Organ aging signatures in the plasma proteome track health and disease

被引:0
作者
Hamilton Se-Hwee Oh
Jarod Rutledge
Daniel Nachun
Róbert Pálovics
Olamide Abiose
Patricia Moran-Losada
Divya Channappa
Deniz Yagmur Urey
Kate Kim
Yun Ju Sung
Lihua Wang
Jigyasha Timsina
Dan Western
Menghan Liu
Pat Kohlfeld
John Budde
Edward N. Wilson
Yann Guen
Taylor M. Maurer
Michael Haney
Andrew C. Yang
Zihuai He
Michael D. Greicius
Katrin I. Andreasson
Sanish Sathyan
Erica F. Weiss
Sofiya Milman
Nir Barzilai
Carlos Cruchaga
Anthony D. Wagner
Elizabeth Mormino
Benoit Lehallier
Victor W. Henderson
Frank M. Longo
Stephen B. Montgomery
Tony Wyss-Coray
机构
[1] Stanford University,Graduate Program in Stem Cell and Regenerative Medicine
[2] Stanford University,The Phil and Penny Knight Initiative for Brain Resilience
[3] Stanford University,Wu Tsai Neurosciences Institute
[4] Stanford University,Graduate Program in Genetics
[5] Stanford University School of Medicine,Department of Pathology
[6] Stanford University School of Medicine,Department of Neurology and Neurological Sciences
[7] Stanford University School of Engineering,Department of Bioengineering
[8] Washington University in St Louis,Department of Psychiatry
[9] Washington University School of Medicine,NeuroGenomics and Informatics Center
[10] Washington University School of Medicine,Division of Biology and Biomedical Sciences
[11] Stanford University School of Medicine,Quantitative Sciences Unit, Department of Medicine
[12] University of California San Francisco,Departments of Neurology and Anatomy
[13] Gladstone Institutes,Gladstone Institute of Neurological Disease
[14] University of California San Francisco,Bakar Aging Research Institute
[15] Chan Zuckerberg Biohub,Departments of Medicine and Genetics, Institute for Aging Research
[16] Albert Einstein College of Medicine,Department of Neurology
[17] Montefiore Medical Center,Department of Psychology
[18] Stanford University,Department of Epidemiology and Population Health
[19] Stanford University,Department of Genetics
[20] Stanford University School of Medicine,Department of Biomedical Data Science
[21] Stanford University School of Medicine,undefined
来源
Nature | 2023年 / 624卷
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摘要
Animal studies show aging varies between individuals as well as between organs within an individual1–4, 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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页码:164 / 172
页数:8
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