疾病
生物标志物
脑老化
蛋白质组
生物年龄
生物
人口
器官系统
认知功能衰退
医学
蛋白质组学
生理学
生物信息学
病理
神经科学
老年学
痴呆
基因
环境卫生
生物化学
作者
Hamilton Oh,Jarod Rutledge,Daniel Nachun,Róbert Pálovics,Olamide Abiose,Patricia Moran‐Losada,Divya Channappa,Deniz Yagmur Urey,K. Kim,Yun Ju Sung,Lihua Wang,Jigyasha Timsina,Daniel Western,Menghan Liu,Pat Kohlfeld,John Budde,Edward N. Wilson,Yann Le Guen,T. Maurer,Michael S. Haney
出处
期刊:Nature
[Nature Portfolio]
日期:2023-12-06
卷期号:624 (7990): 164-172
被引量:220
标识
DOI:10.1038/s41586-023-06802-1
摘要
Abstract Animal studies show aging varies between individuals as well as between organs within an individual 1–4 , but whether this is true in humans and its effect on age-related diseases is unknown. We utilized levels of human blood plasma proteins originating from specific organs to measure organ-specific aging differences in living individuals. Using machine learning models, we analysed aging in 11 major organs and estimated organ age reproducibly in five independent cohorts encompassing 5,676 adults across the human lifespan. We discovered nearly 20% of the population show strongly accelerated age in one organ and 1.7% are multi-organ agers. Accelerated organ aging confers 20–50% higher mortality risk, and organ-specific diseases relate to faster aging of those organs. We find individuals with accelerated heart aging have a 250% increased heart failure risk and accelerated brain and vascular aging predict Alzheimer’s disease (AD) progression independently from and as strongly as plasma pTau-181 (ref. 5 ), the current best blood-based biomarker for AD. Our models link vascular calcification, extracellular matrix alterations and synaptic protein shedding to early cognitive decline. We introduce a simple and interpretable method to study organ aging using plasma proteomics data, predicting diseases and aging effects.
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