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

Nicholas Holzscheck, Jörn Söhle, Boris Kristof, Elke Grönniger, Stefan Gallinat, Horst Wenck, Marc Winnefeld, Cassandra Falckenhayn, Lars Kaderali

2020Aging37 citationsDOIOpen Access PDF

Abstract

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.

Topics & Concepts

BiologyComputational biologyOmicsNeuroscienceBioinformaticsEpigenetics and DNA MethylationBioinformatics and Genomic NetworksSkin Protection and Aging
Multi-omics network analysis reveals distinct stages in the human aging progression in epidermal tissue | Litcius