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Whole new areas of immunological research are emerging from the
analysis of experimental data, going beyond statistics and
parameter estimation into what an applied mathematician would
recognise as modelling of dynamical systems. Stochastic methods are
increasingly important, because stochastic models are closer to the
Brownian reality of the cellular and sub-cellular world.
Mathematical, statistical, and computational methods enable
multi-disciplinary approaches that catalyse discovery. Together
with experimental methods, they identify key hypotheses, define
measurable observables and reconcile disparate results. This volume
collects a representative sample of studies in T cell immunology
that illustrate the benefits of modelling-experimental
collaborations and which have proven valuable or even
ground-breaking. Studies include thymic selection, T cell
repertoire diversity, T cell homeostasis in health and disease, T
cell-mediated immune responses, T cell memory, T cell signalling
and analysis of flow cytometry data sets. Contributing authors are
leading scientists in the area of experimental, computational, and
mathematical immunology. Each chapter includes state-of-the-art and
pedagogical content, making this book accessible to readers with
limited experience in T cell immunology and/or mathematical and
computational modelling.
Mathematical, statistical, and computational methods enable
multi-disciplinary approaches that catalyse discovery. Together
with experimental methods, they identify key hypotheses, define
measurable observables and reconcile disparate results. This volume
collects a representative sample of studies in T cell immunology
that illustrate the benefits of modelling-experimental
collaborations and which have proven valuable or even
ground-breaking. Studies include thymic selection, T cell
repertoire diversity, T cell homeostasis in health and disease, T
cell-mediated immune responses, T cell memory, T cell signalling
and analysis of flow cytometry data sets. Contributing authors are
leading scientists in the area of experimental, computational, and
mathematical immunology. Each chapter includes state-of-the-art and
pedagogical content, making this book accessible to readers with
limited experience in T cell immunology and/or mathematical and
computational modelling.
Whole new areas of immunological research are emerging from the
analysis of experimental data, going beyond statistics and
parameter estimation into what an applied mathematician would
recognise as modelling of dynamical systems. Stochastic methods are
increasingly important, because stochastic models are closer to the
Brownian reality of the cellular and sub-cellular world.
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