蛋白质组衰老时钟(PAC)可预测中老年人与年龄相关的结果。

IF 7.8 1区 医学 Q1 Biochemistry, Genetics and Molecular Biology Aging Cell Pub Date : 2024-05-15 DOI:10.1111/acel.14195
Chia-Ling Kuo, Zhiduo Chen, Peiran Liu, Luke C. Pilling, Janice L. Atkins, Richard H. Fortinsky, George A. Kuchel, Breno S. Diniz
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引用次数: 0

摘要

除了预后之外,最佳的衰老生物标志物还能让人了解生物衰老的定性和定量特征,因此可能会为老年疗法的测试和最终的临床应用提供有用的信息。我们的目标是为全因死亡率风险开发一种蛋白质组老化时钟(PAC),作为生物年龄的替代指标。数据来自英国生物库医药蛋白质组学项目,包括 53021 名年龄在 39 岁至 70 岁之间的参与者,以及使用 Olink Explore 3072 分析法® 评估的 2923 种血浆蛋白质。10.9%的参与者在平均 13.3 年的随访期间死亡,平均死亡年龄为 70.1 岁。PAC 蛋白质组年龄与实际年龄之间的 Spearman 相关性为 0.77。经年龄调整后,PAC 与全因死亡率和各种疾病的发病率有很强的相关性,并可预测一般参与者和无病参与者的发病率。与 PAC 蛋白质组年龄偏差相关的蛋白质富集在与生物衰老特征相关的几个过程中。我们的研究结果表明,基于 PAC 的生物年龄加速可有力地预测全因死亡率和几种疾病的发病结果,从而扩展了之前的研究结果。特别是,它有助于评估无疾病人群中多种疾病的风险,从而有助于预防最初的疾病,这些疾病因人而异,随后可能导致更多的合并症。
本文章由计算机程序翻译,如有差异,请以英文原文为准。

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Proteomic aging clock (PAC) predicts age-related outcomes in middle-aged and older adults

Beyond mere prognostication, optimal biomarkers of aging provide insights into qualitative and quantitative features of biological aging and might, therefore, offer useful information for the testing and, ultimately, clinical use of gerotherapeutics. We aimed to develop a proteomic aging clock (PAC) for all-cause mortality risk as a proxy of biological age. Data were from the UK Biobank Pharma Proteomics Project, including 53,021 participants aged between 39 and 70 years and 2923 plasma proteins assessed using the Olink Explore 3072 assay®. 10.9% of the participants died during a mean follow-up of 13.3 years, with the mean age at death of 70.1 years. The Spearman correlation between PAC proteomic age and chronological age was 0.77. PAC showed robust age-adjusted associations and predictions for all-cause mortality and the onset of various diseases in general and disease-free participants. The proteins associated with PAC proteomic age deviation were enriched in several processes related to the hallmarks of biological aging. Our results expand previous findings by showing that biological age acceleration, based on PAC, strongly predicts all-cause mortality and several incident disease outcomes. Particularly, it facilitates the evaluation of risk for multiple conditions in a disease-free population, thereby, contributing to the prevention of initial diseases, which vary among individuals and may subsequently lead to additional comorbidities.

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来源期刊
Aging Cell
Aging Cell 生物-老年医学
CiteScore
14.40
自引率
2.60%
发文量
212
审稿时长
8 weeks
期刊介绍: Aging Cell, an Open Access journal, delves into fundamental aspects of aging biology. It comprehensively explores geroscience, emphasizing research on the mechanisms underlying the aging process and the connections between aging and age-related diseases.
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