Modeling the Emergence of Phenotypic Heterogeneity in Vascularized Tumors

We present a mathematical study of the emergence of phenotypic heterogeneity in vascularized tumors. Our study is based on formal asymptotic analysis and numerical simulations of a system of nonloc...

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