| Literature DB >> 31684967 |
Xizi Du1,2, Lin Yuan1, Mengping Wu1, Meichao Men3, Ruoxi He2, Leyuan Wang1, Shuangyan Wu1, Yang Xiang1, Xiangping Qu1, Huijun Liu1, Xiaoqun Qin1, Chengping Hu2, Ling Qin4, Chi Liu5.
Abstract
BACKGROUND: Chronic obstructive pulmonary disease (COPD) is a chronic lung inflammatory disease which has a close relationship with aging. Genome-wide analysis reveals that DNA methylation markers vary obviously with age. DNA methylation variations in peripheral blood have the potential to be biomarkers for COPD. However, the specific DNA methylation of aging-related genes in the peripheral blood of COPD patients remains largely unknown.Entities:
Keywords: Aging; Aging-related genes; COPD; DNA methylation
Mesh:
Substances:
Year: 2019 PMID: 31684967 PMCID: PMC6829949 DOI: 10.1186/s12931-019-1215-7
Source DB: PubMed Journal: Respir Res ISSN: 1465-9921
Summary of aging-related datasets and COPD-related datasets
| Data set | Sample type | Group | Gender |
|---|---|---|---|
| Aging-related dataset GSE58137 | Whole blood | 15–78 years of age (359) | Female/Male |
| Aging-related dataset GSE65219 | PBMC | 19–90 years of age (176) | Female/Male |
| Aging-related datasets GSE47728 | Whole blood | 44–87 years of age (228) | Female/Male |
| COPD-related dataset GSE56768 | Whole blood | COPD (49) / Control (31) | Female/Male |
| COPD-related dataset GSE42057 | PBMC | COPD (94) / Control (42) | Female/Male |
| COPD-related dataset GSE76705 | Whole blood | COPD (141) / Control (88) | Female/Male |
| COPD-related dataset GSE22148 | Inflammatory cells from induced sputum | Severe COPD (103) / Moderate COPD (71) | Female/Male |
Meta-analysis of 9 different expressed aging related genes in COPD group
| Gene symbol | Effect size (SMD) | 95% CI | |
|---|---|---|---|
| TGFB1 | − 3.85 | [−6.38, − 1.31] | 0.003 |
| TP53 | −2.66 | [−4.44, − 0.88] | 0.003 |
| MMP2 | −1.76 | [−2.96, −0.56] | 0.004 |
| AREG | −3.02 | [−5.25, −0.80] | 0.008 |
| E2F1 | −1.4 | [−2.51, −0.30] | 0.01 |
| HDAC1 | −3.3 | [−5.94, −0.67] | 0.01 |
| NUF2 | −2.62 | [−4.72, −0.52] | 0.01 |
| FOXO3 | −1.84 | [−3.34, −0.34] | 0.02 |
| ATG3 | −2.6 | [−4.89, −0.30] | 0.03 |
A p value < 0.05 was considered statistically significant
Demographic Characteristics of the COPD patients and controls
| Control | COPD | |||
|---|---|---|---|---|
| Number of subjects | 60 | 45 | ||
| Age | 55.26 ± 7.14 | 60.58 ± 6.61 | ||
| Smoking history (Yes/No) | 25/35 | 45 | ||
| FEV1 | 2.622 ± 0.1438 | 1.149 ± 0.1017* | ||
| FEV1%predicted | 92.47 ± 9.26 | 39.52 ± 18.11* | ||
| FEV1/FVC | 84.08 ± 8.85 | 41.1 ± 13.36* | ||
| Acute exacerbation frequency (Y/N) | / | 15/30 | ||
| mMRC score | 0/1/2/3/4 | / | 2/8/12/15/9 | |
| CAT score | < 10/> 10 | / | 12/34 | |
Data are presented as Mean ± SD, *p < 0.05, COPD patients VS controls (Unpaired t test). FEV1 - forced expiratory volume in 1 s, presented as absolute volume and percentage of predicted volume (FEV1%); FVC - forced vital capacity; mMRC – modified British medical research council; CAT – COPD assessment test; the situation of acute aggravation frequency was judged by acute attack more than twice in last 12 months
Fig. 1The mRNA level of the aging-associated genes FOXO3, TP53, TGFβ1, MMP2, HDAC1, NUF2, ATG3, and AREG were significantly down-regulated in peripheral blood of COPD patients. (a-h) The mRNA expression of these genes was detected by qPCR. *** p < 0.001; **** p < 0.0001
Fig. 2Volcano plot of differential methylation CpG sites between COPD patients and normal volunteers. The up-regulated sites were presented as red dots and down-regulated as green. p-value< 0.05
The top 2 differentially methylated CpG sites associated with COPD
| CpG Site | Gene | Mean Difference Methylation | FDR Adjusted | Logistic regression model for risk factors | |
|---|---|---|---|---|---|
| Adjust β (95% CI) | |||||
| chr4:75310999 | AREG | 0.46% | 0.011 | 71.34(1.79, 140.9) | 0.044 |
| chr4:75310908 | AREG | 0.45% | 0.008 | 49.92(−3.04, 102.88) | 0.065 |
| chr3:112281685 | ATG3 | −2.61% | 0.037 | −8.45(−16.32, −0.59) | 0.035 |
| chr3:112281810 | ATG3 | −1.83% | 0.037 | − 12.00(−23.35, − 0.64) | 0.038 |
| chr6:108882977 | FOXO3 | −9.09% | 1.68855E-05 | −8.83(− 14.65, −3.00) | 0.003 |
| chr6:108882982 | FOXO3 | −9.04% | 3.652E-05 | −8.52(−14.26, −2.78) | 0.004 |
| chr20:32273763 | E2F1 | −3.45% | 0.008 | −21.5(−43.20,0.19) | 0.052 |
| chr20:32274387 | E2F1 | 2.72% | 0.014 | 20.01(4.35, 35.66) | 0.012 |
| chr1:32757717 | HDAC1 | 0.67% | 0.026 | 29.61(0.34, 58.89) | 0.047 |
| chr1:32757818 | HDAC1 | −0.41% | 0.027 | −50.71(−97.74, −3.65) | 0.035 |
| chr1:163292017 | NUF2 | −0.42% | 0.011 | −97.07(− 171.02, −23.11) | 0.10 |
| chr1:163291916 | NUF2 | 0.33% | 0.005 | 67.50(−5.96, 140.98) | 0.072 |
| chr16:55514378 | MMP2 | −1.66% | 0.013 | −14.01(−27.68, −0.34) | 0.045 |
| chr16:55514466 | MMP2 | −1.50% | 0.023 | −16.59(− 33.14, −0.05) | 0.049 |
| chr19:41859656 | TGFB1 | 1.82% | 0.033 | 11.88(1.38, 22.37) | 0.027 |
| chr19:41859677 | TGFB1 | −1.67% | 0.01 | −34.21(−60.97, − 7.45) | 0.012 |
| chr17: 7591645 | TP53 | −3.83% | 0.001 | 139.19(18.45, 257.93) | 0.024 |
| chr17:7590743 | TP53 | −0.68% | 0.026 | 209.32(80.13, 338.51) | 0.001 |
Differential methylation analysis was conducted between COPD patients and controls in blood samples from a total of 105 subjects. The method of Benjamin Hochberg was used to control the false discovery rate (FDR), p < 0.05; Adjusted β were derived from Binary logistic regression analysis. These factors were adjusted in the logistic regression analysis: age, smoking history and work environment and outdoor pollution
Fig. 3Correlation analysis between differential methylation sites and other clinical indicators. Correlation analysis between differential methylation sites and clinical indicators. a. CpG sites positively associated with the mMRC score (0–4). p-value< 0.05. The methylation differences at 23 sites between different mMRC groups are presented in the clustering map. b ROC curve of acute exacerbation frequency p-value < 0.05, AUR > 0.5. c ROC curve of CAT score. p-value < 0.05, AUR > 0.5
Fig. 4Venn diagram of the intersection of aging-related CpG sites and smoking-related CpG sites