Vera Daniel L, Griffin Patrick T, Leigh David, Kras Jason, Ramos Enrique, Bishof Isaac, Butler Anderson, Chwalek Karolina, Vogel David S, Kane Alice E, Sinclair David A
VoLo Foundation, Palm Beach, FL 33410 USA.
Voloridge Health, Jupiter, FL 33477 USA.
bioRxiv. 2025 May 6:2025.04.30.651114. doi: 10.1101/2025.04.30.651114.
Biological age refers to a person's overall health in aging, as distinct from their chronological age. Diverse measures of biological age, referred to as "clocks", have been developed in recent years and enable risk assessments, and an estimation of the efficacy of longevity interventions in animals and humans. While most clocks are trained to predict chronological age, clocks have been developed to predict more complex composite biological age outcomes, at least in humans. These composite outcomes can be made up of a combination of phenotypic data, chronological age, and disease or mortality risk. Here, we develop the first such composite biological age measure for mice: the mouse phenotypic age model (Mouse PhenoAge). This outcome is based on frailty measures, complete blood counts, and mortality risk in a longitudinally assessed cohort of male and female C57BL/6 mice. We then develop clocks to predict Mouse PhenoAge, based on multi-omic models using metabolomic and DNA methylation data. Our models accurately predict Mouse PhenoAge, and residuals of the models are associated with remaining lifespan, even for mice of the same chronological age. These methods offer novel ways to accurately predict mortality in laboratory mice thus reducing the need for lengthy and costly survival studies.
生物学年龄指的是一个人衰老过程中的整体健康状况,与实际年龄有所不同。近年来,人们开发了多种被称为“时钟”的生物学年龄测量方法,这些方法可用于风险评估,并能估计动物和人类长寿干预措施的效果。虽然大多数时钟是用于预测实际年龄的,但至少在人类中,已经开发出了用于预测更复杂的综合生物学年龄结果的时钟。这些综合结果可以由表型数据、实际年龄以及疾病或死亡风险等组合而成。在此,我们开发了首个针对小鼠的此类综合生物学年龄测量方法:小鼠表型年龄模型(Mouse PhenoAge)。这一结果基于对雄性和雌性C57BL/6小鼠进行纵向评估的队列中的衰弱测量、全血细胞计数以及死亡风险。然后,我们基于使用代谢组学和DNA甲基化数据的多组学模型开发了预测Mouse PhenoAge的时钟。我们的模型能够准确预测Mouse PhenoAge,并且即使对于实际年龄相同的小鼠,模型的残差也与剩余寿命相关。这些方法提供了新颖的方式来准确预测实验室小鼠的死亡率,从而减少了对冗长且昂贵的生存研究的需求。