Multi-variate model of T cell clonotype competition and homeostasis

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作者
Daniel Luque Duque
Jessica A. Gaevert
Paul G. Thomas
Martín López-García
Grant Lythe
Carmen Molina-París
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[1] University of Leeds,Department of Applied Mathematics, School of Mathematics
[2] St. Jude Children’s Research Hospital,Department of Immunology
[3] St. Jude Graduate School of Biomedical Sciences,T
[4] Los Alamos National Laboratory,6, Theoretical Biology and Biophysics, Theoretical Division
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Diversity of the naive T cell repertoire is maintained by competition for stimuli provided by self-peptides bound to major histocompatibility complexes (self-pMHCs). We extend an existing bi-variate competition model to a multi-variate model of the dynamics of multiple T cell clonotypes which share stimuli. In order to understand the late-time behaviour of the system, we analyse: (i) the dynamics until the extinction of the first clonotype, (ii) the time to the first extinction event, (iii) the probability of extinction of each clonotype, and (iv) the size of the surviving clonotypes when the first extinction event takes place. We also find the probability distribution of the number of cell divisions per clonotype before its extinction. The mean size of a new clonotype at quasi-steady state is an increasing function of the stimulus available to it, and a decreasing function of the fraction of stimuli it shares with other clonotypes. Thus, the probability of, and time to, extinction of a new clonotype entering the pool of T cell clonotypes is determined by the extent of competition for stimuli it experiences and by its initial number of cells.
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