Martinez-Romero Jorge, Fernandez Maria Emilia, Bernier Michel, Price Nathan L, Mueller William, Candia Julián, Camandola Simonetta, Meirelles Osorio, Hu Yi-Han, Li Zhiguang, Asefa Nigus, Deighan Andrew, Vieira Ligo Teixeira Camila, Palliyaguru Dushani L, Serrano Carlos, Escobar-Velasquez Nicolas, Dickinson Stephanie, Shiroma Eric J, Ferrucci Luigi, Churchill Gary A, Allison David B, Launer Lenore J, de Cabo Rafael
Translational Gerontology Branch, National Institute on Aging, Baltimore, MD, USA.
Laboratory of Epidemiology and Population Sciences, National Institute on Aging, Baltimore, MD, USA.
Nat Aging. 2024 Dec;4(12):1882-1896. doi: 10.1038/s43587-024-00728-7. Epub 2024 Oct 18.
Biological clocks and other molecular biomarkers of aging are difficult to implement widely in a clinical setting. In this study, we used routinely collected hematological markers to develop an aging clock to predict blood age and determine whether the difference between predicted age and chronologic age (aging gap) is associated with advanced aging in mice. Data from 2,562 mice of both sexes and three strains were drawn from two longitudinal studies of aging. Eight hematological variables and two metabolic indices were collected longitudinally (12,010 observations). Blood age was predicted using a deep neural network. Blood age was significantly correlated with chronological age, and aging gap was positively associated with mortality risk and frailty. Platelets were identified as the strongest age predictor by the deep neural network. An aging clock based on routinely collected blood measures has the potential to provide a practical clinical tool to better understand individual variability in the aging process.
生物钟和其他衰老分子生物标志物难以在临床环境中广泛应用。在本研究中,我们使用常规收集的血液学标志物来开发一种衰老时钟,以预测血液年龄,并确定预测年龄与实际年龄之间的差异(衰老差距)是否与小鼠的衰老进程相关。来自两项衰老纵向研究的2562只雌雄小鼠和三个品系的数据被纳入分析。纵向收集了八个血液学变量和两个代谢指标(共12010次观察)。使用深度神经网络预测血液年龄。血液年龄与实际年龄显著相关,衰老差距与死亡风险和虚弱程度呈正相关。深度神经网络将血小板确定为最强的年龄预测指标。基于常规收集的血液指标的衰老时钟有可能提供一种实用的临床工具,以更好地理解衰老过程中的个体差异。