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Some fractal thoughts about the COVID-19 infection outbreak

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 Publication date 2020
  fields Biology
and research's language is English




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Some ideas are presented about the physical motivation of the apparent capacity of generalized logistic equations to describe the outbreak of the COVID-19 infection, and in general of quite many other epidemics. The main focuses here are: the complex, possibly fractal, structure of the locus describing the contagion event set; what can be learnt from the models of trophic webs with herd behaviour.



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