Age-based approach to characterize the dynamics of cellular processes

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Abstract

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Cells continuously produce and degrade multiple small and large molecules, essential for maintaining homeostasis. The study of this dynamics has gained momentum since the development of pulse-chase methods, in which cellular components are labeled with isotopic or fluorescent tracers to assess properties such as turnover rates or half-lives. Standard analyses, however, often rely on simplifications such as that molecules represent a homogeneous and immediately labeled population, which does not always hold true. Here, we present a rigorous analytical framework that refocuses the interpretation of dynamic labeling experiments toward the distribution of metabolic ages, defined as the time molecules have spent within a cell. We demonstrate how this approach ubiquitously captures different aspects of dynamic behavior, including delayed labeling and complex degradation patterns, and is less prone to biased interpretations. We further introduce a general compartmental modeling approach to quantify metabolic age distributions and to test hypotheses about the organization of metabolic networks and show that metabolic ages can be quantified by dynamic labeling requiring minimal assumptions. The utility of this framework is demonstrated by quantifying metabolic ages and determining the kinetic pool structure of budding yeast proteins at optimal and suboptimal growth temperatures, revealing, for example, distinct kinetic populations of ribosomal proteins. In addition, based on the previously published data on nuclear pore complex assembly, we exemplify how age interpretation of dynamic labeling can enable characterizing the order and time scale of the cellular processes.

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Significance Statement

To be functional, cells must balance the production and degradation of biological molecules. This is often studied using tracers, compounds that label newly-made molecules. However, determining parameters of these processes, such as degradation rates, is not easy and is challenged by non-instantaneous labeling and complex degradation patterns. Here, we describe a generic framework for interpreting results of dynamic labeling experiments based on the concept of metabolic age, the time that the tracer has spent in the metabolic system. Using a custom Python package for metabolic models, we illustrate how this framework enables us to standardize the determination of various dynamic parameters of metabolism and to use age to analyze order and duration of cellular processes.

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