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Multi-omics network analysis reveals distinct stages in the human aging progression in epidermal tissue

机译:多组学网络分析揭示了表皮组织中人类衰老进程的不同阶段

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摘要

In recent years, reports of non-linear regulations in age- and longevity-associated biological processes have been accumulating. Inspired by methodological advances in precision medicine involving the integrative analysis of multi-omics data, we sought to investigate the potential of multi-omics integration to identify distinct stages in the aging progression from human skin tissue. For this we generated transcriptome and methylome profiling data from suction blister lesions of female subjects between 21 and 76 years, which were integrated using a network fusion approach. Unsupervised cluster analysis on the combined network identified four distinct subgroupings exhibiting a significant age-association. As indicated by DNAm age analysis and Hallmark of Aging enrichment signals, the stages captured the biological aging state more clearly than a mere grouping by chronological age and could further be recovered in a longitudinal validation cohort with high stability. Characterization of the biological processes driving the phases using machine learning enabled a data-driven reconstruction of the order of Hallmark of Aging manifestation. Finally, we investigated non-linearities in the mid-life aging progression captured by the aging phases and identified a far-reaching non-linear increase in transcriptional noise in the pathway landscape in the transition from mid- to late-life.
机译:近年来,关于与年龄和寿命有关的生物过程中的非线性调节的报告不断积累。受精密医学方法学进步的启发,涉及对多组学数据的综合分析,我们试图研究多组学集成在人类皮肤组织衰老过程中识别不同阶段的潜力。为此,我们从21至76岁的女性受试者的吸水疱损伤中生成了转录组和甲基化组分析数据,并使用网络融合方法进行了整合。组合网络上的无监督聚类分析确定了四个明显的年龄关联的不同亚组。正如DNAm年龄分析和衰老富集信号的标志所表明的,这些阶段比仅按时间年龄分组更清楚地捕获了生物衰老状态,并且可以在具有高稳定性的纵向验证队列中进一步得到恢复。使用机器学习对驱动各相的生物过程进行表征,可以实现数据驱动的衰老表现标志顺序的重建。最后,我们研究了由衰老阶段捕获的中年衰老过程中的非线性,并确定了从中年到晚年过渡过程中通路景观中转录噪声的深远非线性增加。

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