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Introduction to mathematical modeling … in immunology PhD. Karina García Martínez Center of Molecular Immunology Universidad de Oriente June, 2016 Contents: 1. A brief introduction to Immunology 2. Mathematical modeling in Immunology: Cross-regulation model of T cell dynamics Contents: 1. A brief introduction to Immunology 2. Mathematical modeling in Immunology: Cross-regulation model of T cell dynamics Simple scheme of the immune response Pathogen B B B Antigen B B B (+) Th Th Th Th Th Th Th Th Tc Tc Tc Tc Tc Tc Tc (+) The problem of immunology is to understand the dynamics of the immune response Regulatory T cells in the immune response Pathogen B B B Antigen B B B (+) Th Th Th Th Th Th Th R Th Tc Tc Tc Tc Tc Tc (+) Regulatory T cell blocks the immune response by inhibiting the activation and proliferation of Helper T cells Tc Dominant tolerance: existence of Regulatory T cells Autoimmune CD25- CD4+ T cells E E T E ET T T T (Effector cells) Healthy or Autoimmune CD25+CD4+T cells R R R R Healthy R R R R (Regulatory cells) In normal animals there exist autoreactive T cells capable of causing autoimmunity Regulatory T cells control the autoreactive cells Possible regulatory mechanisms Model 1 Model 2 R R R R Th Th (-) Th Th Model 3 R R Th (+) (-) Th A mathematical model can help us distinguish between these hypotheses? Contents: 1. A brief introduction to Immunology 2. Mathematical modeling in Immunology: Cross-regulation model of T cell dynamics Basic postulates of the model Variables: Th Effector cells R Regulatory cells APC Antigen Presenting Cells Assumptions: 1. Regulatory and Effector cells interact only during simultaneous conjugation with an APC 2. Antigen Presenting Cells (APCs) are a homogeneous population with fixed size 3. Each APC has a finite and fixed number of conjugation sites, which can be occupied by a single cell, irrespective of its phenotype T cells – APCs conjugates E ,R C C A i,j : number of E and R cells per APC : number of APC cells conjugated with “i” E cells and “j” R cells E E F C R F A 1,2 We assume quasi-steady state equilibrium: s s A = A (E,R) j = 0 i =0 i,j s : total number of conjugation sites per APC R C T cells – APCs conjugates E ,R C C A i,j : number of E and R cells per APC : number of APC cells conjugated with “i” E cells and “j” R cells E F R F Obtaining the total number of EC and RC per APC: F Ke Ec = E 1+F Ke F Kr Rc = R 1+F Kr F= s.A – Ec - Rc 0 =(Ke Kr ) F3+ (Ke + Kr+ Ke Kr (s.A-E-R)) F2 + (1 – Ke (s.A-E) - Kr (s.A-R)) F – s.A T cells – APCs conjugates E ,R C C A i,j : number of E and R cells per APC : number of APC cells conjugated with “i” E cells and “j” R cells E F R F Obtaining the total number of EC and RC per APC: F Ke Ec = E 1+F Ke F Kr Rc = R 1+F Kr F= s.A – Ec - Rc 0 =(Ke Kr ) F3+ (Ke + Kr+ Ke Kr (s.A-E-R)) F2 + (1 – Ke (s.A-E) - Kr (s.A-R)) F – s.A Distributing EC and RC among the individual APC sites: Ai,j = Hyp[i+j, Ec+Rc, sA, s] . Hyp[i, Ec, Ec+Rc, i+j] Qualitatively different mechanisms of suppression s s dE = se + ae (i, j ) A i, j ( E ,R) - kd .E f dt i =1 j =0 s s dR = sr + ar (i, j ) A i, j ( E ,R) - kd .R f dt j =1 i =0 Qualitatively different mechanisms of suppression s s dE = se + ae (i, j ) A i, j ( E ,R) - kd .E f dt i =1 j =0 s s dR = sr + ar (i, j ) A i, j ( E ,R) - kd .R f dt j =1 i =0 Model 1 Model 2 ae(i, j) = pe i ae (i,0) = pe i ae (i, j) = 0 a r(i, j) = pr j ar (i, j) = pr i R Model 3 ae (i,0) = pe i ae (i, j) = 0 ar (i, j) = m i j dE = se + pe Ec - kd .E f dt dR = sr + pr Rc - kd .R f dt The model has always a globally stable equilibrium Only one of the subpopulations of T cell will persist, out competing the other one dE = se + pe Hyp(0, Rc , s A, s) s Ec - kd .E f s A - Rc dt dR = sr + pr Rc - kd .R f dt The model has a parameter region where bistability exists Two equilibria composed exclusively of either R or E cells dE = se + pe Hyp(0, Rc , s A, s) s Ec - kd .E f s A - Rc dt dR = sr + m (s-1) Ec Rc - kd .R f s dt The model has a parameter region where bistability exists, and both R or E cells can coexist in equilibrium Model 1 R Model 2 NO Bistability NO Coexistence of E and R YES Bistability NO Coexistence of E and R Model 3 YES Bistability YES Coexistence of E and R Only the mechanism proposed in Model 3 is compatible with experimental observations Concluding remarks 1. We provide a simple mathematical model to study cell interactions dependent on their co-localization on multicellular conjugates. 2. Our results strongly support a mechanism for suppression where: - Regulatory cells actively inhibit Effector cell proliferation upon their co-localization on multicellular conjugates with APCS. - Effector cells act as a “growth factor” for the Regulatory cells Concluding remarks 1. We provide a simple mathematical model to study cell interactions dependent on their co-localization on multicellular conjugates. 2. Our results strongly support a mechanism for suppression where: - Regulatory cells actively inhibit Effector cell proliferation upon their co-localization on multicellular conjugates with APCS. - Effector cells act as a “growth factor” for the Regulatory cells IL-2 is a good candidate Conference of Dr. Kalet León next Thursday!