Division of Genetics, Department of Medicine, Brigham and Women's Hospital and Harvard Medical School, Boston, MA, USA.
T. H. Chan School of Public Health, Harvard University, Boston, MA, USA.
Nat Aging. 2024 Feb;4(2):231-246. doi: 10.1038/s43587-023-00557-0. Epub 2024 Jan 19.
Machine learning models based on DNA methylation data can predict biological age but often lack causal insights. By harnessing large-scale genetic data through epigenome-wide Mendelian randomization, we identified CpG sites potentially causal for aging-related traits. Neither the existing epigenetic clocks nor age-related differential DNA methylation are enriched in these sites. These CpGs include sites that contribute to aging and protect against it, yet their combined contribution negatively affects age-related traits. We established a new framework to introduce causal information into epigenetic clocks, resulting in DamAge and AdaptAge-clocks that track detrimental and adaptive methylation changes, respectively. DamAge correlates with adverse outcomes, including mortality, while AdaptAge is associated with beneficial adaptations. These causality-enriched clocks exhibit sensitivity to short-term interventions. Our findings provide a detailed landscape of CpG sites with putative causal links to lifespan and healthspan, facilitating the development of aging biomarkers, assessing interventions, and studying reversibility of age-associated changes.
基于 DNA 甲基化数据的机器学习模型可以预测生物年龄,但往往缺乏因果见解。通过利用大规模遗传数据进行全基因组孟德尔随机化,我们确定了与衰老相关特征可能具有因果关系的 CpG 位点。现有的表观遗传时钟或与年龄相关的差异 DNA 甲基化都没有富集在这些位点中。这些 CpG 包括有助于衰老和预防衰老的位点,但它们的综合贡献对与年龄相关的特征有负面影响。我们建立了一个新的框架,将因果信息引入表观遗传时钟,从而产生了 DamAge 和 AdaptAge 时钟,分别跟踪有害和适应性的甲基化变化。DamAge 与包括死亡率在内的不良结局相关,而 AdaptAge 与有益的适应相关。这些因果信息丰富的时钟对短期干预措施敏感。我们的研究结果提供了一个与寿命和健康寿命具有潜在因果关系的 CpG 位点的详细图谱,有助于开发衰老生物标志物、评估干预措施以及研究与年龄相关变化的可逆性。