Abstract

Advances in systems biology have allowed for global analyses of mRNA and protein expression, but large-scale studies of protein dynamics and turnover have not been conducted in vivo. Protein turnover is an important metabolic and regulatory mechanism in establishing proteome homeostasis, impacting many physiological and pathological processes. Here, we have used organism-wide isotopic labeling to measure the turnover rates of ~2,500 proteins in multiple mouse tissues, spanning four orders of magnitude. Through comparison of the brain with the liver and blood, we show that within the respective tissues, proteins performing similar functions often have similar turnover rates. Proteins in the brain have significantly slower turnover (average lifetime of 9.0 d) compared with those of the liver (3.0 d) and blood (3.5 d). Within some organelles (such as mitochondria), proteins have a narrow range of lifetimes, suggesting a synchronized turnover mechanism. Protein subunits within complexes of variable composition have a wide range of lifetimes, whereas those within well-defined complexes turn over in a coordinated manner. Together, the data represent the most comprehensive in vivo analysis of mammalian proteome turnover to date. The developed methodology can be adapted to assess in vivo proteome homeostasis in any model organism that will tolerate a labeled diet and may be particularly useful in the analysis of neurodegenerative diseases in vivo.

Keywords

ProteomeProtein turnoverBiologyIn vivoProteomicsOrganelleOrganismCell biologyHomeostasisMitochondrionProtein biosynthesisBiochemistryComputational biologyGeneGenetics

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Year
2010
Type
article
Volume
107
Issue
32
Pages
14508-14513
Citations
368
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John C. Price, Shenheng Guan, Alma L. Burlingame et al. (2010). Analysis of proteome dynamics in the mouse brain. Proceedings of the National Academy of Sciences , 107 (32) , 14508-14513. https://doi.org/10.1073/pnas.1006551107

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DOI
10.1073/pnas.1006551107