Nonlinear dynamics of multi-omics profiles during human aging

IF 17 Q1 CELL BIOLOGY Nature aging Pub Date : 2024-08-14 DOI:10.1038/s43587-024-00692-2
Xiaotao Shen, Chuchu Wang, Xin Zhou, Wenyu Zhou, Daniel Hornburg, Si Wu, Michael P. Snyder
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Abstract

Aging is a complex process associated with nearly all diseases. Understanding the molecular changes underlying aging and identifying therapeutic targets for aging-related diseases are crucial for increasing healthspan. Although many studies have explored linear changes during aging, the prevalence of aging-related diseases and mortality risk accelerates after specific time points, indicating the importance of studying nonlinear molecular changes. In this study, we performed comprehensive multi-omics profiling on a longitudinal human cohort of 108 participants, aged between 25 years and 75 years. The participants resided in California, United States, and were tracked for a median period of 1.7 years, with a maximum follow-up duration of 6.8 years. The analysis revealed consistent nonlinear patterns in molecular markers of aging, with substantial dysregulation occurring at two major periods occurring at approximately 44 years and 60 years of chronological age. Distinct molecules and functional pathways associated with these periods were also identified, such as immune regulation and carbohydrate metabolism that shifted during the 60-year transition and cardiovascular disease, lipid and alcohol metabolism changes at the 40-year transition. Overall, this research demonstrates that functions and risks of aging-related diseases change nonlinearly across the human lifespan and provides insights into the molecular and biological pathways involved in these changes. Understanding the molecular changes underlying aging is important for developing biomarkers and healthy aging interventions. In this study, the authors used comprehensive multi-omics data to reveal nonlinear molecular profiles across chronological ages, highlighting two substantial variations observed around ages 40 and 60, which are linked to increased disease risks.

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人类衰老过程中多组学特征的非线性动态变化。
衰老是一个复杂的过程,几乎与所有疾病都有关联。了解衰老背后的分子变化并确定衰老相关疾病的治疗靶点,对于延长健康寿命至关重要。尽管许多研究探讨了衰老过程中的线性变化,但在特定时间点之后,衰老相关疾病的患病率和死亡风险会加快,这表明研究非线性分子变化的重要性。在这项研究中,我们对年龄在 25 岁至 75 岁之间的 108 名参与者的纵向人类队列进行了全面的多组学分析。这些参与者居住在美国加利福尼亚州,追踪时间中位数为 1.7 年,最长追踪时间为 6.8 年。分析结果表明,衰老分子标记的非线性模式是一致的,在大约 44 岁和 60 岁这两个主要时期出现了严重的失调。此外,还发现了与这些时期相关的不同分子和功能途径,如免疫调节和碳水化合物代谢在 60 岁过渡期发生变化,心血管疾病、脂质和酒精代谢在 40 岁过渡期发生变化。总之,这项研究表明,与衰老相关的疾病的功能和风险在人的一生中会发生非线性变化,并提供了有关这些变化所涉及的分子和生物途径的见解。
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