Proteomics enables the systematic elucidation of biological mechanisms underlying frailty. Through a large proteome-wide association study of 2,911 plasma proteins from 50,506 UK Biobank participants, we identified 1,339 proteins significantly associated with frailty, highlighting collagen-containing extracellular matrix and vesicle lumen pathways. Replication in the TwinGene study confirmed partial but consistent associations. Mendelian randomization analyses identified five potentially causal proteins for frailty. Moreover, we developed a proteomic frailty score (PFS) that showed strong predictive performance for 199 incident diseases across 13 categories and broad responsiveness to 84 modifiable risk factors. Longitudinal analyses revealed accelerated PFS progression with advancing age and increasing baseline frailty severity. An online tool ( https://zipoa.shinyapps.io/frailty/ ) was created for public PFS calculation. Finally, we observed a biphasic pattern of frailty-associated proteomic dysregulation across the lifespan, with peaks at ages ∼50 and ∼63. Together, we establish PFS as a biomarker of biological aging while identifying critical windows and molecular targets for frailty interventions. • Delineate the most comprehensive plasma proteomic landscape of frailty • Develop different versions of proteomic frailty scores via the LASSO algorithm • PFS predicts multiple incident diseases and responds to modifiable factors • Uncover dynamic changes in frailty-associated proteins across the lifespan Jia et al. delineate the most comprehensive plasma proteomic landscape of frailty to date and develop proteomic frailty scores that predict multiple diseases and respond to modifiable risk factors. They identify a biphasic pattern of frailty-related proteomic alterations across the lifespan, revealing critical windows that may inform targeted intervention programs.
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Jia et al. (Sun,) studied this question.
synapsesocial.com/papers/69ba42ee4e9516ffd37a3aef — DOI: https://doi.org/10.1016/j.cmet.2026.02.013
Xueqing Jia
Second Affiliated Hospital of Zhejiang University
Weijing Gao
Second Affiliated Hospital of Zhejiang University
Hampus Hagelin
Karolinska Institutet
Cell Metabolism
Karolinska Institutet
Zhejiang University
Fudan University
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