Bibliografia

Morphogram è un metodo ideato dal prof. Paolo De Cristofaro e utilizza algoritmi proprietari, protetti da copyright, per la stima della composizione corporea, del morfotipo costituzionale, del volume addominale eccedente e del rischio individuale di sindrome metabolica.

Biobliografia

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