Causality-enriched epigenetic age uncouples damage and adaptation.
Albert K YingHanna LiuAndrei E TarkhovMarie C SadlerAke T LuMahdi MoqriSteve HorvathZoltán KutalikXia ShenVadim N GladyshevPublished in: Nature aging (2024)
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.
Keyphrases
- dna methylation
- genome wide
- gene expression
- big data
- machine learning
- copy number
- oxidative stress
- physical activity
- electronic health record
- artificial intelligence
- cardiovascular events
- emergency department
- adverse drug
- risk factors
- high intensity
- cardiovascular disease
- health information
- deep learning
- coronary artery disease