3D kernel-density stochastic model for more personalized glycaemic control: development and in-silico validation
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Thomas Desaive | Balazs Benyo | Shaun Davidson | Vincent Uyttendaele | Geoffrey M Shaw | Jennifer L Knopp | J. Chase | G. Shaw | T. Desaive | J Geoffrey Chase | S. Davidson | B. Benyó | J. Knopp | Vincent Uyttendaele
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