recapitulate the predicted behavior of epigenetic clock CpGs. Boxplots showing the calculated mean rates of change for CpGs that are part of the Hannum or Horvath epigenetic clocks split by their reported direction of change. P-values were calculated using T-test. Lines = median; Box = 25th–75th percentile; whiskers = 1.5 × interquartile range from box; n indicates the number of CpGs in each group
Fig. 2A subset of CpGs gain methylation in later life. a A subset of CpGs gain methylation in LBC. Histogram of the mean methylation trajectories for the 182,760 CpGs whose slope significantly deviates from 0 (T-test, Bonferroni-corrected p < 0.01). b Example of a rapid gain CpG. Individual methylation trajectories are indicated by gray lines. The mean methylation trajectory is indicated by the bold line and the dashed lines are the 95% confidence intervals. c Rapid gain CpGs are depleted from CGIs and enriched in gene bodies and intergenic regions. Barplot showing the % fold change observed for rapid gain CpGs in different genome annotations versus the background of all analyzed CpGs. P-values are from 2-sided Fisher’s exact tests. PMDs = partially methylated domains; HMDs = highly methylated domains. d Rapid gain CpGs are enriched in transcription and heterochromatin states in GM12878 cells. Barplot showing the % fold change observed for rapid gain CpGs in different chromatin states in GM12878 cells versus the background of all analyzed CpGs. Shown are significant P-values from 1-sided Fisher’s exact tests
Fig. 3Local SNPs associate with altered CpG methylation trajectories. a Examples of slope-QTLs. Spaghetti plots and boxplots of 3 slope-QTL CpG-SNP pairs. Left, spaghetti plots of individual methylation trajectories separated by genotype. Thin lines represent individual methylation trajectories and thick lines the mean methylation trajectory for that genotype. Right, boxplots of slope separated by genotype. Lines = median; Box = 25th–75th percentile; whiskers = 1.5 × interquartile range from box. SNP genotypes are annotated relative to the forward strand. b Slope-QTL SNPs are located in close proximity to the CpGs they affect. Histogram of the distances between slope-QTL lead SNPs and the CpGs they are paired with. c Nearby CpGs are also affected by slope-QTL SNPs. Line plot of the effect sizes calculated for CpGs within − / + 1 Kb of slope-QTL CpGs using each slope-QTL’s lead SNPs. Plotted is the mean normalized effect size in 50 bp Windows. Bold lines show the mean effect size and dashed lines and shaded area show the 95% confidence intervals. The data are shown in red and the results of 1000 random permutations shown in black
Fig. 4Local CpG density affects age-associated DNA methylation trajectories. a Slope-QTL CpGs are enriched in intergenic regions. Barplot showing the % fold change observed for slope-QTL CpGs in different genome annotations versus the background of all analyzed CpGs. P-values are from 2-sided Fisher’s exact tests. b Slope-QTL CpGs are enriched in enhancer and heterochromatin states in GM12878 cells. Barplot showing the % fold change observed for slope-QTL CpGs in different chromatin states in GM12878 cells versus the background of all analyzed CpGs. Shown are significant P-values from 1-sided Fisher’s exact tests. c Slope-QTL CpGs are found in regions of low CpG density. Line plot showing the mean CpG density around slope-QTL CpGs in different window sizes. Red shows slope-QTL CpGs and black shows all other CpGs assayed. d Slope-QTL SNPs are found close to CpG sites. Histogram of the distances between slope-QTL SNPs and their nearest CpG site. Red shows the distribution for slope-QTL SNPs and gray shows all other SNPs assayed. e CpG density is a major determinant of variation in methylation trajectories with age. Boxplot showing mean methylation trajectories plotted against CpG density ± 300 bp from the CpG. The Spearman correlation, Rho, and p-value, T-test, for the association are given. For plotting, CpG density is binned into equally sized groups. Lines = median; Box = 25th–75th percentile; whiskers = 1.5 × interquartile range from box
Fig. 5Many age-associated changes in DNA methylation are specific to older individuals. a CpG density associates with variation in age-associated methylation changes in a second independent cohort. Boxplot showing estimated rates of change in DNA methylation from the 406 individuals aged > 65 in Generation Scotland cohort set 1 plotted against CpG density ± 300 bp from the CpG. The Spearman correlation, Rho, and p-value, T-test, for the association are given. For plotting, CpG density is binned into equally sized groups. Lines = median; Box = 25th–75th percentile; whiskers = 1.5 × interquartile range from box. b CpG density associates with changes in DNA methylation in younger individuals. Boxplot showing estimated rates of change in DNA methylation from the 4695 individuals aged ≤ 65 in Generation Scotland cohort set 1 plotted against CpG density ± 300 bp from the CpG. The Spearman correlation, Rho, and p-value, T-test, for the association are given. For plotting, CpG density is binned into equally sized groups. Lines = median; Box = 25th–75th percentile; whiskers = 1.5 × interquartile range from box
Fig. 6Local CpG density affects the trajectory of age-associated epigenetic changes. We propose that collaborative interactions between CpGs reinforce maintenance of methylation patterns in CpG dense regions (a). These interactions are weaker in CpG-poor regions leading to the degradation of methylation patterns with time and emergence of variation. These interactions can also be altered by SNPs leading to differences in epigenetic trajectories between individuals who inherit different alleles (b)