A ug 2 00 6 Spatial and non - spatial stochastic models for immune response
نویسندگان
چکیده
We propose both spatial and non-spatial stochastic models for pathogen dynamics in the presence of an immune response. One of our spatial models shows that, at least in theory, a pathogen may escape the immune system thanks to its high mutation probability alone. While one of our non-spatial models also exhibits this behavior, another behaves quite differently from the corresponding spatial model.
منابع مشابه
1 3 Ju l 2 00 6 Spatial and non - spatial stochastic models for immune response
We propose both spatial and non-spatial stochastic models for pathogen dynamics in the presence of an immune response. One of our spatial models shows that, at least in theory, a pathogen may escape the immune system thanks to its high mutation probability alone. While one of our non-spatial models also exhibits this behavior, another behaves quite differently from the corresponding spatial model.
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We propose both spatial and non-spatial stochastic models for pathogen dynamics in the presence of an immune response. One of our spatial models shows that, at least in theory, a pathogen may escape the immune system thanks to its high mutation probability alone. While one of our non-spatial models also exhibits this behavior, another behaves quite differently from the corresponding spatial model.
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We propose both spatial and non-spatial stochastic models for pathogen dynamics in the presence of an immune response. One of our spatial models shows that, at least in theory, a pathogen may escape the immune system thanks to its high mutation probability alone. While one of our non-spatial models also exhibits this behavior, another behaves quite differently from the corresponding spatial model.
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