Department of Animal Science, Safiabad-Dezful Agricultural and Natural Resources Research and Education Center, Agricultural Research, Education & Extension Organization (AREEO), Dezful, 333, Iran.
Department of Animal Science, Faculty of Agriculture Engineering, University of Kurdistan, Sanandaj, 66177-15175, Iran.
G3 (Bethesda). 2021 Jul 14;11(7). doi: 10.1093/g3journal/jkab112.
The use of DNA methylation signatures to predict chronological age and aging rate is of interest in many fields, including disease prevention and treatment, forensics, and anti-aging medicine. Although a large number of methylation markers are significantly associated with age, most age-prediction methods use a few markers selected based on either previously published studies or datasets containing methylation information. Here, we implemented reproducing kernel Hilbert spaces (RKHS) regression and a ridge regression model in a Bayesian framework that utilized phenotypic and methylation profiles simultaneously to predict chronological age. We used over 450,000 CpG sites from the whole blood of a large cohort of 4409 human individuals with a range of 10-101 years of age. Models were fitted using adjusted and un-adjusted methylation measurements for cell heterogeneity. Un-adjusted methylation scores delivered a significantly higher prediction accuracy than adjusted methylation data, with a correlation between age and predicted age of 0.98 and a root mean square error (RMSE) of 3.54 years in un-adjusted data, and 0.90 (correlation) and 7.16 (RMSE) years in adjusted data. Reducing the number of predictors (CpG sites) through subset selection improved predictive power with a correlation of 0.98 and an RMSE of 2.98 years in the RKHS model. We found distinct global methylation patterns, with a significant increase in the proportion of methylated cytosines in CpG islands and a decreased proportion in other CpG types, including CpG shore, shelf, and open sea (P < 5e-06). Epigenetic drift seemed to be a widespread phenomenon as more than 97% of the age-associated methylation sites had heteroscedasticity. Apparent methylomic aging rate (AMAR) had a sex-specific pattern, with an increase in AMAR in females with age related to males.
利用 DNA 甲基化特征来预测年龄和衰老速度在许多领域都很有意义,包括疾病预防和治疗、法医学和抗衰老医学。尽管大量的甲基化标志物与年龄显著相关,但大多数年龄预测方法都是基于之前发表的研究或包含甲基化信息的数据集,选择少数标志物来进行预测。在这里,我们在贝叶斯框架下实现了再生核希尔伯特空间(RKHS)回归和岭回归模型,同时利用表型和甲基化谱来预测年龄。我们使用了来自 4409 个人的全血中超过 450,000 个 CpG 位点,这些个体的年龄范围为 10-101 岁。模型是使用经过调整和未经调整的细胞异质性甲基化测量值来拟合的。未经调整的甲基化评分提供了更高的预测精度,与年龄相关的预测年龄的相关性为 0.98,未经调整数据的均方根误差(RMSE)为 3.54 岁,而调整数据的相关性为 0.90(相关性)和 7.16(RMSE)年。通过子集选择减少预测因子(CpG 位点)的数量可以提高预测能力,在 RKHS 模型中,相关性为 0.98,RMSE 为 2.98 岁。我们发现了明显的全球甲基化模式,CpG 岛中甲基化胞嘧啶的比例显著增加,而其他 CpG 类型(包括 CpG 岸、架和开阔海)的比例降低(P < 5e-06)。表观遗传漂移似乎是一种普遍现象,因为超过 97%的与年龄相关的甲基化位点存在异方差性。明显的甲基化衰老率(AMAR)具有性别特异性模式,女性的 AMAR 随年龄增长而增加,与男性相关。