DNA methylation clocks for estimating biological age in Chinese cohorts

Zikai Zheng(Chinese Academy of Sciences), Jiaming Li(Chinese Academy of Sciences), Tianzi Liu(Chinese Academy of Sciences), Yanling Fan(Chinese Academy of Sciences), Qiaocheng Zhai(Wenzhou Medical University), Muzhao Xiong(Chinese Academy of Sciences), Qiaoran Wang(Chinese Academy of Sciences), Xiaoyan Sun(Chinese Academy of Sciences), Qi-Wen Zheng(Chinese Academy of Sciences), Shanshan Che(Chinese Academy of Sciences), Beier Jiang(Wenzhou Medical University), Quan Zheng(Chinese Academy of Sciences), Cui Wang(Chinese Academy of Sciences), Lixiao Liu(Chinese Academy of Sciences), Jiale Ping(Chinese Academy of Sciences), Si Wang(Capital Medical University), Dandan Gao(Wenzhou Medical University), Jinlin Ye(Wenzhou Medical University), Kuan Yang(Chinese Academy of Sciences), Yuesheng Zuo(Chinese Academy of Sciences), Shuai Ma(Chinese Academy of Sciences), Yun‐Gui Yang(Chinese Academy of Sciences), Jing Qu(Chinese Academy of Sciences), Feng Zhang(Wenzhou Medical University), Peilin Jia(Chinese Academy of Sciences), Guang‐Hui Liu(Capital Medical University), Weiqi Zhang(Chinese Academy of Sciences)
Protein & Cell
March 14, 2024
Cited by 50Open Access
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Abstract

Epigenetic clocks are accurate predictors of human chronological age based on the analysis of DNA methylation (DNAm) at specific CpG sites. However, a systematic comparison between DNA methylation data and other omics datasets has not yet been performed. Moreover, available DNAm age predictors are based on datasets with limited ethnic representation. To address these knowledge gaps, we generated and analyzed DNA methylation datasets from two independent Chinese cohorts, revealing age-related DNAm changes. Additionally, a DNA methylation aging clock (iCAS-DNAmAge) and a group of DNAm-based multi-modal clocks for Chinese individuals were developed, with most of them demonstrating strong predictive capabilities for chronological age. The clocks were further employed to predict factors influencing aging rates. The DNAm aging clock, derived from multi-modal aging features (compositeAge-DNAmAge), exhibited a close association with multi-omics changes, lifestyles, and disease status, underscoring its robust potential for precise biological age assessment. Our findings offer novel insights into the regulatory mechanism of age-related DNAm changes and extend the application of the DNAm clock for measuring biological age and aging pace, providing the basis for evaluating aging intervention strategies.


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