Estimating division and death rates from CFSE data

The division tracking dye, carboxyfluorescin diacetate succinimidyl ester (CFSE) is currently the most informative labeling technique for characterizing the division history of cells in the immune system. Gett and Hodgkin (Nat. Immunol. 1 (2000) 239-244) have proposed to normalize CFSE data by the 2-fold expansion that is associated with each division, and have argued that the mean of the normalized data increases linearly with time, t, with a slope reflecting the division rate p. We develop a number of mathematical models for the clonal expansion of quiescent cells after stimulation and show, within the context of these models, under which conditions this approach is valid. We compare three means of the distribution of cells over the CFSE profile at time t: the mean, µ(t), the mean of the normalized distribution, µ2 (t), and the mean of the normalized distribution excluding nondivided cells, µ2°(t).In the simplest models, which deal with homogeneous populations of cells with constant division and death rates, the normalized frequency distribution of the cells over the respective division numbers is a Poisson distribution with mean µ2(t) = pt, where p is the division rate. The fact that in the data these distributions seem Gaussian is therefore insufficient to establish that the times at which cells are recruited into the first division have a Gaussian variation because the Poisson distribution approaches the Gaussian distribution for large pt. Excluding nondivided cells complicates the data analysis because µ2°(t) ≠ pt, and only approaches a slope p after an initial transient.In models where the first division of the quiescent cells takes longer than later divisions, all three means have an initial transient before they approach an asymptotic regime, which is the expected µ(t) = 2pt and µ2(t) = µ2° (t) = pt. Such a transient markedly complicates the data analysis. After the same initial transients, the normalized cell numbers tend to decrease at a rate e-dt, where d is the death rate.Nonlinear parameter fitting of CFSE data obtained from Gett and Hodgkin to ordinary differential equation (ODE) models with first-order terms for cell proliferation and death gave poor fits to the data. The Smith-Martin model with an explicit time delay for the deterministic phase of the cell cycle performed much better. Nevertheless, the insights gained from analysis of the ODEs proved useful as we showed by generating virtual CFSE data with a simulation model, where cell cylce times were drawn from various distributions, and then computing the various mean division numbers.

[1]  Susan M. Kaech,et al.  Memory CD8+ T cell differentiation: initial antigen encounter triggers a developmental program in naïve cells , 2001, Nature Immunology.

[2]  Boris Barbour,et al.  Functional antigen-independent synapses formed between T cells and dendritic cells , 2001, Nature Immunology.

[3]  Rustom Antia,et al.  Quantifying cell turnover using CFSE data. , 2005, Journal of immunological methods.

[4]  J. Smith,et al.  Do cells cycle? , 1973, Proceedings of the National Academy of Sciences of the United States of America.

[5]  Henrique Veiga-Fernandes,et al.  Response of naïve and memory CD8+ T cells to antigen stimulation in vivo , 2000, Nature Immunology.

[6]  A. B. Lyons,et al.  Analysing cell division in vivo and in vitro using flow cytometric measurement of CFSE dye dilution. , 2000, Journal of immunological methods.

[7]  Robert Tibshirani,et al.  Bootstrap Methods for Standard Errors, Confidence Intervals, and Other Measures of Statistical Accuracy , 1986 .

[8]  Elissa K. Deenick,et al.  Stochastic Model of T Cell Proliferation: A Calculus Revealing IL-2 Regulation of Precursor Frequencies, Cell Cycle Time, and Survival1 , 2003, The Journal of Immunology.

[9]  Stephen P. Schoenberger,et al.  Naïve CTLs require a single brief period of antigenic stimulation for clonal expansion and differentiation , 2001, Nature Immunology.

[10]  Philip D. Hodgkin,et al.  A cellular calculus for signal integration by T cells , 2000, Nature Immunology.

[11]  R. Ahmed,et al.  The rescaling method for quantifying the turnover of cell populations. , 2003, Journal of theoretical biology.

[12]  J. Harty,et al.  Programmed contraction of CD8+ T cells after infection , 2002, Nature Immunology.