Explicit kinetic heterogeneity: mechanistic models for interpretation of labeling data of heterogeneous cell populations
Vitaly V. Ganusov, Jose Borghans, Rob De Boer

TL;DR
This paper introduces a mechanistic model accounting for heterogeneity in cell turnover rates, improving interpretation of deuterium labeling data in lymphocyte proliferation studies.
Contribution
It extends existing models by explicitly incorporating kinetic heterogeneity, enabling more accurate analysis of cell population dynamics from labeling experiments.
Findings
The model reproduces known experimental observations.
It allows for non-exponential loss of labeled cells.
It can analyze data with variable labeling durations.
Abstract
Estimation of division and death rates of lymphocytes in different conditions is vital for quantitative understanding of the immune system. Deuterium, in the form of deuterated glucose or heavy water, can be used to measure rates of proliferation and death of lymphocytes in vivo. Inferring these rates from labeling and delabeling curves has been subject to considerable debate with different groups suggesting different mathematical models for that purpose. We show that the three models that are most commonly used are in fact mathematically identical and differ only in their interpretation of the estimated parameters. By extending these previous models, we here propose a more mechanistic approach for the analysis of data from deuterium labeling experiments. We construct a model of "kinetic heterogeneity" in which the total cell population consists of many sub-populations with different…
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